dc.contributor.advisor | Samruam Chongcharoen | th |
dc.contributor.author | Poompong Kaewumpai | th |
dc.date.accessioned | 2022-05-18T05:40:07Z | |
dc.date.available | 2022-05-18T05:40:07Z | |
dc.date.issued | 2017 | th |
dc.identifier.other | b201075 | th |
dc.identifier.uri | https://repository.nida.ac.th/handle/662723737/5784 | th |
dc.description | Thesis (Ph.D. (Statistics))--National Institute of Development Administration, 2017 | th |
dc.description.abstract | In this dissertation, a new test statistic for testing for a block diagonal
covariance matrix structure with a multivariate normal population where the number
of variables
p
exceeds the number of observations
n
is proposed. Whereas classical
approaches such as the likelihood ratio test cannot be applied when
p n , the
proposed test statistic is based on the ratio of the estimators of
2
tr
and
2
trD
, where
is the population covariance matrix and
D
is the population covariance matrix
under the null hypothesis. Furthermore, the asymptotic distribution of the proposed
test statistic under the null hypothesis is standard normal. The performance of
proposed test statistic was assessed using a simulation study, in which empirical type I
error values and the empirical power were used to show its performance. The
empirical type I error values were close to the significance level and the empirical
power values were closed to 1 in all cases. Moreover, the performance of the proposed
test was compared with another previously reported test statistic, and the empirical
power values of the proposed test statistic were shown to be higher than those of the
comparative test statistic in some cases | th |
dc.description.abstract | Two new discriminant methods for high-dimensional data under the
multivariate normal population with a block diagonal covariance matrix structure are
also proposed. For the first method, the sample covariance matrix is approximated as a singular matrix based on the idea of reducing the dimensionality of the observations
and using a well-conditioned covariance matrix. For the second method, a sample
block diagonal covariance matrix is used instead. The performance of these two
methods were compared with some of the previously reported methods via a
simulation study, the results of which show that both proposed methods outperformed
the other comparative methods under various conditions. In addition, the proposed test
for testing block diagonal covariance matrix structure and the two new proposed
methods for discriminant analysis were applied to a real-life dataset | th |
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Previous issue date: 2017 | th |
dc.format.extent | 155 leaves | th |
dc.format.mimetype | application/pdf | th |
dc.language.iso | eng | th |
dc.publisher | National Institute of Development | th |
dc.rights | This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License. | th |
dc.subject | Covariance matrix test | th |
dc.subject | High dimensionality | th |
dc.title | A block diagonal covariance matrix test and discriminant analysis of high-dimensional data | th |
dc.type | Text | th |
mods.genre | Dissertation | th |
mods.physicalLocation | National Institute of Development Administration. Library and Information Center | th |
thesis.degree.name | Doctor of Philosophy | th |
thesis.degree.level | Doctoral | th |
thesis.degree.grantor | National Institute of Development Administration | th |
thesis.degree.department | School of Applied Statistics | th |
dc.identifier.doi | 10.14457/NIDA.the.2017.48 | |