* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Teaching Data Mining: The New “Required Competency” for
Survey
Document related concepts
Transcript
Teaching Data Mining: The New “Required Competency” for Marketing Professionals Today’s Presenters: Tom Nugent Kenneth Elliott, Ph.D. Industry trends • Explosive data and information growth • “Predict or perish!” • Industry has higher expectations of new graduates • Soft economy means the most competitive job market in years What is Data Mining? Discovering meaningful patterns in your data What is Data Mining? As the data grows… The relationships become more complicated What is Data Mining? Data mining discovers meaningful patterns in your complex data Data mining is • A user-centric, interactive process which leverages analysis technologies and computing power “Computers and algorithms don’t mine data; people do!” Data mining is not • Blind application of analysis/modeling algorithms • Brute-force crunching of bulk data Size and Demand for DM Software Worldwide Data Mining Market ($M) 2000 1800 1600 1400 1200 1000 800 600 400 200 0 2001 Source: IDC. 2001 2006 Why data mining? • Standard Life secured 50 million in mortgage revenue • Verizon Wireless retained 33% of targeted customers, reduced direct mail budget by 60% and increased usage and revenue • Softmap achieved a 300% year-on-year rise in website profits the first month they deployed models for personalization Types of data mining applications •CRM: analytic applications designed to measure and optimize customer relationships (e.g. customer profitability, retention, marketing analysis) •Financial/BPM: analytic applications designed to measure and optimize financial performance (e.g. budgeting) and/or to establish and evaluate an enterprise business strategy (e.g. balanced scorecard). •Operations/Production: analytic applications designed to measure and optimize the production and delivery of a business’s products and services (e.g. demand planning, workforce optimization, inventory analysis, healthcare outcomes analysis). Types of data mining applications • Student Relationship Management- change the vocabulary –Student Retention/Acquisition –Enrollment Management –Surveys –Targeted Marketing • Financial Aid Allocation • Web Analysis ~75% of Data Mining applications are CRM • Sales/marketing applications in framework of the customer lifecycle –Basis for “analytical CRM” Operational CRM isn’t enough “Fewer than 50 percent of enterprise wide CRM initiatives will generate payback by 2004.” Gartner Group “Organizations that don’t embrace analytics as a component of their CRM strategies are ultimately going to fail at CRM.” Meta Group Operational CRM isn’t enough “Data mining is a way to lift CRM projects into a higher level of return on investment.” Meta Group What analytical CRM does More Efficient Acquisition More Frequent Up/Cross Sell Profit Revenue Less Loss Time Loss Longer Lasting Relationship What analytical CRM does More Efficient Acquisition More Frequent Up/Cross Sell More Profit Profit Revenue Less Loss Time Loss Longer Lasting Relationship What analytical CRM does More Efficient Acquisition More Frequent Up/Cross Sell Longer Lasting Relationship Even More Profit Profit Revenue Less Loss Time Loss Why data mining in marketing? • How often do our best customers buy? • What motivates customers to make multiple purchases? • How can we ensure long-term loyalty? • How do we attract and retain new customers? • How can we personalize and align offers to achieve maximum ROI? CRM applications in marketing • Understanding customers – Quickly uncover the attributes that define customer behaviors – Profile customers to understand their needs and desires – Results in more relevant and targeted customer communications • For example…predict that a 31-year old single male is likely to respond favorably to a discounted travel offer every 6 months CRM applications in marketing • Develop targeted offers – Identify propensities to purchase certain products – Maximize campaign results through better targeting – Analyze past results to predict future results • For example…predict that a 22-year old woman who lives in Chicago is very likely to purchase a specific new book release CRM applications in marketing • Match specific offers to specific individuals – Fine tune messages by marketing channel – Deliver offers based on customer profile – Results in increased campaign ROI • For example, predict that a 35-year old woman with two children is likely to purchase a new toaster every 2.5 years CRM applications in marketing • Execute real-time campaigns – Assign scores based on behavior – Provide an immediate offer based on customer specifics – Results in increased response and long term customer value • For example, offer the money market customer on the phone a good rate on a certificate of deposit, based on their profile CRM applications in marketing • Monitor campaign results –Determine how a campaign is doing –Identify ways to improve response –Maximize results by tweaking campaigns midstream • For example, offer current cellular phone customers the same offer as new customers, based on feedback Case studies • Clustering • Association • Sequence association • Prediction & classification • SPSS customers Clustering techniques Clustering techniques Clustering in Clementine • Clustering is used to find natural groupings of cases • The cluster results, shown below, show that certain groups or “segments” have a much higher propensity to respond Association algorithms + = Association algorithms + = Sequence association 1 2 3 Home Page estore Check-out Page Sample of sequence association output Results of sequence association indicate which items and in what order have been purchase. We see here that if frozen meal and beer were purchased on the last visit, then frozen meal will be purchased on the next visit with a confidence of 87.1% Prediction & classification Prediction & classification Education no college college grad Prediction & classification Income low income high income What data mining has done for… Standard Life needed to expand its share of the increasingly competitive mortgage market Secured $50 Million of mortgage revenue through the use of an accurate propensity model to target offers % What data mining has done for… Verizon Wireless needed to reduce customer churn and associated replacement costs Saved 33% of targeted customers, reduced direct mail budget by 60% and increased usage and revenue What data mining has done for… Sofmap needed to improve crossselling to their web shoppers and… Achieved a 300% year-on-year rise in profits the first month they deployed models for personalization