DOI QR코드

DOI QR Code

Prediction of the Probability of Customer Attrition by Using Cox Regression

  • Kang, Hyuncheol (Department of Informational Statistics, Hoseo University) ;
  • Han, Sang-Tae (Department of Informational Statistics, Hoseo University)
  • Published : 2004.08.01

Abstract

This paper presents our work on constructing a model that is intended to predict the probability of attrition at specified points in time among customers of an insurance company. There are some difficulties in building a data-based model because a data set may contain possibly censored observations. In an effort to avoid such kind of problem, we performed logistic regression over specified time intervals while using explanatory variables to construct the proposed model. Then, we developed a Cox-type regression model for estimating the probability of attrition over a specified period of time using time-dependent explanatory variables subject to changes in value over the course of the observations.

Keywords

References

  1. Survival Analysis Using the SAS System : A Practical Guide Allison, P.D.
  2. Journal of the Royal Statistical Society v.B34 Regression Models and Life Tables Cox, D.R.
  3. Biometrika v.62 Partial Likelihood Cox, D.R. https://doi.org/10.1093/biomet/62.2.269
  4. The Annals of Statistics v.30 Variable selection of Cox`s proportional hazards model and frailty Fan, J.;Li, R. https://doi.org/10.1214/aos/1015362185
  5. Biometrics v.54 Bayesian Variable Selection Method for Censored Surivival Data Faraggi, D.;Simon, R. https://doi.org/10.2307/2533672
  6. Current Contents no.Februry 12 100 Most Cited Papers of All Time Garfield, E.
  7. The Canadian Journal of Statistics v.27 Bayesian variable selection for proportional hazards models Ibrahim, J.;Chen, M.;MacEachern, S. https://doi.org/10.2307/3316126
  8. The Statistical Analysis of Failure Time Data Kalbfleisch, J.D.;Prentice, R.L.
  9. Statistical Models and Methods for Lifetime Data Lawless, J.F.
  10. Survival Analysis Miller, R.J.
  11. Data Mining Cookbook : Modeling Data for Marketing, Risk, and Customer Relationship Management Rud, O. P.
  12. SAS/STAT User's Guide in SAS Online Document SAS Institute

Cited by

  1. Diagnostics for the Cox model vol.24, pp.6, 2017, https://doi.org/10.29220/CSAM.2017.24.6.583