Factor analysis for paired ranked data with application on parent-child value orientation preference data
Factor analysis for paired ranked data with application on parent-child value orientation preference data
Ranking data appear in everyday life and arise in many fields of study such as marketing, psychology and politics. Very often, the key objective of analyzing and modeling ranking data is to identify underlying factors that affect the individuals' choice behavior. Factor analysis for ranking data is one of the most widely used methods to tackle the aforementioned problem. Recently, Yu et al. [J R Stat Soc Ser A (Statistics in Society) 168:583-597, 2005] have developed factor models for ranked data in which each individual is asked to rank a set of items. However, paired ranked data may arise when the same set of items are ranked by a pair of judges such as a couple in a family. This paper extended the factor model to accommodate such paired ranked data. The Monte Carlo expectation-maximization algorithm was used for parameter estimation, at which the E-step is implemented via the Gibbs Sampler. For model assessment and selection, a tailor-made method called the bootstrap predictive checks approach was proposed. Simulation studies were conducted to illustrate the proposed estimation and model selection method. The proposed method was applied to analyze a parent-child partially ranked data collected from a value priorities survey carried out in the United States.
GHK method, Monte Carlo expectation-maximization, Predictive Checks, Ranking data
1915-1945
Yu, Philip L.H.
67db467c-4f19-4c55-8ad9-0c13faeb15d6
Lee, Paul H.
02620eab-ae7f-4a1c-bad1-8a50e7e48951
Wan, W. M.
fb0d8cfa-9864-4bd7-b9cd-26cb5129da31
October 2013
Yu, Philip L.H.
67db467c-4f19-4c55-8ad9-0c13faeb15d6
Lee, Paul H.
02620eab-ae7f-4a1c-bad1-8a50e7e48951
Wan, W. M.
fb0d8cfa-9864-4bd7-b9cd-26cb5129da31
Yu, Philip L.H., Lee, Paul H. and Wan, W. M.
(2013)
Factor analysis for paired ranked data with application on parent-child value orientation preference data.
Computational Statistics, 28 (5), .
(doi:10.1007/s00180-012-0387-0).
Abstract
Ranking data appear in everyday life and arise in many fields of study such as marketing, psychology and politics. Very often, the key objective of analyzing and modeling ranking data is to identify underlying factors that affect the individuals' choice behavior. Factor analysis for ranking data is one of the most widely used methods to tackle the aforementioned problem. Recently, Yu et al. [J R Stat Soc Ser A (Statistics in Society) 168:583-597, 2005] have developed factor models for ranked data in which each individual is asked to rank a set of items. However, paired ranked data may arise when the same set of items are ranked by a pair of judges such as a couple in a family. This paper extended the factor model to accommodate such paired ranked data. The Monte Carlo expectation-maximization algorithm was used for parameter estimation, at which the E-step is implemented via the Gibbs Sampler. For model assessment and selection, a tailor-made method called the bootstrap predictive checks approach was proposed. Simulation studies were conducted to illustrate the proposed estimation and model selection method. The proposed method was applied to analyze a parent-child partially ranked data collected from a value priorities survey carried out in the United States.
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Published date: October 2013
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Funding Information:
The research of Philip L. H. Yu was supported by a grant from the Research Grants Council of the Hong Kong Special Administrative Region, China (Project No. HKU 7473/05H). We thank the two anonymous referees for their helpful suggestions for improving this article.
Keywords:
GHK method, Monte Carlo expectation-maximization, Predictive Checks, Ranking data
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Local EPrints ID: 480704
URI: http://eprints.soton.ac.uk/id/eprint/480704
ISSN: 0943-4062
PURE UUID: 004cbfb8-2021-426f-8a13-d09bfd433348
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Date deposited: 08 Aug 2023 16:53
Last modified: 18 Mar 2024 04:09
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Contributors
Author:
Philip L.H. Yu
Author:
Paul H. Lee
Author:
W. M. Wan
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