Semiparametric multinomial logit models for analysing consumer choice behaviour

被引:0
作者
Thomas Kneib
Bernhard Baumgartner
Winfried J. Steiner
机构
[1] Ludwig-Maximilians-University,Department of Statistics
[2] University of Regensburg,undefined
来源
AStA Advances in Statistical Analysis | 2007年 / 91卷
关键词
Brand choice; Conditional logit model; Mixed models; Multinomial logit model; Penalised splines; Proper scoring rules; Semiparametric regression ;
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中图分类号
学科分类号
摘要
The multinomial logit model (MNL) is one of the most frequently used statistical models in marketing applications. It allows one to relate an unordered categorical response variable, for example representing the choice of a brand, to a vector of covariates such as the price of the brand or variables characterising the consumer. In its classical form, all covariates enter in strictly parametric, linear form into the utility function of the MNL model. In this paper, we introduce semiparametric extensions, where smooth effects of continuous covariates are modelled by penalised splines. A mixed model representation of these penalised splines is employed to obtain estimates of the corresponding smoothing parameters, leading to a fully automated estimation procedure. To validate semiparametric models against parametric models, we utilise different scoring rules as well as predicted market share and compare parametric and semiparametric approaches for a number of brand choice data sets.
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页码:225 / 244
页数:19
相关论文
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