The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi

Having a significant amount of data is not useful unless the data can be processed for extracting knowledge and information. One of the elementary steps in crunching data is to break it down into groups. When the data is small and collected in a controlled manner, and when the training data is appro...

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Main Author: Ali Seyed , Shirkhorshidi
Format: Thesis
Published: 2020
Subjects:
Online Access:http://studentsrepo.um.edu.my/14652/
http://studentsrepo.um.edu.my/14652/1/Ali_Seyed.pdf
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author Ali Seyed , Shirkhorshidi
author_facet Ali Seyed , Shirkhorshidi
author_sort Ali Seyed , Shirkhorshidi
building UM Research Repository
collection Online Access
description Having a significant amount of data is not useful unless the data can be processed for extracting knowledge and information. One of the elementary steps in crunching data is to break it down into groups. When the data is small and collected in a controlled manner, and when the training data is appropriately labelled, the trivial approach is to use supervised learning to perform the grouping. Supervised methods need training data and information about groups beforehand; however, in the current reality, with an avalanche of data, this information is not available. Nevertheless, the need for grouping data remains. Clustering, as an unsupervised method, helps in these situations to group the data. However, unsupervised methods are usually less accurate than their supervised counterparts. To solve this drawback, unsupervised methods are often used as a pre-processing step, along with human judgment, to prune the data to create a reliable training set for the supervised process. One reason that clustering approaches do not yield desirable accuracy is that they will attempt to perform the procedure on all data, which may contain noise or outliers, and they do not have any mechanism by which to set aside the problematic data. Pulse-shape discrimination (PSD) for neutron and gamma-ray pulses that is addressed in this research is one example of a real-world case study that faces the same issues. Although the data utilised for this study is from a liquid scintillator, it can be applied to other signal detectors as well. Aside from this particular dataset, the proposed approach has been applied to a set of publicly available multivariate and time series datasets to prove the performance of the presented approach through an exploratory study. The evolving fuzzy clustering approach (EFCA) proposed in this study utilises a fuzzy membership matrix in fuzzy clustering to propose a new approach for clustering that embeds a heuristic post-pruning solution to address the aforementioned drawback. The method is an EFCA that attempts to find clusters of similar shapes with better accuracy. It introduces an approach for post-pruning that is examined not only on neutron and gamma-ray discrimination but also on various datasets. The outcomes of the proposed method are evaluated against the traditional fuzzy C-means method and another well-known crisp clustering method, namely, K-means. For neutron and gamma-ray discrimination, the EFCA improved the Rand index (RI) accuracy by almost 8%. For other multivariate and time series datasets utilised in this study, results demonstrate the achievement of significant accuracy improvements for some of these datasets after heuristic post-pruning, resulting in 100% RI accuracy for some of them.
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spelling um-146522023-07-24T20:10:51Z The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi Ali Seyed , Shirkhorshidi QA75 Electronic computers. Computer science QA76 Computer software Having a significant amount of data is not useful unless the data can be processed for extracting knowledge and information. One of the elementary steps in crunching data is to break it down into groups. When the data is small and collected in a controlled manner, and when the training data is appropriately labelled, the trivial approach is to use supervised learning to perform the grouping. Supervised methods need training data and information about groups beforehand; however, in the current reality, with an avalanche of data, this information is not available. Nevertheless, the need for grouping data remains. Clustering, as an unsupervised method, helps in these situations to group the data. However, unsupervised methods are usually less accurate than their supervised counterparts. To solve this drawback, unsupervised methods are often used as a pre-processing step, along with human judgment, to prune the data to create a reliable training set for the supervised process. One reason that clustering approaches do not yield desirable accuracy is that they will attempt to perform the procedure on all data, which may contain noise or outliers, and they do not have any mechanism by which to set aside the problematic data. Pulse-shape discrimination (PSD) for neutron and gamma-ray pulses that is addressed in this research is one example of a real-world case study that faces the same issues. Although the data utilised for this study is from a liquid scintillator, it can be applied to other signal detectors as well. Aside from this particular dataset, the proposed approach has been applied to a set of publicly available multivariate and time series datasets to prove the performance of the presented approach through an exploratory study. The evolving fuzzy clustering approach (EFCA) proposed in this study utilises a fuzzy membership matrix in fuzzy clustering to propose a new approach for clustering that embeds a heuristic post-pruning solution to address the aforementioned drawback. The method is an EFCA that attempts to find clusters of similar shapes with better accuracy. It introduces an approach for post-pruning that is examined not only on neutron and gamma-ray discrimination but also on various datasets. The outcomes of the proposed method are evaluated against the traditional fuzzy C-means method and another well-known crisp clustering method, namely, K-means. For neutron and gamma-ray discrimination, the EFCA improved the Rand index (RI) accuracy by almost 8%. For other multivariate and time series datasets utilised in this study, results demonstrate the achievement of significant accuracy improvements for some of these datasets after heuristic post-pruning, resulting in 100% RI accuracy for some of them. 2020 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/14652/1/Ali_Seyed.pdf Ali Seyed , Shirkhorshidi (2020) The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi. PhD thesis, Universiti Malaya. http://studentsrepo.um.edu.my/14652/
spellingShingle QA75 Electronic computers. Computer science
QA76 Computer software
Ali Seyed , Shirkhorshidi
The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi
title The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi
title_full The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi
title_fullStr The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi
title_full_unstemmed The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi
title_short The evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / Ali Seyed Shirkhorshidi
title_sort evolving fuzzy clustering approach for discriminating neutron and gamma-ray pulses / ali seyed shirkhorshidi
topic QA75 Electronic computers. Computer science
QA76 Computer software
url http://studentsrepo.um.edu.my/14652/
http://studentsrepo.um.edu.my/14652/1/Ali_Seyed.pdf