Publication
Title
Using Firth's method for model estimation and market segmentation based on choice data
Author
Abstract
Using maximum likelihood (ML) estimation for discrete choice modeling of small datasets causes two problems. The first problem is that the data may exhibit separation, in which case the ML estimates do not exist. Also, provided they exist, the ML estimates are biased. In this paper, we show how to adapt Firth's penalized likelihood estimation for use in discrete choice modeling. A powerful advantage of Firth's estimation is that, unlike ML estimation, it provides useful estimates in the case of data separation. For aggregates of six or more respondents, Firth estimates have negligible bias. For preference estimates on an individual level, Firth estimates show little bias as long as each person evaluates a sufficient number of choice sets. Additionally, Firth's individual-level estimation makes it possible to construct an empirical distribution of the respondents' preferences without imposing any a priori population distribution and to effectively predict people's choices and detect market segments. Segment recovery may even be better when individual-level estimates are obtained using Firth's method instead of hierarchical Bayes estimation under a normal prior. We base all findings on data from a stated choice study on various forms of employee compensation.
Language
English
Source (journal)
Journal of Choice Modelling. - -
Publication
Oxford : Elsevier sci ltd , 2019
ISSN
1755-5345
DOI
10.1016/J.JOCM.2018.12.002
Volume/pages
31 (2019) , p. 1-21
ISI
000469382700001
Full text (Publisher's DOI)
Full text (open access)
Full text (publisher's version - intranet only)
UAntwerpen
Faculty/Department
Research group
Publication type
Subject
Affiliation
Publications with a UAntwerp address
External links
Web of Science
Record
Identifier
Creation 01.03.2019
Last edited 24.11.2024
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