Article ID: | iaor20061178 |
Country: | United States |
Volume: | 24 |
Issue: | 4 |
Start Page Number: | 595 |
End Page Number: | 615 |
Publication Date: | Sep 2005 |
Journal: | Marketing Science |
Authors: | Cui Dapeng, Curry David |
Keywords: | forecasting: applications |
Many marketing problems require accurately predicting the outcome of a process or the future state of a system. In this paper, we investigate the ability of the support vector machine to predict outcomes in emerging environments in marketing, such as automated modeling, mass-produced models, intelligent software agents, and data mining. The support vector machine (SVM) is a semiparametric technique with origins in the machine-learning literature of computer science. Its approach to prediction differs markedly from that of standard parametric models. We explore these differences and benchmark the SVM's prediction hit-rates against those from the multinomial logit model. Because there are few applications of the SVM in marketing, we develop a framework to position it against current modeling techniques and to assess its weaknesses as well as its strengths.