Book contents
- Frontmatter
- Contents
- List of figures
- List of tables
- Preface
- 1 Introduction and outline of the book
- 2 Features of marketing research data
- 3 A continuous dependent variable
- 4 A binomial dependent variable
- 5 An unordered multinomial dependent variable
- 6 An ordered multinomial dependent variable
- 7 A limited dependent variable
- 8 A duration dependent variable
- Appendix
- Bibliography
- Author index
- Subject index
5 - An unordered multinomial dependent variable
Published online by Cambridge University Press: 06 July 2010
- Frontmatter
- Contents
- List of figures
- List of tables
- Preface
- 1 Introduction and outline of the book
- 2 Features of marketing research data
- 3 A continuous dependent variable
- 4 A binomial dependent variable
- 5 An unordered multinomial dependent variable
- 6 An ordered multinomial dependent variable
- 7 A limited dependent variable
- 8 A duration dependent variable
- Appendix
- Bibliography
- Author index
- Subject index
Summary
In the previous chapter we considered the Logit and Probit models for a binomial dependent variable. These models are suitable for modeling binomial choice decisions, where the two categories often correspond to no/yes situations. For example, an individual can decide whether or not to donate to charity, to respond to a direct mailing, or to buy brand A and not B. In many choice cases, one can choose between more than two categories. For example, households usually can choose between many brands within a product category. Or firms can decide not to renew, to renew, or to renew and upgrade a maintenance contract. In this chapter we deal with quantitative models for such discrete choices, where the number of choice options is more than two. The models assume that there is no ordering in these options, based on, say, perceived quality. In the next chapter we relax this assumption.
The outline of this chapter is as follows. In section 5.1 we discuss the representation and interpretation of several choice models: the Multinomial and Conditional Logit models, the Multinomial Probit model and the Nested Logit model. Admittedly, the technical level of this section is reasonably high. We do believe, however, that considerable detail is relevant, in particular because these models are very often used in empirical marketing research. Section 5.2 deals with estimation of the parameters of these models using the Maximum Likelihood method. In section 5.3 we discuss model evaluation, although it is worth mentioning here that not many such diagnostic measures are currently available. We consider variable selection procedures and a method to determine some optimal number of choice categories.
- Type
- Chapter
- Information
- Quantitative Models in Marketing Research , pp. 76 - 111Publisher: Cambridge University PressPrint publication year: 2001