Three Contributions to Latent Variable Modeling

Three Contributions to Latent Variable Modeli ...
Xiang Liu, Xiang Liu
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Last edited by MARC Bot
December 17, 2022 | History

Three Contributions to Latent Variable Modeling

The dissertation includes three papers that address some theoretical and technical issues of latent variable models. The first paper extends the uniformly most powerful test approach for testing person parameter in IRT to the two-parameter logistic models. In addition, an efficient branch-and-bound algorithm for computing the exact p-value is proposed. The second paper proposes a reparameterization of the log-linear CDM model. A Gibbs sampler is developed for posterior computation. The third paper proposes an ordered latent class model with infinite classes using a stochastic process prior. Furthermore, a nonparametric IRT application is also discussed.

Publish Date
Language
English

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Edition Availability
Cover of: Three Contributions to Latent Variable Modeling
Three Contributions to Latent Variable Modeling
2019, [publisher not identified]
in English

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Book Details


Edition Notes

Department: Measurement and Evaluation.

Thesis advisor: Lawrence DeCarlo.

Thesis (Ph.D.)--Columbia University, 2019.

Published in
[New York, N.Y.?]

The Physical Object

Pagination
1 online resource.

ID Numbers

Open Library
OL44319370M
OCLC/WorldCat
1083235712

Source records

marc_columbia MARC record

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December 17, 2022 Created by MARC Bot Imported from marc_columbia MARC record