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Parisa Torkaman

Parisa Torkaman

Academic rank: Instructor
ORCID:
Education: MSc.
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HIndex:
Faculty: Mathematical Sciences and Statistics
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Research

Title
Optimal Model Selection for Truncated Data among Non-Nested Competitive Models
Type
JournalPaper
Keywords
Kullback–Leibler information criteria, non-nested competitive model, truncated data
Year
2018
Journal The Journal of Modern Applied Statistical Methods
DOI
Researchers Parisa Torkaman

Abstract

Selecting a model for incomplete data is an important issue. Truncated data is an example of incomplete data, which sometimes occurs due to inherent limitations. The maximum likelihood estimator features and its asymptotic distribution are studied, and a test statistic among non-nested competitive model of incomplete data is presented, which can select an appropriate model close to the true model. This close-to-true model under the null hypothesis of the equivalency of two competitive models against alternative hypothesis is selected.