| Segmentation-based modeling for advanced targeted marketing |
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International Conference on Knowledge Discovery and Data Mining
archive
Proceedings of the seventh ACM SIGKDD international conference on Knowledge discovery and data mining
table of contents
San Francisco, California
Pages: 408 - 413
Year of Publication: 2001
ISBN:1-58113-391-X
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Authors
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C. Apte
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IBM T.J. Watson Research Center, Yorktown Heights, NY
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E. Bibelnieks
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IBM T.J. Watson Research Center, Yorktown Heights, NY
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R. Natarajan
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IBM T.J. Watson Research Center, Yorktown Heights, NY
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E. Pednault
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IBM T.J. Watson Research Center, Yorktown Heights, NY
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F. Tipu
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IBM T.J. Watson Research Center, Yorktown Heights, NY
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D. Campbell
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Fingerhut Business Intelligence, Minnetonka, MN
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B. Nelson
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Fingerhut Business Intelligence, Minnetonka, MN
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Downloads (6 Weeks): 8, Downloads (12 Months): 66, Citation Count: 7
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ABSTRACT
Fingerhut Business Intelligence (BI) has a long and successful history of building statistical models to predict consumer behavior. The models constructed are typically segmentation-based models in which the target audience is split into subpopulations (i.e., customer segments) and individually tailored statistical models are then developed for each segment. Such models are commonly employed in the direct-mail industry; however, segmentation is often performed on an ad-hoc basis without directly considering how segmentation affects the accuracy of the resulting segment models. Fingerhut BI approached IBM Research with the problem of how to build segmentation-based models more effectively so as to maximize predictive accuracy. The IBM Advanced Targeted Marketing-Single EventsTM (IBM ATM-SETM) solution is the result of IBM Research and Fingerhut BI directing their efforts jointly towards solving this problem. This paper presents an evaluation of ATM-SE's modeling capabilities using data from Fingerhut's catalog mailings.
REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
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Anthes, G., Optimal Results. Computerworld, 2000. 34(47): p. 60-61.
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Chidanand Apte , Edna Grossman , Edwin P. D. Pednault , Barry K. Rosen , Fateh A. Tipu , Brian White, Probabilistic Estimation-Based Data Mining for Discovering Insurance Risks, IEEE Intelligent Systems, v.14 n.6, p.49-58, November 1999
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Bibelnieks, E. and D. Campbell, Mail Stream Streamlining. Catalog Age, 2000. 17(12): p. 118-120.
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Deb Campbell , Randy Erdahl , Doug Johnson , Eric Bibelnieks , Michael Haydock , Mark Bullock , Harlan Crowder, Optimizing Customer Mail Streams at Fingerhut, Interfaces, v.31 n.1, p.77-90, January 2001
[doi> 10.1287/inte.31.1.77.9691]
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Natarajan, R. and E.P.D. Pednault, Decision Trees with Node Regression Estimators for Massive Data Sets. 2001. IBM Research Report (in preparation)
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Natarajan, R. and E.P.D. Pednault. Using Simulated Pseudo Data To Speed Up Statistical Predictive Modeling From Massive Data Sets. in First SIAM International Conference on Data Mining. 2001. Chicago.
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CITED BY 7
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Naoki Abe , Naval Verma , Chid Apte , Robert Schroko, Cross channel optimized marketing by reinforcement learning, Proceedings of the tenth ACM SIGKDD international conference on Knowledge discovery and data mining, August 22-25, 2004, Seattle, WA, USA
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C. V. Apte , S. J. Hong , R. Natarajan , E. P. D. Pednault , F. A. Tipu , S. M. Weiss, Data-intensive analytics for predictive modeling, IBM Journal of Research and Development, v.47 n.1, p.17-23, January 2003
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N. Abe , R. Akkiraju , S. Buckley , M. Ettl , P. Huang , D. Subramanian , F. Tipu, On optimizing the selection of business transformation projects, IBM Systems Journal, v.46 n.4, p.777-795, October 2007
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Alan S. Abrahams , Adrian B. Becker , Daniel Sabido , Rosskyn D'Souza , George Makriyiannis , Michal Krasnodebski, Inducing a marketing strategy for a new pet insurance company using decision trees, Expert Systems with Applications: An International Journal, v.36 n.2, p.1914-1921, March, 2009
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