2023-02-05T12:18:19Zhttps://keep.lib.asu.edu/oai/requestoai:keep.lib.asu.edu:node-1501352021-08-30T18:51:16Zoai_pmh:alloai_pmh:repo_items150135
https://hdl.handle.net/2286/R.I.9431
http://rightsstatements.org/vocab/InC/1.0/
All Rights Reserved
2011
xxviii, 189 p. : ill
Doctoral Dissertation
Academic theses
Text
eng
Milovanovic, Jelena
Young, Dennis
Reiser, Mark R.
Wilson, Jeffrey
Eubank, Randall
Yang, Yan
Arizona State University
Partial requirement for: Ph.D., Arizona State University, 2011
Includes bibliographical references (p
Field of study: Mathematics
It is common in the analysis of data to provide a goodness-of-fit test to assess the performance of a model. In the analysis of contingency tables, goodness-of-fit statistics are frequently employed when modeling social science, educational or psychological data where the interest is often directed at investigating the association among multi-categorical variables. Pearson's chi-squared statistic is well-known in goodness-of-fit testing, but it is sometimes considered to produce an omnibus test as it gives little guidance to the source of poor fit once the null hypothesis is rejected. However, its components can provide powerful directional tests. In this dissertation, orthogonal components are used to develop goodness-of-fit tests for models fit to the counts obtained from the cross-classification of multi-category dependent variables. Ordinal categories are assumed. Orthogonal components defined on marginals are obtained when analyzing multi-dimensional contingency tables through the use of the QR decomposition. A subset of these orthogonal components can be used to construct limited-information tests that allow one to identify the source of lack-of-fit and provide an increase in power compared to Pearson's test. These tests can address the adverse effects presented when data are sparse. The tests rely on the set of first- and second-order marginals jointly, the set of second-order marginals only, and the random forest method, a popular algorithm for modeling large complex data sets. The performance of these tests is compared to the likelihood ratio test as well as to tests based on orthogonal polynomial components. The derived goodness-of-fit tests are evaluated with studies for detecting two- and three-way associations that are not accounted for by a categorical variable factor model with a single latent variable. In addition the tests are used to investigate the case when the model misspecification involves parameter constraints for large and sparse contingency tables. The methodology proposed here is applied to data from the 38th round of the State Survey conducted by the Institute for Public Policy and Michigan State University Social Research (2005) . The results illustrate the use of the proposed techniques in the context of a sparse data set.
Statistics
Chi-Square goodness-of-fit tests
decomposition of chi-square statistic
Orthogonal components of chi-square statistic
Goodness-of-fit tests--Evaluation.
Goodness-of-fit tests
Chi-square orthogonal components for assessing goodness-of-fit of multidimensional multinomial data