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Welcome B2C eCommerce Trends in Pricing Jonathan Wareham [email protected] Price Levels Assumption that electronic markets have less friction than comparable markets. • Search costs lower • Competition increases • Average prices should fall, converging on market level Study of prices of books and CDs and software sold on internet: Higher prices & greater variance in electronic channel !!!!! u u u u Possible Causes 1. Superior disc. pricing techniques: lower registration and menu costs 2. Heterogeneity: wine in store or restaurant • Versioning 3. Temporal preference: consumer behavior and types 4. Imperfect information: bait and switch 5. Neural real estate: 5% sites/75% traffic 6. Market immaturity: eMarkets too young Fixed Prices P $1.00 1 Coke Q Fixed Prices P P Consumers Surplus Dead Weight Loss Q MC Q Get a little more revenue P P1 P2 P3 Q1 Q2 Q3 Q 2nd Degree Price Discrimination “product line pricing”, “market segmentation”, “versioning” Gold Club, Platinum Club, Titanium Club, Synthetic Polymer Club First Class, Business Class, World Traveler Class Professional Version, Home Office 3rd Degree Price Discrimination The practice of charging different groups of consumers different prices for the same product Examples include student discounts, senior citizen’s discounts, regional & international pricing, coupons Maximize the Revenue ! Perfect (1st degree) Price Disc. P Q Perfect Price Discrimination Price $ Profits: .5(4-0)(10 - 2) = $16 10 8 6 4 Total Cost 2 MC D 1 2 3 4 5 Quantity Prefect Price Discrimination Practice of charging each consumer the maximum amount he or she will pay for each incremental unit Permits a firm to extract all surplus from consumers Difficult: airlines, professionals and car dealers come closest Caveats: In practice, transactions costs and information constraints make this is difficult to implement perfectly (but car dealers and some professionals come close). Price discrimination won’t work if you cannot control three things: Preference profiles Personalized billing; (anonymous transactions lesson seller’s discriminatory power over consumers) Consumer arbitrage What is different about this site? Conclusions 1. Internet double edged sword: • Consumers enjoy lower search costs, but… • eMarketers have superior tools to register your consumption patterns and price sensitivity 2. The end of fixed pricing??? • Fixed pricing as an institution only 100 years old!! • Developed in response to large scale economies/production models….with standard products !!!! Horizontal Differentiation The game of location (proximity to customer’s tastes) 1/2 Bob Bob Alice Alice Vertical Differentiation Price High Low Quality How??? 1. Versions 2. Timing and delays 3. Ease of use 4. Pathways into site 5. Segregation of markets and users 6. Analysis of click stream and previous purchasing history Making Self-Selection Work May need to cut price of high end May need to cut quality at low end Value-subtracted versions May cost more to produce the lowquality version. In design, make sure you can turn features off! How Many Versions? One is too few Ten is (probably) too many Two things to do Analyze market Analyze product Analyze Your Market Does it naturally subdivide into different categories? AND Are their behaviors sufficiently different? Example: Airlines Tourists v. Business travelers “This created visible differentiation in customer service. It was essential for our customers to see the perks that the others were getting.” Analyze Your Product Dimensions to version High and low end for each dimension Design for high end, reduce quality for low end Low end advertises for high end in service industries – Cheap rates High end – Flagship products advertises for low end in many products. Goldilocks Pricing Mass market software (word, spreadsheets) Network effects User confusion Default choice: 3 versions Extremeness aversion Small/large v. small/large/jumbo Extremes Aversion Bargain basement at $109, midrange at $179 Midrange chosen 45% of time High-end at $199 added Mid-range chosen 60% of time Wines Second-lowest price “Framing effects”-example Cross-Subsidies Prices charged for one product are subsidized by the sale of another product May be profitable when there are significant demand complementarities effects Examples Browser and server software Drinks and meals at restaurants Long distance and local access Auto spare parts Razor & Blades Burger, fries, drinks Auto financing Lessons Version your product Delay, interface, resolution, speed, etc. Add value to online information Use natural segments Otherwise use 3 Control the browser, access, comparisons, etc. Bundling & cross subsidies may reduce dispersion Down & Dirty First degree (perfect) price discrimination “market of one” Second degree price discrimination “product line pricing”, “market segmentation”, “versioning” Third degree price discrimination “different prices to different groups” Other definitions in literature… ...Decisions Are Not Always “Rational” Tickets; $7.95 Tickets; $6.95 $1.00 Discount for Children & Seniors $1.00 Extra for Middle Aged People Price Perception Issues are Complex... More Acceptable Pricing Product-Based Open Discretionary Discounts and Promotions Rewards Less Acceptable Pricing Customer-Based Hidden Imposed Surcharges Penalties RM coming of age 1978: Airline deregulation in the U.S. 1985: 1992: People Express vs. American Airlines Edelman Award: RM for AA $1.4 billion in 3 years virtually every airline has implemented RM National Car Rental (vs. GM) Edelman Award: RM for SNCF AA: $1 billion incremental revenues from RM Marriott Int’l RM: 4.7% increase in room revenue 1997: 1999: 2000-01: 2003: Deregulation Europe: telecom, media, energy … e-distribution supports dynamic pricing & profiling Dell, Amazon & Coca Cola experiment dynamic pricing RM spans wide range of industries … RM Evolution HealthCare/ Hospitals Telco/ISP Insurance/ banking Sports Parks Cruise lines Entertainment Car rental Airlines 1980 Rail Transp. Hotels 1985 1990 Freight, Cargo Energy Tour Operators Media 1995 Manufact. 2000 Retailers YM: Where and When? 1) Perishable: impossible to store excess resources 2) Choose now: future demand is uncertain (how many rooms to sell at low price) 3) Customer segmentation with different demand curves 4) Same unit of capacity can be used to deliver different services 5) Producers are profit driven and price changes are accepted socially Major Types Revenue Management (EMSR) Peak-Load Pricing Markdown Management Customized Pricing Promotions Pricing Dynamic List Pricing Auctions Revenue Management Set of techniques use to manage Constrained, perishable inventory (time) When customer willingness to pay increases towards departure Applications: Airlines, Hotels, Car Rentals, News Vendors Main techniques: Open and close certain rate categories (rate fences) based on historical probabilities and forecasts of future demand The RM Challenge Arrivals of high paying customers… Closer to departure! Arrivals of low paying customers …Earlier! Peak-Load Pricing Tactic of varying the price of constrained and perishable capacity to reflect imbalances between supply and demand Based on changing prices only, not availability like RM. No perishable inventory Simple= when demand increases, raise prices Industries= utilities (electricity, telephones) theme parks, toll bridges, theatres (afternoon showings) Markdown Management Techniques used to clear excess, perishable inventory over time Customer demand decreases over time (opposed to RM) Used in retailing of fashion apparel and consumer electronics where there is a high obsolescence Customized Pricing Occurs when the seller has the opportunity to offer a unique price to a buyer Equivalent to first degree price discrimination Used by car dealers, professional services, industrial sales, made to order manufacturing, person to person negotiation of nonstandardized products Promotions Pricing Similar to markdown management Portfolio of tools to address different customer segments. Example Automobile Sales Low income like cheap financing and low down payment High income like cash back, additional add-ons, services warranties/agreements Dynamic List Pricing Dynamically move prices up and down according to perceived changes in demand. Products not constrained, can reorder more. Not traditionally used because of high menu costs Now used in Internet and traditional retailing due to new technologies. Auctions Variable pricing mechanisms Often used for instances when prices are not easily determined English First price sealed bid Vickrey Dutch The RM Challenge Arrivals of high paying customers… Closer to departure! Arrivals of low paying customers …Earlier! Expected Marginal Seat Revenue “ESMR” Kernel in many YM systems Peter Belobabba, MIT Belobaba, P. “Application of a Probabilistic Decision Model to Airline Seat Inventory Control,” Operations Research, vol 37(2) 1989. EMSR a simple example Hotel; 210 rooms Business Customers = 159$ night Leisure Customers = 105$ night We are now in February, the hotel has 210 rooms available for March 29. Leisure Customers book earlier Business Customers book later How many rooms to sell at low price now? How many to save to try and sell a high price later? What if we don not sell them all at 159$ then we lost 105$ per room!!!! Terms Booking limit: Maximum number of rooms to be sold at low price Protection level: Number of rooms to be saved for the business customers who arrive later Booking limit = 210 – protection level Depiction: What should Q be? 210 rooms Q+1 rooms protected (protection level) Q 210- (Q-1) rooms sold at discount (booking limit) Decision Tree Revenue Yes – sell (Q+1) room now Lower protection level from Q+1 to Q? No – protect (Q+1) rooms Sold at full price later Not sold by March 29 105 $ 159 $ 0$ Historical Demand Demand for # days rooms at full with price demand 0-70 12 71 3 72 3 73 2 74 0 75 4 76 4 77 5 78 2 79 7 80 4 81 10 82 13 83 12 84 4 85 9 86 10 above 86 19 TOTAL 123 Probability 9,8% 2,4% 2,4% 1,6% 0,0% 3,3% 3,3% 4,1% 1,6% 5,7% 3,3% 8,1% 10,6% 9,8% 3,3% 7,3% 8,1% 15,4% 100,0% Cumulative probability 9,8% 12,2% 14,6% 16,3% 16,3% 19,5% 22,8% 26,8% 28,5% 34,1% 37,4% 45,5% 56,1% 65,9% 69,1% 76,4% 84,6% 100,0% 100,0% Decision Tree Revenue Yes – sell (Q+1) room now Lower protection level from Q+1 to Q? No – protect (Q+1) rooms 1-F(Q) F(Q) 105 $ 159 $ 0$ Calculation (1-F(Q))($159) + F(Q)($0) = (1-F(Q))*($159) Therefore we should lower booking limit to Q as long as (1-F(Q))*($159)<=$105 Or F(Q)>=($159-$105)/$159 = 0.339 Rational Find smallest Q with a cumulative value greater than or equal to 0.339. Optimal protection is Q=79 with a cumulative value of .341 Booking limit: 210 -79 =131 Save 79 rooms for business travlers Sell 131 rooms for tourist travlers Demand for # days rooms at full with price demand 0-70 12 71 3 72 3 73 2 74 0 75 4 76 4 77 5 78 2 79 7 80 4 81 10 82 13 83 12 84 4 85 9 86 10 above 86 19 TOTAL 123 Probability 9,8% 2,4% 2,4% 1,6% 0,0% 3,3% 3,3% 4,1% 1,6% 5,7% 3,3% 8,1% 10,6% 9,8% 3,3% 7,3% 8,1% 15,4% 100,0% Cumulative probability 9,8% 12,2% 14,6% 16,3% 16,3% 19,5% 22,8% 26,8% 28,5% 34,1% 37,4% 45,5% 56,1% 65,9% 69,1% 76,4% 84,6% 100,0% 100,0% Overbooking Lost revenue due to seats Penalties and financial compensation to bumped customers X = # of no-shows with distribution of F(x) Y = number of seats overbooked Airplane has S# of seats We will sell S+Y tickets Overbooking Calculation C = penalties and bad will caused by bumping customers B represents the opportunity cost of flying with an empty seat (or the price of the ticket) The optimal number of overbooked seats F(Y) >= B/B+C Overbooking Example # of customers who book but fail to show up are normally distributed mean=20 std.=10 It costs $300 to bump a customer Hotel looses $105 if it does not sell room at $105 Overbooking b/b+c $105/($105+$300) = .2592 Overbooking Example From normal distribution we get Φ(-.65)= 0.2578 & Φ(-.64) = 0.2611 Take z*=-0.645 Overbook Y=20-(0.645*10)=13.5 Excel =Norminv(.2592, 20, 10) gives 13.5 Round up to 14 means 210+14=224 Overbooking metrics Service level based: P(denial) =0.05 E[#denials]=2 Etc. Cost based: assign a cost to each and optimize Overbooking cost (airlines): Direct compensation cost Provision cost of hotel/meal Reaccom cost (another flight/airline) Ill-will cost (~ “lifetime customer value”) Industries Overbooking Airlines Hotels Car rentals Education Manufacturing Media No Overbooking Restos Movies, shows Events Resort hotels Cruise lines CRM DPRM “Attract & retain customers” maximize profit from each customer Segment by customer LTV Price/availability= fct. of forecasted customer LTV to the organization Ignores capacity issues and opportunity costs (displacement) Wealth of data “generate revenue” maximize profit from available assets Segment by customer WTP Price/availability = fct. of forecasted demand & available supply Ignores customer value issues and long term revenues Quantifiable value Maximize long-term profits CRM & RM Variables to track Actual win or loss Number of days played Credit history Length of stay at hotel Individual spending preferences Demographics Psychographic profiles Theoretical Revenue Theoretical = (total amount wagered) X (house advantage) 100$ hand x 10 hours x 100 Hands/hour x .01 (house adv. 49/51) = $1,000 Can you track every single person??? Not always Difficult in table games Theoretical = (total amount wagered) X (house advantage) Where.. Total amount wagered = estimated average bet x estimated time played Future estimates… ADT = Average Daily Theoretical Revenue Assumes that this level is constant Multiply by estimated # of days of future trip to gain value Combined with CRM data on consumption of food and beverage, entertainment, pshychographics, etc Rooms, a scarce resource Heads in beds: make money on gaming Comp. Rooms: traditionally a fixed number of rooms given to big gamblers Used averages to cost out, did not dynamically look at “opportunity cost” ReInvestment amount % of the ADT ADT $1,000 Reinvestment amount = 30% = $300 Total value of the room, F&B, Entertainment, etc. must be less than the Room 200, F&B 100, Ent. 80..more than ADT x reinvest. Ergo…try and sell room.. Sophisticated applications use dynamic pricing to asses opportunity costs.. Requirements RM – Yield management like the airlines.. Player tracking systems..Use cards like Harras, to register all activity and psychographic profiles POS resturants, theaters, spas, retail stores, entertainment, etc… CRM integrates all of the above!! Statistical analysis and optimization applications.