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Modeling Techniques in Predictive Analytics: Business Problems and Solutions with R [Kõva köide]

  • Formaat: Hardback, 348 pages, kõrgus x laius x paksus: 243x181x26 mm, kaal: 748 g
  • Ilmumisaeg: 17-Oct-2013
  • Kirjastus: Pearson FT Press
  • ISBN-10: 0133412938
  • ISBN-13: 9780133412932
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  • Formaat: Hardback, 348 pages, kõrgus x laius x paksus: 243x181x26 mm, kaal: 748 g
  • Ilmumisaeg: 17-Oct-2013
  • Kirjastus: Pearson FT Press
  • ISBN-10: 0133412938
  • ISBN-13: 9780133412932
Today, successful firms compete and win based on analytics. Modeling Techniques inPredictive Analytics brings together all the concepts, techniques, and R code you need to excel in any role involving analytics. Thomas W. Miller’s unique balanced approach combines business contextand quantitative tools, appealing to managers, analysts, programmers, and students alike. Miller addresses multiple business challenges and business cases, including segmentation, brand positioning, product choice modeling, pricing research, finance, sports, text analytics, sentiment analysis, and social network analysis. He illuminates the use of cross-sectional data, time series, spatial, and even spatio-temporal data. For each problem, Miller explains why the problem matters, what data is relevant, how to explore your data once you’ve identified it, and then how to successfully model that data. You’ll learn how to model data conceptually, with words and figures; and then how to model it with realistic R programs that deliver actionable insights and knowledge. Miller walks you through model construction, explanatory variable subset selection, and validation, demonstrating best practices for improving out-of-sample predictive performance. He employs data visualization and statistical graphics in exploring data, presenting models, and evaluating performance. All example code is presented in R, today’s #1 system for applied statistics, statistical research, and predictive modeling; code is set apart from other text so it’s easy to find for those who want it (and easy to skip for those who don’t).

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Today, successful firms win by understanding their data more deeply than competitors do. In short, they compete based on analytics. Now, in Modeling Techniques in Predictive Analytics, the leader of Northwestern Universitys prestigious analytics program brings together all the concepts, techniques, and R code you need to excel in analytics. Thomas W. Millers unique balanced approach combines business context and quantitative tools, appealing to managers, analysts, programmers, and students alike.

 

Miller addresses multiple business challenges and business cases, including segmentation, brand positioning, product choice modeling, pricing research, finance, sports, Web and text analytics, and social network analysis. He illuminates the use of cross-sectional data, time series, spatial, and even spatio-temporal data. For each problem, Miller explains: 





Why the problem is significant What data is relevant How to explore your data How to model your data first conceptually, with words and figures; and then with mathematics and programs





Miller walks through model construction, explanatory variable subset selection, and validation, demonstrating best practices for improving out-of-sample predictive performance. He employs data visualization and statistical graphics in exploring data, presenting models, and evaluating performance. Extensive example code is presented in R, todays #1 system for applied statistics, statistical research, and predictive modeling; all code is set apart from other text so its easy to find for those who want it (and easy to skip for those who dont).
Preface v
Figures
ix
Tables
xiii
Exhibits xv
1 Analytics and Data Science
1(14)
2 Advertising and Promotion
15(14)
3 Preference and Choice
29(8)
4 Market Basket Analysis
37(16)
5 Economic Data Analysis
53(14)
6 Operations Management
67(16)
7 Text Analytics
83(30)
8 Sentiment Analysis
113(36)
9 Sports Analytics
149(24)
10 Brand and Price
173(36)
11 Spatial Data Analysis
209(22)
12 The Big Little Data Game
231(6)
A There's a Pack' for That
237(16)
A.1 Regression
238(2)
A.2 Classification
240(2)
A.3 Recommender Systems
242(2)
A.4 Product Positioning
244(2)
A.5 Segmentation and Target Marketing
246(3)
A.6 Finance and Risk Analytics
249(1)
A.7 Social Network Analysis
250(3)
B Measurement
253(14)
C Code and Utilities
267(30)
Bibliography 297(30)
Index 327
Thomas W. Miller is faculty director of the Predictive Analytics program at Northwestern University. He has designed courses for the program, including Marketing Analytics, Advanced Modeling Techniques, Data Visualization, and the capstone course. He has taught extensively in the program and works with more than forty other faculty members in delivering training in predictive analytics and data science.



 

Miller is also owner and president of Research Publishers LLC. He has consulted widely in the areas of retail site selection, product positioning, segmentation, and pricing in competitive markets, and has worked with predictive models for over 30 years.

 

Millers books include Data and Text Mining: A Business Applications Approach, Research and Information Services: An Integrated Approach for Business, and a book about predictive modeling in sports, Without a Tout: How to Pick a Winning Team.



 

Before entering academia, Miller spent nearly 15 years in business IT in the computer and transportation industries. He also directed the A. C. Nielsen Center for Marketing Research and taught market research and business strategy at the University of WisconsinMadison.



 

He holds a Ph.D. in psychology (psychometrics), a masters degree in statistics from the University of Minnesota, and an MBA and masters degree in economics from the University of Oregon.