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2017 | OriginalPaper | Chapter

6. Structural Models in Marketing: Consumer Demand and Search

Author : Pradeep Chintagunta

Published in: Handbook of Marketing Decision Models

Publisher: Springer International Publishing

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Abstract

As marketers move away from being focused only on “local” effects of marketing activities, e.g., what happens when I change price by 1%, in order to better understand the consequences of broader shifts in policy, the need for structural models has also grown. In this chapter, I will focus on a small subset of such “structural models” and provide brief discussions of what we mean by structural models, why we need them, the typical classes of structural models that we see being used by marketers these days, along with some examples of these models. My objective is not to provide a comprehensive review. Such an endeavor is far beyond my current purview. Rather, I would like to provide a basic discussion of structural models in the context of the marketing literature. In particular, to keep the discussion focused, I will limit myself largely to models of demand rather than models of firm behavior.

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Appendix
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Footnotes
1
A point to emphasize here relates to causality. If the researcher is interested only in establishing causality then a structural model per se may not be required (see e.g., Goldfarb and Tucker 2014).
 
2
The source of measurement error may be clear or unclear, depending on the researcher’s understanding of the measurement technology. For example, if measurement comes from an unbiased survey and the researcher knows the sample size, we might be able to specify the distribution of measurement error exactly.
 
3
Such products are referred to as “experience goods.” These are products or services where product characteristics are difficult to observe in advance but can be ascertained upon consumption or usage “experience.”
 
4
Ultimately, structural empirical parameters are typically identified both by (1) functional form assumptions and (2) data. As researchers we should be concerned about identification that comes largely from the former.
 
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Metadata
Title
Structural Models in Marketing: Consumer Demand and Search
Author
Pradeep Chintagunta
Copyright Year
2017
DOI
https://doi.org/10.1007/978-3-319-56941-3_6

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