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Misreporting and econometric modelling of zeros in survey data on social bads: An application to cannabis consumption

journal contribution
posted on 2024-11-02, 05:33 authored by William Greene, Mark Harris, Pratima SrivastavaPratima Srivastava, Xueyan Zhao
When modelling "social bads," such as illegal drug consumption, researchers are often faced with a dependent variable characterised by a large number of zero observations. Building on the recent literature on hurdle and double-hurdle models, we propose a double-inflated modelling framework, where the zero observations are allowed to come from the following: nonparticipants; participant misreporters (who have larger loss functions associated with a truthful response); and infrequent consumers. Due to our empirical application, the model is derived for the case of an ordered discrete-dependent variable. However, it is similarly possible to augment other such zero-inflated models (e.g., zero-inflated count models, and double-hurdle models for continuous variables). The model is then applied to a consumer choice problem of cannabis consumption. We estimate that 17% of the reported zeros in the cannabis survey are from individuals who misreport their participation, 11% from infrequent users, and only 72% from true nonparticipants.

Funding

Modelling health: Reporting behaviour and misclassification using survey data

Australian Research Council

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History

Journal

Health Economics

Volume

27

Issue

2

Start page

372

End page

389

Total pages

18

Publisher

John Wiley and Sons

Place published

United Kingdom

Language

English

Copyright

© 2017 The Authors Health Economics Published by John Wiley & Sons Ltd

Former Identifier

2006079137

Esploro creation date

2020-06-22

Fedora creation date

2017-10-25

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