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Allegheny College Allegheny College DSpace Repository http://dspace.allegheny.edu Projects by Department or Interdivisional Program Academic Year 2016-2017 2017-04-07 More Money on the Table: A Study of Potential Profit Increasing Opportunities during Alternative Sporting Events Boyer, Chase http://hdl.handle.net/10456/42894 All materials in the Allegheny College DSpace Repository are subject to college policies and Title 17 of the U.S. Code. ECONOMICS 620 Allegheny College Meadville, Pennsylvania 16335 More Money on the Table: A Study of Potential Profit Increasing Opportunities during Alternative Sporting Events Chase J. Boyer April 7, 2017 1 More Money on the Table: A Study of Potential Profit Increasing Opportunities during Alternative Sporting Events by Chase J. Boyer Submitted to The Department of Economics Project Advisor: Dr. Hoa Nguyen Second Reader: Dr. Janine Sickafuse Date: April 7, 2017 I hereby recognize and pledge to fulfill my responsibilities as defined in the Honor Code and to maintain the integrity of both myself and the College as a whole. Signature: Name: Chase J. Boyer Table of Contents List of Tables……………………………………………………………………………….ii Abstract ……………………………………………………………………………………iii Introduction………………………………………………………………………………...1 Chapter 1: A Literature Review…………………………………………………………..3 I. Economic Consequences of Advertising…………………………………....4 II. Advertising Effect on Sponsored Events…………………………………....6 A. Specific Event: Super Bowl……………………………………………...8 III. Brand Name Placement in a Differentiated Market………………………...9 Chapter 2: Theoretical Framework………………...……………….…………………...12 I. Return on Commercial Investment (ROCI)……………………………......12 II. Price Elasticity of Supply…………………………….………………...…..14 III. Price Elasticity of Demand……………………………………………........16 IV. How Firms Compete………………………………………………………..18 A. Bertrand vs. Cournot Model....................................................................18 B. Case Study: Ford vs. Chevrolet………………………………………...19 Chapter 3: Empirical Analysis…………………………………………………………...21 I. The Data Set……………………………………………………………......21 A. Sources of Data………………………………………………………...21 B. Discussion of Data……………………………………………………..23 II. The Regression Models & Interpretation…………………………………..27 A. Super Bowl Regression…………………………………………………27 B. World Series Regression………………..................................................29 C. NBA Finals Regression………………………………………………....31 III. Potential Biases and Errors………………………………………………....32 A. Breusch-Pagan Test for Heteroskedasticity…………………………….32 B. Correlation Matrix for Heteroskedasticity……………………………...33 Chapter 4: Closing Remarks & Conclusions…………………………………………….35 I. Brief Overview of Study……………………………………………...…….35 A. Findings from the Project……………………………………………….35 B. Why the Super Bowl?................................................................................36 II. Possible Ideas for Future Research………………………………………….37 Appendix................................................................................................................................41 A. Summary Statistics………………………………………………………………41 B. Regression Results………………………………………………………………42 Acknowledgements…………………………………………………………………………44 ii List of Figures & Tables Figure 2.1: Total Fixed Costs Graph Figure 2.2: Average Costs Interaction Graph Figure 2.3: Price Elasticity of Supply Figure 2.4: Price Elasticity of Demand Table 3.1: Summary Statistics Table 3.2: Super Bowl Regression Table 3.3: World Series Regression Table 3.4: NBA Finals Regression iii Abstract The object of this research paper is to investigate and analyze advertisements throughout the Super Bowl, World Series, and NBA Finals. Using both statistical and theoretical analysis, I will determine which sporting event offers the largest return on commercial investment (ROCI) for a set number of companies. The data is collected from the years 2009 to 2013 and will primarily focus on each events advertising costs to companies and other important factors that affect ROCI. The analysis will concentrate on the ROCI’s for each event and conclude whether or not the Super Bowl is still the best source for advertising. Although previous studies have indicated there could possibly never be a better event for advertising, this research aims to refute these broad statements. 1 Introduction For some time, advertising has been a critical part of business, by allowing sellers the opportunity to compete for potential customers. Advertising generates the ability to boost awareness, comparison, and retention of a business’s goods or services. This, in turn, allows companies to promote their products to new and repeat customers. Over time, firms have spent an endless amount of effort and resources trying to achieve their business goals with the help of advertisements. One of the most important aspects of advertising is to inflate ones existing products as well as any new product lines while trying to receive a maximum return on their investments. The goal is to generate large amounts of revenue, which leads to higher profit margins, and finally a lucrative return on investment which contributes to a company’s success. Continually trying to obtain a competitive edge has created a path for the advertising industry to research countless, but different target groups. Advertising executives and scholars have pursued topics including the effects of brand name placement on products, the overall economic impact of advertising, how advertising influences changes to the stock market, and the effects of advertising during sponsored events. As previously mentioned, an important focus of the advertising industry is investigating the effects of advertising during sponsored events. The Super Bowl is one such event that scholars continuously study and view as the ultimate advertising opportunity. This one evening event attracts over one hundred million viewers. The focus of my paper is to expand on the Super Bowl mega advertising opportunity by introducing other main events such as the World Series in Major League Baseball and the NBA Finals. Is Super Bowl advertising worth the big investment or can dollars be better utilized during other events to minimize costs and maximize profits? Additional research of the World Series and NBA Finals is important in understanding this concept in further detail. Since the World Series and NBA Finals have traditionally not been 2 considered the mega event, supplemental research is needed to determine any benefit. The two sporting venues may prove to display a significant benefit to a company or companies long term goals. In order to formulate an argument for any benefit, a time frame must be established to review a company’s return on investment from advertising. The information will be used for graphs that help visualize any or all impacts, either positive or negative. The period of time for this particular study is a various range of data from a five-year period (2009-2013). This fiveyear time frame was used in order to guide this paper to a more accurate conclusion of the results. My hypothesis is that companies could potentially earn higher margins of profit, and thus, greater returns on investment advertising during the World Series and NBA Finals compared to the Super Bowl. This research could prove to be important because many companies would essentially be losing profit that is there to gain. Advertising during the Super Bowl has proven to generate high levels of profit. However, producing and marketing these commercials to television providers comes at a large cost. In business, a company will choose to limit their costs of production on an existing product if they can substantially increase their profit. This research could progress the advertising industry entirely. To investigate this correlation, the amount of money spent on advertising during these events and their return on investment will be examined. I will be singling out ten of the most popular companies and looking at their profits before and after the events. Hopefully, a stronger positive relationship exists between the World Series and NBA Finals the 2009-2013 seasons. The advertising industry is currently flourishing with its same practices. Companies compete all over to establish brand loyalty to their consumers which has also proven to lead to better profits. This research could influence smaller companies to advertise more efficiently 3 allowing more competition to occur. Prior to this paper, there has been little research completed to indicate that other sports events could impact companies’ profits. To establish a connection between my explanatory and dependent variables, I plan on using Statista in my early stages of research to develop a more in depth analysis. Secondly, I will be researching thirty companies, ten for each of the events. Most of these companies are publicly traded and can be found on the New York Stock Exchange, however, some are not, but information on them can be found in their respective annual reports. The majority of the data being collected for this project is available to anyone and will be found on public databases that compile financial reports for these companies. 4 Chapter 1: The Literature Review There has been a variety of research completed in the advertising industry. The constant in depth research has allowed for this industry to be shaped differently, create new strategies for profit, and even analyze which factors best help with establishing a brand value. Each of these findings has added to the overarching theme of the industry that advertising has a significant impact on all companies profit margins. Advertising will continue to be one of the strongest forms of product marketing due to its capability of differentiation. I. Economic Consequences of Advertising In Nelson (1975) he observes the economic consequences of advertising factors such as elasticity of demand, and monopoly power of advertisements. Nelson analyzed both assumptions by relating research of other authors along with his own stance on the subject. Other work before Nelson (1975) tended to argue that advertising increases the elastic portion of demand and that the industry represents some monopolistic features. His argument, related to his empirical section, concludes with an entirely opposite outcome. Most of the concluding statements stem from the theory of consumer information. Consumer tastes were separated into search and experience categories. A search indicates consumer choices before advertising and experience relates to choices after advertising. He concluded that consumers are better off with advertising which indicates that with more information on a product, the elasticity of demand becomes inelastic. This leads into his second argument on the monopolistic features of this industry. Nelson explained that there needed to be enough entrants with a large amount of capital to enter the market. If this is the case, when the long run rate of return exceeds the competitive rate, this will offer no barriers to entry. Nelson held utility per consumer constant throughout his research which was his only downfall to the paper. In his appendices, he also described that his 5 distinctions derived from consumers categorizing products based on the volume of advertisements. Farris and Albion’s article (1980) looks at whether advertising can increase the retail price of products. The two elements of this article used in developing further analysis and theory are that economists understand the basic model of competition by conducting rational consumer choices, and how businesses use advertising to differentiate their products for consumers. Farris and Albion divide their research into two theories; advertising equals market power and advertising equals information. The market power theory states that creating a brandable product leads to a better reputation which allows a company to set higher prices, thus retain a larger profit. The information theory states that supplying consumers with more information increases price elasticity of demand and reduces cost margins between its substitutes, thus the companies retain a higher profit. Much of Farris and Albion’s research comes from prior works completed in the advertising industry by Robert Steiner. Steiner was an American Economist who spent most his career researching how marketing productivity affects consumers’ choices. Farris and Albion extracted data from five of Steiner’s papers (1973, 1977, 1978a, 1978b, 1978c) and created a model in his name known as the dual-stage model. This model showed the impact of advertising on absolute consumer prices. Farris and Albion’s extrapolated version of this model suggests that there is a certain degree of correlation between manufacturing price levels and prices at the consumer level. However, none of the empirical evidence backs up the hypothesis explicitly and leaves their question unresolved. Based on the data they had in 1980, the authors could not create a concise conclusion without running further macroeconomic experiments. 6 II. Advertising Effect on Sponsored Events Gwinner and Eaton’s (1999) discussion on the advertising industry provides us with information on the role sponsored events play. Brand imaging is a unique aspect used to link the consumer to the product. This connection can become stronger when they transfer the image through sponsored events. There had been research done prior to their paper that suggested a strong positive correlation between celebrities, advertisements, and products. McDaniel (1999) also concluded that there was a significant relationship between a high involving product and a high rated sporting event. For example, McDaniel found that a product by an automobile is better paired with an event such as the Olympics rather than a low-grade event such as a PBA bowling tournament. There are also ways in which homogenous products can be differentiated; by using image-based similarity and functional-based similarity to signify the key differences. Image based similarity is when a certain sponsor is labeled at a sporting event such as a sign or billboard. Functional based similarity occurs when athletes are supplied equipment for a sponsored event. An example is if Under Armor supplies a youth travel baseball team with apparel and equipment to compete in national tournaments. Under Armor’s logo and name will be visually displayed on the merchandise so all consumers can see. The results of the Gwinner and Eaton’s (1999) discussion were that previous companies wanted to participate under functional based advertising, but are now switching to image-based advertising because there is more opportunity. This paper was limited due to the timeframe of their study, basis of research (they studied event to the brand rather than brand to event), and the magnitude of sponsors at in event. Their study also concluded that it may be more beneficial for sporting events to use a higher number of sponsors. 7 Filbeck, Zhao, Tompkins, and Chong (2009) research on share price reactions to advertising announcements wishes to evaluate the rate of return on management strategy to advertise during the events. Advertisements have caused profits for companies to increase for years and they have realized a direct correlation with specific venues. The author's hypothesis is that since investors understand the large amounts of viewership for these events, they hoped that advertising during these events would increase sales for the firm. If their hypothesis is actually concluded, investors will then use this information to purchase the stocks of companies in which sales are increasing. The authors looked at three events in their study, the Super Bowl, the Academy Awards, and Sitcoms. The Sitcoms showed to have no significant returns on the advertisements placed during the episodes. In other words, they were listed as a non-value adding event. The Academy Awards yielded the same results as Sitcoms. The shareholders did not feel inclined to purchase stocks after the commercials were aired. The Super Bowl, however, was perceived to be statistically significant (negative) because of it being shown as a live event. The events downfall is its retention rate, the rate that companies return to advertise, which is only around sixty percent. The Super Bowl has repeat advertisers so after a while, they stop advertising realizing there is no additional benefit or revenue to gain. This led to evidence being presented in their conclusion that first-time advertisers profited more than the repeated companies. Out of the three events, the Super Bowl was the least perceived. Their conclusion helps supplement my research because I am examining the correlation of return on investment throughout three media sponsored events. The author’s research had some limits such as the sample size and controlling for the advertisers on the final episode dates. This could have caused for the interpretation to be broader than expected. 8 A. Specific Event: Super Bowl Hartmann and Klapper (2015) explored the effects of advertising during the Super Bowl. Approximately forty percent of households watch the Super Bowl and because of this, consumers are more willing to watch the advertisements of established brands. The authors use the Neilsen rating system in addition to store level data of beer/soda sales to test the market variation in sales and ratings. They also research the mechanisms of ad effects and how an association between brand and viewership is created. Instead of using data on a monthly scale, Hartmann and Klapper chose to use a week-specific evaluation to analyze the effectiveness. This allowed them to throw other important weeks of sports events into their regression such as the college basketball tournament. They concluded it would make more sense for non-established brands to advertise during the Super Bowl as it would be more effective. However, the companies that have brand loyalty such as Pepsi still make efforts to air commercials during the Super Bowl. Why? Because they are also making a better margin of profit by continuously advertising. The research conducted by Hartmann and Klapper will help guide my research in the correct direction. I plan on implementing a differentiation scale using the Bertrand model that bases all a firms’ decisions on price setting. Krueger and Kennedy (1990) examined the Super Bowl and the effect it had on the entire stock market. More importantly, they wanted to look at the Super Bowl predictor which is associated with the winner of the event and how that is utilized to forecast the direction of the stock market. There are two results of the Super Bowl Stock Market Predictor (SB SMP); the first being if the winner is from the National Football Conference (NFC), then the stock market will finish higher than where it began that year (691). The second being if the winner comes from the American Football Conference (AFC), then the stock market will finish lower than 9 began the year (691). Krueger and Kennedy observed five stock market indexes from the years 1967-1988. The SB SMP accurately anticipated the direction of the stock market 20 out of the 22 times. They based the return of statistical significance on the annual changes in the index plus the dividends which are reported throughout the Security Price Record. This research completed by Krueger and Kennedy was among the first to empirically prove that the SB SMP has a statistically significant result and that it is not a hoax. Many investors now rely on the SB SMP to decide whether it is a good time to invest in certain products or not. This study can help further my research because I will be analyzing a few aspects of the stock market in regards to advertising. This could prove to be beneficial for my project because if I have a sense of the direction the stock market will head, I need to look for additional peaks in revenue and expenses to calculate the profit margins. III. Brand Name Placement in a Differentiated Market Baker, Honea, and Russell (2004) article studies the effect of brand name placement on television advertising effectiveness. Previous work on this topic had researched that placing the brand name of a product toward the end of an advertisement seemed to yield the most successful results for companies. However, Baker, Honea, and Russell created their hypothesis based on the brand name being more effective at the beginning of advertisements. Each of the different hypotheses intends to prove which has a more positive reaction to consumers. There have been several main conclusions from testing the previous hypotheses. The first is consumers can remember the contents of the advertisement, but not the brand name. Secondly, but related to the first, consumers will remember the advertisement and label the brand incorrectly (mix up the brand that the advertisement represents). Lastly, consumers can have positive reactions to an advertisement, but not remember its premise or the brand name associated with the product. 10 These authors concluded that their hypothesis was positively significant. It showed that companies should highly consider revealing the brand name at the beginning of advertisements as it could help increase brand identity and therefore, could improve sales of the products. Grossman and Shapiro (1984) studied the role of expenditures by sellers in a market where heavy product differentiation occurs. For this work, the authors used the idea that advertising offers full and accurate information of products leaving consumers tastes unchanged. Instead of focusing on a perfectly competitive market, Grossman and Shapiro researched heterogeneous products and the impact they have on total consumer information. They tried to do this by examining the effects of the bias of market equilibria with using characteristics of an oligopolistic structure (fixed number of firms, free entry). Some of the factors the authors wanted to use for their regression included production technology, information structure, advertising technology, and equilibrium concept. The two conclusions Grossman and Shapiro presented was that for equilibrium in the oligopoly market, different forms of advertisements lead to a higher result for companies. Also, an improved efficiency of advertising led to more competition within the market and because of that, prices begin to fall. The biggest setback of their study was that it could have broadly described the importance of these conditions. However, under the circumstances they did research, it was found that heterogeneity of the market is typically excessive when consumers are given complete information. Stevik and von der Fehr (1998) have researched persuasive advertising, an opposite, but more in depth approach considering the ideas that Grossman and Shapiro (1984) explored. Before Stevik and von der Fehr (1998), it was assumed that advertisements offer an ordinary utility function specifying that it simply shifts the demand for distinct products. Even though this has proven to be useful information, Becker and Murphy (1993) concluded that persuasive 11 advertising could determine more significant results. One of these results being a larger profit margin when demand elasticities are higher. Stevik and von der Fehr (1998) observed three main ways in which consumer preferences can be changed; 1) advertising could augment the value of a product (willingness to pay), 2) they attempt to persuade consumers that the good shown in the advertisements is the best one (changes ideal product variety), and, 3) advertisements can cause consumers to connect the differences that exist to a greater importance (increased perceived product difference). Overall, Stevik and von der Fehr were looking to see the relationship between the degree of product differentiation and equilibrium levels of persuasive advertising. Their results concluded that persuasive advertising is more effective when trying to distinguish between products that are similar rather than differentiated. The authors also suggest that advertising and differentiation must be substitutes at the larger level of decision making for firms. Several of their limitations included their control for simultaneous pricing decisions amongst firms and an exogenous aggregate demand because any endogenous features would have complicated the analysis. 12 Chapter 2: Theoretical Framework I. Return on Commercial Investment (ROCI) The focus behind any business endeavor is to make a profit. To make a profit, many elements need to be maintained and structured in a way that it allows the business to succeed. One of these important characteristics is managing your return on investment. A company will use this formula to measure their profitability or overall efficiency of the investments. The 𝑁𝑒𝑡 𝑃𝑟𝑜𝑓𝑖𝑡 𝑜𝑓 𝐶𝑜𝑚𝑚. formula for this management tool is 𝑅𝑂𝐶𝐼 = 𝐶𝑜𝑠𝑡 𝑜𝑓 𝐶𝑜𝑚𝑚. 𝐼𝑛𝑣𝑒𝑠𝑡𝑚𝑒𝑛𝑡 𝑥 100. Every term used for this equation can be found under a firms’ income statement. The income statement reports a company’s financial performance. The financial performance is assessed by giving a summary of how the business incurs its revenues and expenses through both operating and non-operating activities. Moving forward with breaking down the formula, the first term that needs to be examined is the revenue. More specifically, the revenue being researched for my paper will include the money earned from the advertising/commercial investments. Revenue is the amount of money that a company receives during a specific period, including discounts and deductions for returned merchandise. Next, the costs of the investment need to be observed. Each type of cost will be outlined and discussed in further detail how they are relevant to advertising. The first type, fixed costs, are those that do not vary with output and typically include rents, insurance, depreciation, set-up costs, and normal profit. Another term widely used when explaining this is overhead costs. Variable costs, the second type, are costs that do vary with output, and are sometimes referred to as direct costs. The next few types of costs, total and average costs, are broken up and generated using information provided by the fixed and variable sections. To better understand the meaning behind the total fixed costs, total variable costs, and total costs, refer to figure 2.1. Total fixed 13 costs are constant as output increases, the curve is a horizontal line on the cost graph. Total variable costs have a curve that slopes up at an accelerating rate. This reflects the law of diminishing marginal returns which basically states that there is a point in which the profit earned is less than the money invested. Total costs can be calculated by adding together total fixed and variable costs. To make it simpler, the average fixed, variable, and total costs are essentially all calculated the same. By dividing the total amount of each costs by a set number of output. More importantly, the meanings of each type of average cost is different. As output keeps increasing, the amount of average fixed costs will decline and will slope downward from left to right on a graph. AVC will at first slope down from left to right, then reach a minimum point, and rise again. For this reason, it is graphically u-shaped because it begins with increasing returns (average costs fall), followed by constant, and ends with diminishing returns (average costs rise). Average total costs represent the per unit cost of production and is also u-shaped due to the same logic of diminishing returns. ATC are good for understanding how well the resources are being used. Refer to figure 2.2 to visually see how each of these curves interact with one another. In this case, producing, marketing, and purchasing air time would all fall under the costs category for this specific industry. Finally, to calculate the profit of the advertisements, I must subtract the total costs of the investment from the revenue. After these elements are calculated using the proper accounting formats, I will be able to use this data to generate each company’s return on investment for the three sporting events. An interesting idea to point out about the return on investment is that there seems to be an appropriate ratio depending on the type of market these companies categorize themselves under. An exceptional ROI percentage is around five percent which simply means that they should earn at least five dollars on an investment per every dollar spent. Not all 14 companies can earn this type of exceptional ROI percentage. However, companies that earn an average ROI percentage, which is typically around two percent, can still be successful. For the types of companies that earn an average return on investment, their successfulness can heavily rely on having a significant less amount of cost of goods sold. Return on Investment is an important concept to understand for my paper because this is one of the main ideas I am testing for my hypothesis. Again, my hypothesis is that I hope to expect a more positive correlation between the World Series and NBA Finals than the Super Bowl by comparing it their profit margins. Figure 2.1 II. Price Elasticity of Supply: Figure 2.3 Figure 2.2 15 The second theory incorporated into the analysis of my paper is the price elasticity of supply. Looking at this concept helps add depth to my research because it allows me to observe products over various markets. The price elasticity of supply measures the responsiveness of quantity supplied to a change in price. This is useful for companies because they should know how quickly they can react to changes in the market. There are certain factors that influence the price elasticity of supply for businesses; resources readily available, mobile factors, storage space, capacity of production, and complexion of the production cycle. Of these determinants, I will mostly be focusing on the production cycle, mobile factors, and capacity of production. I will be using this theory to look at various markets and products of the top companies who advertise during the World Series, NBA Finals, and Super Bowl. This will give me more accurate representations of my main hypothesis which is geared toward each companies’ profit margins. I am breaking down two markets in which the first is categorized as the snack industry and the second is about cars. Each of these two markets is different because of the overall impact of the price elasticity of supply. In the snack industry, the supply curve will appear more elastic (or flatter) graphically while the car industry will have a more inelastic (or steeper) supply curve. For the snack industry, one reason it develops a more elastic supply curve is because the process to produce items such as chips and soda are not as complex as other industries. It is much easier for Frito Lay to produce a bag of Doritos than it is for General Motors to make a vehicle. Frito Lay would more than likely have a better factory to keep workers efficiently mobile throughout the production process in case of relocation. Finally, since producing a bag of chips is not a challenging task, Frito Lay would not need to run at full capacity to cover all shifts. Overall, consumers will not be influenced by the small increase in price which will cause the 16 quantity of snacks to increase allowing more revenue. Figure 2.3 shows the relationship of price elasticity in the snack industry when the demand increases due to advertising. Figure 2.3 III. Price Elasticity of Demand: Figure 2.4 For the car industry, the production process is more complicated which subsequently leads to an inelastic supply curve. The car industry is completely opposite of the snack industry. For the companies to sell their cars, they need to run near full capacity which creates friction for the mobile factors set in place. This highlights a challenge for the car industry because workers 17 cannot produce at an equal or higher capacity than the snack industry. Although the change in the price of a car is more noticeable, most people need cars to operate daily, which causes the quantity to also increase allowing for increased earnings. To conclude, a firm strives to achieve a higher price elasticity of demand because it makes them appear more competitive in the market. Being more competitive helps businesses earn higher revenue and profits. Figure 2.4 shows the same relationship for the car industry when demand increases after advertising in these events. In advertising, there is this model known as AIDA (Attention, Interest, Desire, Arousal) that tries to affect certain demand factors and cause them to shift upward. This is an idea of advertising that affects the psychological aspects of consumers and helps understand which products they purchase. If this idea was more quantifiable than in its current model, than it could potentially be used to conclude the advertising intensity of each company involved in this project. Figure 2.4 18 IV. How Firms Compete An important question that businesses must ask themselves on a consistent basis is, “How can we create a unique product that allows us to capture most consumers”? There are many strategies a company can use to market their product so that it achieves a greater appearance. A common strategy used by many businesses attempting to market a more unique and useful product is advertising. One of the most important outcomes from advertising is that it helps companies differentiate between products in the market. A. Bertrand vs. Cournot Model The third ideology that supplements this project is how firms compete in the same market by using the price or the quantity. In the Bertrand model, firms compete solely based on the prices of their products, and, whoever sets the lower price usually gets the sale. In the Cournot model, two firms compete over the quantity of the product. These two models are essential in formulating conclusions about firms that produce similar products, such as companies in the automobile industry. The benefits of this model are to include both maximum sales volume (a larger share of the market) and higher prices (higher profitability) that way companies can seek a profit maximizing quantity. The quantity that one produces directly affects the profits of the other firms because the market price depends on total output. Additionally, in choosing its strategy to maximize its profit, each firm considers its beliefs about the output its rival will sell. 19 This type of Cournot competition can be best described when looking at processes that occur in the manufacturing industry, specifically among automobile companies. Two successful companies that compete for better business and profits are Chevrolet and Ford. These companies create homogenous products and will often use advertising to differentiate their products and attract consumers. More specifically, these companies tend to advertise during highly watched events such as the three sporting events being researched in this project. Companies will advertise to differentiate their products in various types of ways. One company could be geared toward attracting a higher customer base by explaining incentives that cover a vehicles luxuriousness. On the other hand, its competing company could try and persuade consumers by advertising that their product has the best physical attributes of any vehicle of its kind. Both are interesting and effect ways that companies advertise to differentiate their products. The company that can do this more efficiently will increase their sales based on quantity sold and ultimately larger profits. B. Case Study: Ford vs. Chevrolet As explained earlier, Ford and Chevrolet are companies that offer good examples of how the Cournot model is structured and how they differentiate their products. Two of the most highly sold vehicles by both Ford and Chevrolet come from their truck series. Ford’s model is the F-150 and Chevrolet’s is the Silverado 1500. These trucks are similar in specs such as horsepower, torque, type of engine, and gas efficiency. However, the specs of these vehicles are just the beginning stages used in determining how they will be marketed to consumers. Over years of viewing advertisements from each company, it is rather easy to identify that their specs may be similar, but these trucks are designed to arouse completely different desires; this is 20 because the two companies have different strategies persuading consumers to purchase one of the two trucks. For many years, Ford has been marketing their F-150 series as a means of the vehicles durability as a work truck. Ford relies heavily on the information such as the regular specs of horsepower, torque, max load capacity, etc. This gives off the impression that it is one of the best trucks for jobs that require hard labor such as construction. To further explain this, the spokesperson for the Ford truck series is Mike Rowe who also hosts the show Dirty Jobs. In Dirty Jobs, Rowe completes nasty jobs such as cleaning the pipes at a sewage plant, etc. Occupations like these are more common among the rural community, so it is accurate to say that Ford markets their trucks this type of demographic. On the other hand, Chevrolet advertises their trucks in a slightly different manner. Chevrolet could have noticed years ago that this was Ford’s marketing strategy and understood that they needed to convince customers to purchase the Silverado. Chevrolet’s advertising campaigns gear more toward triggering a consumer’s desire for luxury. With this being said, the Silverado 1500 is typically set apart from other trucks by stipulating its rich features such as leather seats or a navigation system. Although both trucks have almost identical physical attributes, Chevrolet decided to implement a two for one look on their truck; the Silverado can serve as a work truck, but when it is not, it can also be viewed as a vehicle of high prestige. The spokesperson for the Silverado is Rob Benedict, a popular actor who has appeared in shows such as Burn Notice and Buffy the Vampire Slayer. As a Hollywood actor, Benedict is favorable among the urban community which makes his fit with Chevrolet perfect for their scheme. All the information used in generating this case study was gathered from two commercials from the year 2012 on each model of trucks. 21 Chapter 3: Empirical Analysis I. The Data Set In order to comprehend which event earns companies a larger return on their commercial investments, an analysis needs to be conducted. An empirical analysis will be used to indicate if the specific elements researched for this project have an impact on the thirty-one companies. This framework has been used throughout the literature previously presented that analyzed characteristics from the overall economic impact of advertising to choosing prices of products. The goal of this chapter is to be able to analyze the data and either retain or refute the original hypothesis, that companies could potentially earn higher margins of profit, and thus, greater returns on investment advertising during the World Series and NBA Finals compared to the Super Bowl. It is widely known that advertising has a positive impact on companies’, and the regression for this project will look to indicate how large of an impact they have. A. Sources of Data Before analyzing any impactful results, it is equally important to talk about the data and variables that were used in the regression. The numerical data was retrieved from Mergent archives, Mergent online, USA Today Ad Meter, Statista, and Kanter Media for the years 2009 through 2013. One of the key components to this research was investigating the three quarters in 22 which the different sporting events were played. The companies’ annual business reports were located in databases called Mergent Archives and Mergent Online which broke down the quarterly costs and revenues along with the amounts that each company earned yearly. In the data set, costs for each company and the event they advertised in were recorded in millions. Mergent Online also offered a special service that showed a visual of the recent trends of each companies’ stock up to ten years from the stock market. This feature helped with collecting each companies’ financials. The USA Today Ad Meter showed which companies advertised during the Super bowl and their average ranking out of a score of ten. There are a group of judges chosen to personally average the commercials based on their knowledge of the advertising industry. The average ranking of advertisements could prove to be beneficial for companies’ when looking at how well they need to produce their commercials. It is believed and previously reviewed that highly ranked advertisements lead to that specific event earning companies’ greater returns on their investment. Although USA Today Ad Meter ranks the commercials aired during the Super bowl, they do not offer this service for the other two events being studied. Social media, specifically Facebook, played a large role in investigating the ranking of commercials for the World Series and NBA Finals. Facebook has a feature that allows users to create polls and surveys based on any criteria they desire. For example, MLB Network generates polls on Facebook for the commercials that were aired during the World Series by embedding a video of the businesses advertisement. They typically allow the poll to remain open for around an hour and base their results by the amount of people who “liked” the commercial. A similar experiment is conducted for the NBA Finals, however, instead of finalizing the results based on “likes”, a tally is recorded of how many “yes” versus “no” responses given. A “yes” response 23 indicates that a person enjoyed the advertisement while a “no” response would give the opposite opinion. Statista is another database known for producing quality sources of information on many topics. Statista was used to collect how much each company spent on the production stage and in purchasing time slots. In all three events, advertisements are priced by a standard thirty-secondtime slot. Any time slots larger than that, for example, 60 seconds, have all their costs doubled to adjust for these situations. The video archives of Fox studios and Turner Network Television (TNT) were used to observe and record the commercials that were aired in the two smaller events. The information recorded from the video archives include the company that advertised, the number of commercials shown by a specific company from each year, and the amount of time the commercial aired from start to finish. These are the some of the main criteria by which the regression analysis for affecting each sporting events return on commercial investment was established. Due to the size and nature of the Super bowl game, most of the data had previously been collected and observed by databases such as Kanter Media and USA Today. Certain companies were not listed under the NYSE because they were foreign, but they had their annual reports and other important information listed on their respective corporate websites. Among these types of companies were Hyundai, Toyota, and Samsung. B. Discussion of Data For this project, the dependent variables are the first to be discussed and include: return on commercial investment (ROCI) from the Super bowl, return on commercial investment from the World Series, and return on commercial investment from the NBA Finals. Each of these 𝑁𝑒𝑡 𝑃𝑟𝑜𝑓𝑖𝑡 𝑜𝑓 𝐶𝑜𝑚𝑚. dependent variables were calculated using the formula, 𝑅𝑂𝐶𝐼 = 𝐶𝑜𝑠𝑡 𝑜𝑓 𝐶𝑜𝑚𝑚. 𝐼𝑛𝑣𝑒𝑠𝑡𝑚𝑒𝑛𝑡 𝑥 100. 24 Net profit was not given on any company’s financial statements and also had to be calculated by taking the revenues earned within the quarter that the given event was played and subtracting the total advertising costs, mainly consisting of production costs and time slots. In order to calculate the production costs for the advertisements, an average of the marketing expenditures from each company had to be calculated. This was done by cross referencing the yearly compiled costs of marketing/advertising found in Statista with the quarterly advertising expenditure data from Mergent online. These calculated average production costs for advertisements were used in determining the cost of commercial investment. The other pieces of information used in calculating the cost of commercial investments is the time that the advertisement aired and the quantity of the advertisements shown. To calculate the second half of the equation, the average commercial production costs were added to the costs of airing a set number of commercials. The return on commercial investment was generated for each company for the five-year period of 2009 to 2013. The three sports events return on commercial investments were recorded in the data set as a percentage to show how impactful certain companies can advertise their products. These three regression results of return on commercial investment for each event will lead to several conclusions. The first answering the question of which event produces a larger return on their investment and the second being the companies that are better off advertising in any of the events studied. The independent variables for the project include cost of the super bowl advertisements, cost of the world series advertisements, cost of the NBA Finals advertisements, number of super bowl advertisements, number of world series advertisements, number of NBA finals advertisements, average commercial ratings for each event, and two sets of dummy variables. The total cost of commercials is different for each event so it is imperative to distinguish 25 between them. For instance, the cost of world series advertisements is a characteristic that is directly related to the dependent variable, ROCI of the world series. Without these calculations, there would be no basis of interpretation to understand which event earns company’s a greater return for their money spent. Since these two should be directly related to one another, as advertising costs increase or decrease, there should be a positive coefficient. This would be logical since studies in the past have indicated that certain sized companies’ profits from advertising have been greater with larger costs. Essentially, this means if a large company is putting in the time, effort, and money to produce a commercial, they should see a mutual return on their money. The number of commercials is an interesting variable because although relatively simple to observe, it could offer a meaningful insight into what data effects profit and ultimately, a companies’ return on investment. The theory behind the number of commercials for this project is that there would be a limit between this variable and the effects it has on profits. This means there should be some sort of cap on the number of commercials aired during one of these events and the return on investment a company receives from it. For companies that have more than three advertisements, there could be a negative coefficient which gives off the effect of diminishing marginal return. After the three commercials, that company would not earn any additional profits, and possibly even lose money on their commercial investment. However, another scenario could be present since Stata, the program being used to run the OLS regressions, will take into effect all the companies that do not fall under this category and weigh them differently. In this case, the coefficient will more than likely be positive which would mean that these companies could earn larger profits if they produce more than three commercials in an event. 26 For the variables, return on commercial investment, whichever two not being interpreted as the dependent variable, they will serve as explanatory variables to decide which event yields the better returns. When these serve as independent variables, there could be mixed signs of positive and negative coefficients. When looking at the return on commercial investment for the super bowl, there could be a negative coefficient with the NBA Finals since it falls in the quarter right after the super bowl, and a positive ROCI for the world series since there is a lapse between quarters three and four. The same conclusion should be evident when looking at the other two ROCI scenarios. The commercial ranking system is another unique way of trying to understand what affects the return on investments. Super bowl advertisements were ranked out of a score of ten, and the other two events were based on people’s responses to a survey or poll. These variables should have obvious results when pertaining to one of three regressions. When looking at the ROCI of the World Series for instance, there should be a positive coefficient because higher ratings of commercials aired during this event should lead to a greater return. For the other two, they could be negative because they do not pertain to that event in the regression. The first set of dummy variables included in this project are food/beverage and automobile. These are two of the most prolific industries that advertise during sporting events and can prove why they are so successful in marketing in their products. Originally, there was a second set of dummy variables created for the years, however, a time trend was used instead because of the results it yielded. Table 3.1 at the end of the project is a summary of the variables: the means, standard deviations, and min/max values. This table shows the general overview of the data set for this project. 27 II. The Regression Models & Interpretation A. Super Bowl Regression: Table 3.2 The first regression model listed below investigates the return on commercial investment of the super bowl. The ROCI of the world series and of the NBA finals are included in this regression because it will be used to observe how those two events relate to the super bowl. It could also be used to predict how companies advertise during these events in the future. The following two regressions will be similar; however, they will be looking at the ROCI’s of the NBA Finals and the World Series. 𝑹𝑶𝑪𝑰𝑺𝑩 = 𝜷𝟎 + 𝜷𝟏 𝒚𝒆𝒂𝒓 + 𝜷𝟐 𝑪𝒐𝒔𝒕𝑺𝑩𝒂𝒅𝒔 + 𝜷𝟑 𝑪𝒐𝒔𝒕𝑾𝑺𝒂𝒅𝒔 + 𝜷𝟒 𝑪𝒐𝒔𝒕𝑵𝑩𝑨𝒂𝒅𝒔 + 𝜷𝟓 #𝑺𝑩𝒂𝒅𝒔 + 𝜷𝟔 #𝑾𝑺𝒂𝒅𝒔 + 𝜷𝟕 #𝑵𝑩𝑨𝒂𝒅𝒔 + 𝜷𝟖 𝑹𝑶𝑪𝑰𝑾𝑺 + 𝜷𝟗 𝑹𝑶𝑪𝑰𝑵𝑩𝑨 + 𝜷𝟏𝟎 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑺𝑩 + 𝜷𝟏𝟏 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑾𝑺 + 𝜷𝟏𝟐 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑵𝑩𝑨 + 𝜷𝟏𝟑 𝑭𝒐𝒐𝒅𝑩𝒆𝒗 + 𝜷𝟏𝟒 𝑨𝒖𝒕𝒐𝒎𝒐𝒃𝒊𝒍𝒆 + 𝜺 Throughout all three regressions, the same variables were used to indicate the effects they had on the return on commercial investment and ultimately to which event yielded the larger returns. There are also some other interesting pieces of information that go along with the results that I was not expecting. When discussing the results from an OLS regression, there are three stages of statistical significance, p < .10 (10%)*, p < .05 (5%)**, and p < .01 (1%)***. Generally, the lower the p-value, the more reliable that source of information is in developing a conclusion about the hypothesis. 28 The first variable, year, is statistically insignificant which was a surprising result because as another year passes, the total costs, revenues, and profits mostly increase, however, at a slow rate. The year variable being insignificant to the ROCI of the super bowl could indicate that typically prices do not increase enough to affect the return on investment of an idea as small as a companies’ advertisement. The cost of super bowl advertisements proved to be 1% statistically significant with a positive coefficient. Since my costs were recorded in millions, the interpretation of this would be an additional one million dollars spent on advertising leads to .068 % increase in the ROCI of the super bowl. This makes sense because the average costs for the super bowls were around eleven and a half million dollars, so a one-million-dollar increase in ad spending would not affect the ROCI greatly. The cost of world series and NBA finals advertisements were statistically insignificant mainly because they are played after the super bowl in the following quarters and should not have a large impact. The number of advertisements for all three events were statistically insignificant as well. This could indicate that since the super bowl is such a big event, and most businesses involved are returning customers, many companies earn a smaller ROCI because their product is already well established. The average rankings for all three events were categorized in two distinct ways. For the Super bowl, the units used were based on a zero to ten scale; a ranking closer to zero indicates that the commercial was unpopular and at the opposite end, a ranking closer to ten indicates a higher liking. For the NBA Finals and World Series, the ranking of advertisements was based on results from the Facebook polls that were generated by calculating how many people “liked” the video. The Super Bowl and NBA Finals were found to be statistically significant at the 1% level. 29 Since these two events are only four months apart, this could indicate that the effect the super bowl commercials had on consumers was not as strong as previous months. This also could indicate that the effect of the NBA finals commercials is taking over and generating a strong pull from consumers. Each of the two dummy variables were statistically significant; food and beverage at the 10% level and the automobile industry at the 1% level. Each of these variables tells an interesting story. If a company is listed under the category of food and beverage, they have the potential to increase their ROCI from the super bowl by 0.62%. This may seem like a small percentage, but in the grand scheme of this project, it proves that medium sized companies such as Gatorade, make out better than smaller or larger companies. As for the automobile industry, typically the biggest companies, they seem to lose on their investment by around 0.89%. B. World Series Regression: Table 3.3 The second regression model is listed below and investigates the return on commercial investment of the World Series. The same independent variables were used as with the first model. 𝑹𝑶𝑪𝑰𝑾𝑺 = 𝜷𝟎 + 𝜷𝟏 𝒚𝒆𝒂𝒓 + 𝜷𝟐 𝑪𝒐𝒔𝒕𝑺𝑩𝒂𝒅𝒔 + 𝜷𝟑 𝑪𝒐𝒔𝒕𝑾𝑺𝒂𝒅𝒔 + 𝜷𝟒 𝑪𝒐𝒔𝒕𝑵𝑩𝑨𝒂𝒅𝒔 + 𝜷𝟓 #𝑺𝑩𝒂𝒅𝒔 + 𝜷𝟔 #𝑾𝑺𝒂𝒅𝒔 + 𝜷𝟕 #𝑵𝑩𝑨𝒂𝒅𝒔 + 𝜷𝟖 𝑹𝑶𝑪𝑰𝑺𝑩 + 𝜷𝟗 𝑹𝑶𝑪𝑰𝑵𝑩𝑨 + 𝜷𝟏𝟎 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑺𝑩 + 𝜷𝟏𝟏 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑾𝑺 + 𝜷𝟏𝟐 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑵𝑩𝑨 + 𝜷𝟏𝟑 𝑭𝒐𝒐𝒅𝑩𝒆𝒗 + 𝜷𝟏𝟒 𝑨𝒖𝒕𝒐𝒎𝒐𝒃𝒊𝒍𝒆 + 𝜺 Again, the year variable was statistically insignificant for the world series and this could be due to the same reason since the costs, revenues, and profits only gradually increase, it does generate a large enough effect with the ROCI. The cost of super bowl advertisements was calculated to be significant at the 5% level and this could indicate that since the super bowl is 30 such a large event compared to the world series, it relatively overpowers the effect of its advertisements. The interpretation of this would be an additional one million dollars spent on super bowl advertising leads to .013 % decrease in the ROCI of the world series. This makes sense because if a specific company is allocating more of their advertising budget on the super bowl, they will generate less returns in the world series unless they increase their budget. The cost of world series commercials was statistically significant at the 1% level since it is directly correlated with the ROCI for the world series; An additional million dollars spent on advertising in the world series could earn a company up to a 0.070% increase in their ROCI for that event. The costs for NBA Finals commercials, number of super bowl ads, and number of NBA finals ads are all statistically insignificant. Since the NBA finals is equal in size of the world series, both the number and cost of advertisements should not be any greater than that of the world series, therefore, does not affect the ROCI. Both the ROCI’s of the super bowl and NBA finals are statistically significant at the 5% and 1% respective levels. Since the world series falls under the last quarter in the fiscal year, this could indicate that commercials during the NBA finals could be affecting consumer’s choices. As for the super bowl, since it is the largest of the three sporting events, people will be less likely to forget about commercials that aired during it causing the world series to be less effective. The last few insignificant variables are the average ratings of super bowl and NBA Finals commercials, and the food/beverage industry. This is logical because the ratings of the other two events should have no impacting effects on the ROCI of the world series since this events would have already passed. However, the average ratings of world series commercials, based on Facebook “likes” is statistically significant at the 5% level and the dummy variable for the automobile industry is also significant at the 1% level. For every additional “like” received via the poll on Facebook, it causes the ROCI for the world series to 31 increase by 0.001%. This is not a significant increase by any means, however, it still proves that ratings of commercials influence greater returns. Many of the commercials during the world series relate to the automobile industry. It makes sense that an automobile company would increase the ROCI of the super bowl by 0.22%. C. NBA Finals Regression: Table 3.4 The third regression model is listed below and investigates the return on commercial investment of the NBA Finals. The same independent variables were used as with the first and second models. 𝑹𝑶𝑪𝑰𝑵𝑩𝑨 = 𝜷𝟎 + 𝜷𝟏 𝒚𝒆𝒂𝒓 + 𝜷𝟐 𝑪𝒐𝒔𝒕𝑺𝑩𝒂𝒅𝒔 + 𝜷𝟑 𝑪𝒐𝒔𝒕𝑾𝑺𝒂𝒅𝒔 + 𝜷𝟒 𝑪𝒐𝒔𝒕𝑵𝑩𝑨𝒂𝒅𝒔 + 𝜷𝟓 #𝑺𝑩𝒂𝒅𝒔 + 𝜷𝟔 #𝑾𝑺𝒂𝒅𝒔 + 𝜷𝟕 #𝑵𝑩𝑨𝒂𝒅𝒔 + 𝜷𝟖 𝑹𝑶𝑪𝑰𝑾𝑺 + 𝜷𝟗 𝑹𝑶𝑪𝑰𝑺𝑩 + 𝜷𝟏𝟎 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑺𝑩 + 𝜷𝟏𝟏 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑾𝑺 + 𝜷𝟏𝟐 𝑨𝒗𝒈𝑹𝒂𝒕𝒊𝒏𝒈𝑵𝑩𝑨 + 𝜷𝟏𝟑 𝑭𝒐𝒐𝒅𝑩𝒆𝒗 + 𝜷𝟏𝟒 𝑨𝒖𝒕𝒐𝒎𝒐𝒃𝒊𝒍𝒆 + 𝜺 For the third time, the year variable was also statistically insignificant for the NBA finals and this could be due to the same reason as the world series. The size of those two events could have a role in determining why the years are not significant. The cost of super bowl and world series advertisements were deemed not statistically significant. This could mean that since the NBA Finals is such a significantly smaller event than that of the super bowl and is played in the following quarter, the costs, revenues, and profits from the other two events will not have a significant impact. The costs of NBA finals advertisements are directly related to the ROCI of the event so since it is statistically significant at the 1% level is logical. The interpretation of this would be an additional one million dollars spent on NBA finals advertising will lead to a 0.041% increase in the ROCI of the NBA finals. 32 A strange finding in this regression was the fact that the number of commercials in the NBA finals was insignificant to the ROCI while the number of commercials in the world series generated a significant result at the 1% level. Although these results are strange, it is believed that these were outliers in the data set and should not be interpreted with much thought. The respective ROCI’s for the super bowl and world series are both statistically significant at the 5% and 1% intervals. This indicates that advertising during these other two sporting events can prove to be beneficial for a companies’ overall return on commercial investments for the entire year. The average rankings for advertisements was calculated to be statistically significant at the 1% level and an additional “yes” response to their survey increases the ROCI by 0.0049%. In this last regression, the dummy variables were statistically insignificant which could indicate that the NBA Finals usually have an even number of companies from both industries. III. Potential Biases and Errors A. Breusch-Pagan Test for Heteroskedasticity To adjust for any potential biases or error, there are several tests to run that can alleviate the mistakes from the regressions. The first error to test for is heteroscedasticity, where the variance of your data set relies on more than one x variable. To check for heteroscedasticity, the Breusch-Pagan test needs to be run. This is run by calculating the residual squared values as our dependent variable to check for this problem. F-stat needs to be greater than F-critical for us to reject our null hypothesis and conclude that there is heteroscedasticity. However, upon calculations for these three regressions, I have found that my data set was homoscedastic and the following will have the process of the calculations. For the first regression, F-stat was calculated to be 1.01 and the F-critical was 1.67 per the F-distribution tables. I can conclude than that this 33 first model does not suffer from heteroscedasticity since F-stat is less than F-crit. The second model has a calculated F-stat value of 1.27 and the same F-critical value of 1.67 so this model does not suffer from heteroscedasticity either. The third and final model has an F-stat value of 1.33 and an F-critical value of 1.67. From this, it can be concluded that this model does not suffer from heteroscedasticity. Since all models were homoscedastic, there was no need to calculate any robust regressions. This also means that the statistical significance of my variables can be interpreted without any caution. B. Correlation Matrix for Multicollinearity The second bias to test for is multi collinearity. This is when the independent variables are highly correlated with each other and this makes it difficult to determine their statistical significance. There are two ways to test for multi collinearity. The first is by running a correlation matrix for all the independent variables and if any of them exceed the cut off value of 0.8, then those variables are similarly related to one another. In order to adjust for multi collinearity, the related variables can either be dropped, which violates the zero-conditional mean and causes omitted variable bias, or secondly, do nothing and acknowledge that the statistical significance must be interpreted with caution. The second test to run is called the variance inflation factor (VIF) which measures how much variance of the estimated regression coefficients are inflated compared to when nonlinearly related. I ran both tests for multi collinearity, but only decided to incorporate the correlation matrix into this project. The only variables that exceed the cut off value of 0.8 are in the third regression for ROCI of the NBA Finals. The two variables are the average ranking of NBA advertisements and number of NBA advertisements. However, since these variables were 34 not an issue in the other two regressions, there is no need to drop them leading to the conclusion that I should interpret the statistical significance of the average ranking of NBA commercials with slight caution. Finally, there are many several factors that can affect the ROCI for companies within one of these sporting events. With this, the data may experience a low level of omitted variable bias because it is difficult to determine exactly all the factors that affect the dependent variable directly. 35 Chapter 4: Closing Remarks & Conclusion I. Brief Overview of Study The purpose of this paper was to determine if advertising during the Super Bowl, World Series, or NBA Finals earns companies’ a larger return on commercial investment. This paper suggests that there is a strong statistical significance between a companies’ ROCI and which event they choose to participate in. The data gathered and observed showed that characteristics such as the cost of advertisements, number of advertisements, and the ranking of commercials all play a large role in determining the magnitude of ROCI. The data even formulated several other interesting conclusions that I did not expect. A. Findings from the Project First, specific companies located in the automobile and food/beverage industry seem to advertise in both the Super Bowl and the other two events. However, when it comes to the two smaller events, companies tended to choose between the World Series or NBA Finals rather than advertise in both. The World Series seemed to have more automobile companies advertising during their games while the NBA Finals took on the food and beverage companies. A reasoning behind this is that car companies offer a new model vehicle to the most valuable player of the World Series every year. As for the NBA Finals, it is a much more demanding series, so for 36 companies such as PowerAde, it makes more sense for them to allocate their spending in this event. Another conclusion that can be taken away from this research is that the size of a certain company matters when looking at their return on commercial investment. When originally beginning this project, there was an expectation that the largest companies would receive the greatest ROCI. The reasoning behind this is that the more money a company allocates their budget to advertising in one of these events, the better the final payoff. However, the results how that medium sized companies tend to earn the best ROCI. Companies that fit under this category would include Taco Bell, Gatorade, and Esurance. Large companies must earn a large return on their commercial investments up until a certain point, and then the costs seem to outweigh the benefit. This is useful information to the advertising industry and respective companies because instead of producing and purchasing advertisements in all or two events, they could shift and focus all their time/money into one. B. Why the Super Bowl? This project was a study to investigate whether smaller championship events such as the World Series and NBA Finals could outlast the Super Bowl when discussing advertising. Unfortunately, all the data points in the opposite direction with the Super Bowl retaining the title of “best advertising event”. The largest piece of evidence that indicates that the Super Bowl is the “best advertising event” is the magnitude of the companies’ return on commercial investments. An important aspect to consider with this project is the size of the Super Bowl and the effect that has on each companies’ return on investment. Out of these three events, the Super Bowl is the largest per several characteristics. The Super Bowl is a one-time event and is not divided up like the World Series and NBA Finals which have a seven-game series. This creates a 37 perception among consumers(viewers) that the Super Bowl is a much more interesting event to watch. Also, the premise behind each commercial in the Super Bowl is more likely to persuade a consumer to keep purchasing a favored product or switch to a completely different brand. This is the main idea of advertising and the Super Bowl appears to capture this philosophy the best out of the three studied in this project. II. Possible Ideas for Future Research Although previous literature does not focus on the World Series and NBA Finals, I still believe that this paper’s hypothesis could hold true in the future. Every year there is an increasing number of databases that hold a plethora of information. It is possible that someone else could research a similar hypothesis in more depth and find different conclusions. A few models that would be worth researching further for the future are called the AIDA model and formula for advertising intensity. 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Do not wait to reveal the brand name: The effect of brand-name placement on television advertising effectiveness. Journal of Advertising, 33(3), 77-85. Retrieved from http://www.jstor.org/stable/4189268 41 Appendix A. Summary Statistics Variable Years (2009-2013) Cost of Super Bowl Advertisements Cost of World Series Advertisements Cost of NBA Finals Advertisements Number of Super Bowl Advertisements Number of World Series Advertisements Number of NBA Finals Advertisements Super Bowl Return on Commercial Investment World Series Return on Commercial Investment NBA Finals Return on Commercial Investment Super Bowl Commercial Avg. Ratings World Series Commercial Avg. Ratings NBA Finals Commercial Avg. Ratings Food and Beverage Companies Automobile Companies Mean 2011 1161.41 55.15 0.992453 0.89434 0.486793 54.95 Std. Deviation 1.42 11.90 5.19 5.12 1.42 1.35 1.15 41.71 Min. Max. 2009 0 0 0 0 0 1.16 2013 43.9 19 18.9 7 5 4 1.89 -2.70 6.30 0.132076 0.775 0 2.68 0.233962 0.726 0 3 0.237736 0.007547 0.026415 0.818868 0.818868 3.26 116.6 98.69 0.419 0.419 0 0 0 0 0 8.45 425 386 1 1 42 B. Regression Results: The following tables are listed in order (Table 3.2, Table 3.3, & Table 3.4) Number of Observations = 155; F(14, 140) = 29.93; Adjusted R-squared = 0.7021 Coef. Std. Error T-Stat. Return on Commercial Investment Super Bowl -0.0003606 0.0625494 -0.01 Years (2009-2013) 0.0677766 0.0144067 4.70 Cost of Super Bowl Advertisements -0.0537613 0.0407982 -1.32 Cost of World Series Advertisements 0.0197642 0.0382732 0.52 Cost of NBA Finals Advertisements -0.1259097 0.1211217 -1.04 Number of Super Bowl Advertisements -0.037905 0.1264735 -0.30 Number of World Series Advertisements -0.1430801 0.1569445 -0.91 Number of NBA Finals Advertisements World Series Return on Commercial 0.5662832 0.2316028 2.45 Investment NBA Finals Return on Commercial 0.489763 0.2357794 2.08 Investment 0.3375473 0.0487472 6.92 Super Bowl Commercial Avg. Ratings 0.0002948 0.001427 0.21 World Series Commercial Avg. Ratings -0.0058556 0.0023399 -2.50 NBA Finals Commercial Avg. Ratings 0.6176703 0.3708548 1.67 Food and Beverage Companies -0.8942749 0.2347804 -3.81 Automobile Companies 0.9449399 125.7827 0.01 Constant Number of Observations = 155; F(14, 140) = 38.74; Adjusted R-squared = 0.7743 Return on Commercial Investment World Series Years (2009-2013) Cost of Super Bowl Advertisements Cost of World Series Advertisements Cost of NBA Finals Advertisements Number of Super Bowl Advertisements Number of World Series Advertisements Number of NBA Finals Advertisements Super Bowl Return on Commercial Investment NBA Finals Return on Commercial Investment Super Bowl Commercial Avg. Ratings Coef. -0.0001916 -0.01349 0.0692395 -0.0191504 0.0087522 0.155207 -0.0094827 0.0723199 0.3442542 -0.0320985 Std. Error 0.022353 0.0054219 0.0134523 0.0135945 0.0434451 0.043267 0.056247 0.0295779 0.0804483 0.0200013 T-Stat. -0.01 -2.49 5.15 -1.41 0.20 3.59 -0.17 2.45 4.28 -1.60 P>[t] 0.995 0.000 0.190 0.606 0.300 0.765 0.364 0.016 0.040 0.000 0.837 0.013 0.098 0.000 0.994 P>[t] 0.993 0.014 0.000 0.161 0.841 0.000 0.866 0.016 0.000 0.111 43 World Series Commercial Avg. Ratings NBA Finals Commercial Avg. Ratings Food and Beverage Companies Automobile Companies Constant 0.0009729 -0.0003138 0.1293772 0.2262112 0.4839432 0.0005034 0.0008543 0.1333896 0.0860442 44.95031 1.93 -0.37 0.97 2.63 0.01 0.055 0.714 0.334 0.010 0.991 T-Stat. -0.01 -1.14 0.52 3.08 -0.51 -2.97 -0.90 2.08 4.28 -1.02 -1.49 5.95 0.99 0.31 0.01 P>[t] 0.993 0.256 0.601 0.002 0.609 0.003 0.372 0.040 0.000 0.308 0.140 0.000 0.325 0.758 0.991 Number of Observations = 155; F(14, 140) = 33.79; Adjusted R-squared = 0.7488 Return on Commercial Investment NBA Finals Years (2009-2013) Cost of Super Bowl Advertisements Cost of World Series Advertisements Cost of NBA Finals Advertisements Number of Super Bowl Advertisements Number of World Series Advertisements Number of NBA Finals Advertisements Super Bowl Return on Commercial Investment World Series Return on Commercial Investment Super Bowl Commercial Avg. Ratings World Series Commercial Avg. Ratings NBA Finals Commercial Avg. Ratings Food and Beverage Companies Automobile Companies Constant Coef. -0.0001947 -0.0062098 0.0075842 0.0403348 -0.0219614 -0.1288326 -0.0496059 0.0610468 0.3359949 -0.0203207 -0.0007425 0.00449 0.1302061 0.0268491 0.4755342 Std. Error 0.0220832 0.0054484 0.0144787 0.0130887 0.0428868 0.0433186 0.0554154 0.0293889 0.0785182 0.0198667 0.0004999 0.0007543 0.1317631 0.0870492 44.40782 44 Acknowledgements I would like to first thank my wonderful and loving parents, Heather and Jeff Boyer. Without them, I would not be in the position I am today attending an institution as prestigious as Allegheny College to further my academic and athletic careers. I would also like to thank my other immediate family members, especially both sets of grandparents. Whenever I have needed someone to talk with, their doors were always open and I cannot thank them enough for that. To all my teammates on the baseball team, I thank you for pushing me to strive for better results every single day on and off the field. To all the professors I have had an encounter with here at Allegheny, you have helped guide my ways of understanding and reasoning more than you can imagine. For this, I am eternally grateful. Lastly, I would like to give a special thank you to both Dr. Hoa Nguyen and Dr. Janine Sickafuse for helping facilitate the process of the senior composition. 45