Knowledge Discovery using Least Squares Support Vector Machine Classifiers: a Direct Marketing Case

Authors
  • S. Viaene
  • B. Baesens
  • T. Van Gestel
  • J.A.K. Suykens
  • D. Van den Poel
  • J. Vanthienen
  • B. De Moor
  • G. Dedene
Publication date 2000
Host editors
  • D.A. Zighed
  • J. Komorowsky
  • J. Żytkow
Book title Principles of Data Mining and Knowledge Discovery
Book subtitle 4th European Conference, PKDD 2000 Lyon, France, September 13–16, 2000 : proceedings
ISBN
  • 354041066X
  • 9783540410669
ISBN (electronic)
  • 9783540453727
Series Lecture Notes in Computer Science
Pages (from-to) 657-664
Publisher Berlin: Springer
Organisations
  • Faculty of Economics and Business (FEB) - Amsterdam Business School Research Institute (ABS-RI)
Abstract
The case involves the detection and qualification of the most relevant predictors for repeat-purchase modelling in a direct marketing setting. Analysis is based on a wrapped form of feature selection using a sensitivity based pruning heuristic to guide a greedy, step-wise and backward traversal of the input space. For this purpose, we make use of a powerful and promising least squares version (LS-SVM) for support vector machine classification. The set-up is based upon the standard R(ecency) F(requency) M(onetary) modelling semantics. Results indicate that elimination of redundant/irrelevant features allows to significantly reduce model complexity. The empirical findings also highlight the importance of Frequency and Monetary variables, whilst the Recency variable category seems to be of lesser importance. Results also point to the added value of including non-RFM variables for improving customer profiling.
Document type Conference contribution
Language English
Published at https://doi.org/10.1007/3-540-45372-5_81
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