Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions

The increase in the urban population poses challenges in managing services and safety from criminal activities. The concerned stakeholders intend to predict the time, location, number, and types of crimes to take suitable preventive measures. Accurate identification and prediction of crime hotspo...

詳細記述

書誌詳細
第一著者: Butt, Umair Muneer
フォーマット: 学位論文
言語:英語
出版事項: 2024
主題:
オンライン・アクセス:http://eprints.usm.my/62050/
Abstract Abstract here
_version_ 1855630467563257856
author Butt, Umair Muneer
author_facet Butt, Umair Muneer
author_sort Butt, Umair Muneer
description The increase in the urban population poses challenges in managing services and safety from criminal activities. The concerned stakeholders intend to predict the time, location, number, and types of crimes to take suitable preventive measures. Accurate identification and prediction of crime hotspots can significantly benefit the concerned stakeholders in preventing crime by creating accurate threat visualizations and allocating police resources efficiently. Several techniques have been proposed for crime prediction, but they are limited in accuracy and predicting crime according to crime type on an hourly, monthly, and seasonal basis. Crime hotspot detection approaches are primarily sensitive to initial parameter selection and finding clusters of varying shapes and densities. Similarly, existing Crime prediction approaches are limited in capturing non-stationary data and long-term dependencies by focusing on crime types. Thus, the crime detection and prediction mechanisms need improvement in the number of crimes, crime span, accuracy, and dense crime region and prediction. The core objective of this study is twofold. First, it proposes a crime hotspot detection model to improve accuracy using Hierarchical Density-Based Spatial Clustering of Applications with Noise (HDBSCAN) and its clustering ensemble to capture varying shapes and densities clusters and improve accuracy. HDBSCAN is used with varying parameter initialization in the generation mechanism under the cluster ensemble paradigm. Moreover, six different distance measures are used to ensure diversity. In addition, an evaluation function is proposed parameterized by silhouette score to select the stable clustering among a pool of clustering solutions to ensure quality.
first_indexed 2025-10-17T08:52:17Z
format Thesis
id usm-62050
institution Universiti Sains Malaysia
language English
last_indexed 2025-10-17T08:52:17Z
publishDate 2024
record_format EPrints
record_pdf Restricted
spelling usm-620502025-03-24T08:53:27Z http://eprints.usm.my/62050/ Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions Butt, Umair Muneer QA75.5-76.95 Electronic computers. Computer science The increase in the urban population poses challenges in managing services and safety from criminal activities. The concerned stakeholders intend to predict the time, location, number, and types of crimes to take suitable preventive measures. Accurate identification and prediction of crime hotspots can significantly benefit the concerned stakeholders in preventing crime by creating accurate threat visualizations and allocating police resources efficiently. Several techniques have been proposed for crime prediction, but they are limited in accuracy and predicting crime according to crime type on an hourly, monthly, and seasonal basis. Crime hotspot detection approaches are primarily sensitive to initial parameter selection and finding clusters of varying shapes and densities. Similarly, existing Crime prediction approaches are limited in capturing non-stationary data and long-term dependencies by focusing on crime types. Thus, the crime detection and prediction mechanisms need improvement in the number of crimes, crime span, accuracy, and dense crime region and prediction. The core objective of this study is twofold. First, it proposes a crime hotspot detection model to improve accuracy using Hierarchical Density-Based Spatial Clustering of Applications with Noise (HDBSCAN) and its clustering ensemble to capture varying shapes and densities clusters and improve accuracy. HDBSCAN is used with varying parameter initialization in the generation mechanism under the cluster ensemble paradigm. Moreover, six different distance measures are used to ensure diversity. In addition, an evaluation function is proposed parameterized by silhouette score to select the stable clustering among a pool of clustering solutions to ensure quality. 2024-06 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/62050/1/UMAIR%20MUNEER%20BUTT%20-%20TESIS%20cut.pdf Butt, Umair Muneer (2024) Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions. PhD thesis, Universiti Sains Malaysia.
spellingShingle QA75.5-76.95 Electronic computers. Computer science
Butt, Umair Muneer
Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions
thesis_level PhD
title Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions
title_full Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions
title_fullStr Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions
title_full_unstemmed Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions
title_short Clustering Ensemble And Hybrid Of Deep Learning For Spatio-Temporal Crime Predictions
title_sort clustering ensemble and hybrid of deep learning for spatio temporal crime predictions
topic QA75.5-76.95 Electronic computers. Computer science
url http://eprints.usm.my/62050/
work_keys_str_mv AT buttumairmuneer clusteringensembleandhybridofdeeplearningforspatiotemporalcrimepredictions