Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan

This study is on circular statistics that is also known as directional statistics. Directional statistics is a branch of statistics which deal with the data in angle form in which the method of analysis is different from linear data. For example, the distribution analogues to the normal distributio...

Full description

Saved in:
Bibliographic Details
Main Author: Hassan, Siti Fatimah
Format: Thesis
Published: 2015
Subjects:
Online Access:http://studentsrepo.um.edu.my/5944/1/Siti_Fatimah_Hassan_HHC100006.pdf
http://studentsrepo.um.edu.my/5944/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.um.stud.5944
record_format eprints
spelling my.um.stud.59442015-10-07T04:17:10Z Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan Hassan, Siti Fatimah HA Statistics This study is on circular statistics that is also known as directional statistics. Directional statistics is a branch of statistics which deal with the data in angle form in which the method of analysis is different from linear data. For example, the distribution analogues to the normal distribution in linear data is known as circular normal distribution. This study comprises of four parts. The first part of the study focuses on the efficient approximation for the concentration parameter in von Mises distribution. Here, a new method of approximating the concentration parameter is proposed, and the performance of the proposed method is studied via simulation study. The second part of the study is on the confidence intervals (CI) for the concentration parameter in von Mises distribution. Several methods in constructing the CI for the concentration parameter are proposed including CI based on circular population, CI based on the asymptotic distribution of ˆ , CI based on the distribution of 휃 and 푅 and also CI based on bootstrap-t method. All proposed methods are validated via simulation study and the performance indicator such as an expected length and its coverage probability are evaluated. The third part of the study is on the derivation of the circular distance for circular data. From this derivation, we construct the CI for the concentration parameter. Three different methods will be considered in proposing the new CI including mean, median and percentile. The simulation studies carried out to assess the performance of each proposed method. The final part of this study is an analysis of missing values for circular variables. Missing values is a common problem that occurs in data collection. By ignoring the existence of missing values, leads to the biasness and lack of efficiency of a statistics. In this study, three imputation methods are considered namely expectation-maximization (EM) algorithm and data augmentation (DA) algorithm. All proposed methods are compared to the conventional methods. The analyses are conducted by doing the simulation studies by varying the value of the concentration parameter. All the proposed methods from this study are illustrated using the real data consisting of data in angle form found in the literature. 2015 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/5944/1/Siti_Fatimah_Hassan_HHC100006.pdf Hassan, Siti Fatimah (2015) Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan. PhD thesis, University of Malaya. http://studentsrepo.um.edu.my/5944/
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Student Repository
url_provider http://studentsrepo.um.edu.my/
topic HA Statistics
spellingShingle HA Statistics
Hassan, Siti Fatimah
Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan
description This study is on circular statistics that is also known as directional statistics. Directional statistics is a branch of statistics which deal with the data in angle form in which the method of analysis is different from linear data. For example, the distribution analogues to the normal distribution in linear data is known as circular normal distribution. This study comprises of four parts. The first part of the study focuses on the efficient approximation for the concentration parameter in von Mises distribution. Here, a new method of approximating the concentration parameter is proposed, and the performance of the proposed method is studied via simulation study. The second part of the study is on the confidence intervals (CI) for the concentration parameter in von Mises distribution. Several methods in constructing the CI for the concentration parameter are proposed including CI based on circular population, CI based on the asymptotic distribution of ˆ , CI based on the distribution of 휃 and 푅 and also CI based on bootstrap-t method. All proposed methods are validated via simulation study and the performance indicator such as an expected length and its coverage probability are evaluated. The third part of the study is on the derivation of the circular distance for circular data. From this derivation, we construct the CI for the concentration parameter. Three different methods will be considered in proposing the new CI including mean, median and percentile. The simulation studies carried out to assess the performance of each proposed method. The final part of this study is an analysis of missing values for circular variables. Missing values is a common problem that occurs in data collection. By ignoring the existence of missing values, leads to the biasness and lack of efficiency of a statistics. In this study, three imputation methods are considered namely expectation-maximization (EM) algorithm and data augmentation (DA) algorithm. All proposed methods are compared to the conventional methods. The analyses are conducted by doing the simulation studies by varying the value of the concentration parameter. All the proposed methods from this study are illustrated using the real data consisting of data in angle form found in the literature.
format Thesis
author Hassan, Siti Fatimah
author_facet Hassan, Siti Fatimah
author_sort Hassan, Siti Fatimah
title Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan
title_short Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan
title_full Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan
title_fullStr Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan
title_full_unstemmed Confidence intervals (CI) for concentration parameter in von Mises distribution and analysis of missing values for circular data / Siti Fatimah binti Hassan
title_sort confidence intervals (ci) for concentration parameter in von mises distribution and analysis of missing values for circular data / siti fatimah binti hassan
publishDate 2015
url http://studentsrepo.um.edu.my/5944/1/Siti_Fatimah_Hassan_HHC100006.pdf
http://studentsrepo.um.edu.my/5944/
_version_ 1738505853982474240
score 13.159267