Transfer of Variables between Different Data Sets, or Taking ‘‘Previous Research’’ Seriously

Todosijević, Bojan (2012) Transfer of Variables between Different Data Sets, or Taking ‘‘Previous Research’’ Seriously. Bulletin of Sociological Methodology, 113 (1). pp. 20-39. ISSN 2070-2779

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Abstract

Given two methodologically similar surveys, a question not asked in one survey could be seen as a special case of the missing data problem. Hence, the transfer of data across data sets (‘‘statistical matching’’ or ‘‘data fusion’’) could be achieved applying the procedures for Bayesian multiple imputation of missing values. To tackle the problem of conditional independence, which this approach creates, a simulated data set could serve as the ‘‘third data set’’ that conveys information about the relationship between variables not commonly observed. This paper presents a model for transferring data between different data sets based on multiple imputation (MI) approach. The results show that statistical matching based on MI principles can be a useful research tool. The entire enterprise is interpreted in the sense of taking the ‘‘previous research’’ into account seriously.

Item Type: Article
Uncontrolled Keywords: statistical matching, multiple imputation, dutch election study
Institutional centre: Centre for political research and public opinion
Depositing User: Srđan Jurlina
Date Deposited: 09 Nov 2023 11:48
Last Modified: 09 Nov 2023 14:19
URI: http://iriss.idn.org.rs/id/eprint/1498

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