Article ID: | iaor20002545 |
Country: | Netherlands |
Volume: | 116 |
Issue: | 3 |
Start Page Number: | 640 |
End Page Number: | 652 |
Publication Date: | Aug 1999 |
Journal: | European Journal of Operational Research |
Authors: | Lau Kin-nam, Leung Pui-lam, Tse Ka-kit |
Keywords: | programming: mathematical |
The clusterwise regression model is used to perform cluster analysis within a regression framework. While the traditional regression model assumes the regression coefficient (β) to be identical for all subjects in the sample, the clusterwise regression model allows β to vary with subjects of different clusters. Since the cluster membership is unknown, the estimation of the clusterwise regression is a tough combinatorial optimization problem. In this research, we propose a ‘Generalized Clusterwise Regression Model’ which is formulated as a mathematical programming problem. A nonlinear programming procedure (with linear constraints) is proposed to solve the combinatorial problem and to estimate the cluster membership and β simultaneously. Moreover, by integrating the cluster analysis with the discriminant analysis, a clusterwise discriminant model is developed to incorporate parameter heterogeneity into the traditional discriminant analysis. The cluster membership and discriminant parameters are estimated simultaneously by another nonlinear programming model.