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On estimating the linear-by-linear parameter for ordinal log-linear models: a computational study

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posted on 2025-05-11, 09:08 authored by Eric J. Beh, Thomas B. Farver
Estimating linear-by-linear association has long been an important topic in the analysis of contingency tables. For ordinal variables, log-linear models may be used to detect the strength and magnitude of the association between such variables, and iterative procedures are traditionally used. Recently, studies have shown, by way of example, three non-iterative techniques can be used to quickly and accurately estimate the parameter. This paper provides a computational study of these procedures, and the results show that they are extremely accurate when compared with estimates obtained using Newton’s unidimensional method.

History

Journal title

ISRN Computational Mathematics

Publisher

Hindawi Publishing Corporation

Language

  • en, English

College/Research Centre

Faculty of Science and Information Technology

School

School of Mathematical and Physical Sciences

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