Y-type Random 2-satisfiability In Discrete Hopfield Neural Network

In the current development of Artificial Intelligence, Satisfiability plays a crucial role as a symbolic language of Artificial Intelligence for the transparency of black box models. However, the main problem of existing Satisfiability is the lack of combined logical rule, so the benefits of combine...

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Main Author: Guo, Yueling
Format: Thesis
Language:English
Published: 2024
Subjects:
Online Access:http://eprints.usm.my/62006/
http://eprints.usm.my/62006/1/GUO%20YUELING%20-%20TESIS24.pdf
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author Guo, Yueling
author_facet Guo, Yueling
author_sort Guo, Yueling
building USM Institutional Repository
collection Online Access
description In the current development of Artificial Intelligence, Satisfiability plays a crucial role as a symbolic language of Artificial Intelligence for the transparency of black box models. However, the main problem of existing Satisfiability is the lack of combined logical rule, so the benefits of combined logical rule have not yet been investigated. The rule namely Y-Type Random 2-Satisfiability is proposed by combining the systematic and non-systematic logical rule. Next, the newly proposed logical rule as the symbolic instruction was implemented into the Discrete Hopfield Neural Network to govern the neurons of the network. Experimental results demonstrated the compatibility of the proposed logical rule and the Discrete Hopfield Neural Network. Additionally, the proposed Hybrid Differential Evolution Algorithm was implemented into the training phase to ensure that the cost function of the Discrete Hopfield Neural Network is minimized. During the retrieval phase, a new activation function and Swarm Mutation were proposed to ensure the diversity of the neuron states. The proposed algorithm and mutation mechanism showed optimal performances as compared to the existing algorithms. Finally, a new logic mining model namely Y-Type Random 2-Satisfiability Reverse Analysis was proposed, which showed optimal performances in terms of several metrics as compared to the existing classification models. The developed logic mining will be used to analyze the Alzheimer's Disease Neuroimaging Initiative dataset.
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institution Universiti Sains Malaysia
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language English
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spelling usm-620062025-03-07T08:12:43Z http://eprints.usm.my/62006/ Y-type Random 2-satisfiability In Discrete Hopfield Neural Network Guo, Yueling QA1 Mathematics (General) In the current development of Artificial Intelligence, Satisfiability plays a crucial role as a symbolic language of Artificial Intelligence for the transparency of black box models. However, the main problem of existing Satisfiability is the lack of combined logical rule, so the benefits of combined logical rule have not yet been investigated. The rule namely Y-Type Random 2-Satisfiability is proposed by combining the systematic and non-systematic logical rule. Next, the newly proposed logical rule as the symbolic instruction was implemented into the Discrete Hopfield Neural Network to govern the neurons of the network. Experimental results demonstrated the compatibility of the proposed logical rule and the Discrete Hopfield Neural Network. Additionally, the proposed Hybrid Differential Evolution Algorithm was implemented into the training phase to ensure that the cost function of the Discrete Hopfield Neural Network is minimized. During the retrieval phase, a new activation function and Swarm Mutation were proposed to ensure the diversity of the neuron states. The proposed algorithm and mutation mechanism showed optimal performances as compared to the existing algorithms. Finally, a new logic mining model namely Y-Type Random 2-Satisfiability Reverse Analysis was proposed, which showed optimal performances in terms of several metrics as compared to the existing classification models. The developed logic mining will be used to analyze the Alzheimer's Disease Neuroimaging Initiative dataset. 2024-09 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/62006/1/GUO%20YUELING%20-%20TESIS24.pdf Guo, Yueling (2024) Y-type Random 2-satisfiability In Discrete Hopfield Neural Network. PhD thesis, Universiti Sains Malaysia.
spellingShingle QA1 Mathematics (General)
Guo, Yueling
Y-type Random 2-satisfiability In Discrete Hopfield Neural Network
title Y-type Random 2-satisfiability In Discrete Hopfield Neural Network
title_full Y-type Random 2-satisfiability In Discrete Hopfield Neural Network
title_fullStr Y-type Random 2-satisfiability In Discrete Hopfield Neural Network
title_full_unstemmed Y-type Random 2-satisfiability In Discrete Hopfield Neural Network
title_short Y-type Random 2-satisfiability In Discrete Hopfield Neural Network
title_sort y-type random 2-satisfiability in discrete hopfield neural network
topic QA1 Mathematics (General)
url http://eprints.usm.my/62006/
http://eprints.usm.my/62006/1/GUO%20YUELING%20-%20TESIS24.pdf