Crime pattern recognition based on high-performance computing

Eissa, Ahmed, Cheng, Xiaochun ORCID: https://orcid.org/0000-0003-0371-9646 and Petridis, Miltos (2018) Crime pattern recognition based on high-performance computing. In: 2017 International Conference Next Generation Community Policing, 25-27 Oct 2017, Heraklion, Crete, Greece. . [Conference or Workshop Item]

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Abstract

This paper reported research results on capturing the semantic similarity of two crimes categories based on the crime description. This study is based on the police data, collected from different sources. The proposed solution can capture the semantic similarity distance between the crimes from the crime database in order to put the selected crime in the right category. We focussed on the crime features and the description of each crime. We will also implement one of Deep Learning algorithms the Recurrent Neural Networks (RNN) algorithm, on top of a labelled crime data that is captured from online police data source. The crime data are labelled using a previous solution presented in a previous work in order to prepare the data to be introduced to RNN algorithm. The proposed solution can capture the semantic similarity distance between the crimes from the crime database in order to put the selected crime in the right category. We focussed on the crime features and the description of each crime. In elaborated experiments, the researchers built tools based on RNN as well as proposed algorithm from previous research, which implements RNN on a top layer and Natural Language Processing based Text Mining on the lower layer. The experiment results so that there is a speed up in RNN training time with an increasing number of threads and CPU cores used. In an elaborated experiments, the researchers built tools based on a proposed algorithm in this research, which implements Natural Language Processing based Text Mining techniques.

Item Type: Conference or Workshop Item (Paper)
Research Areas: A. > School of Science and Technology > Computer Science > Artificial Intelligence group
Item ID: 23159
Useful Links:
Depositing User: Ahmed Eissa
Date Deposited: 11 Dec 2017 14:07
Last Modified: 23 Nov 2019 15:51
URI: https://eprints.mdx.ac.uk/id/eprint/23159

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