Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection

In the perspective of logic mining, the attribute selection, and the objective function of the best logic is the two main factors that identifies the effectiveness of our proposed logic mining model. The non-significant attributes selected will cause the Discrete Hopfield Neural Network to learned a...

Full description

Bibliographic Details
Main Authors: Nur 'Afifah Rusdi, Mohd Shareduwan Mohd Kasihmuddin, Nurul Atiqah Romli, Gaeithry Manoharam, Mohd. Asyraf Mansor
Format: Article
Language:English
Published: Elsevier 2023-05-01
Series:Journal of King Saud University: Computer and Information Sciences
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1319157823001003
_version_ 1797817507674849280
author Nur 'Afifah Rusdi
Mohd Shareduwan Mohd Kasihmuddin
Nurul Atiqah Romli
Gaeithry Manoharam
Mohd. Asyraf Mansor
author_facet Nur 'Afifah Rusdi
Mohd Shareduwan Mohd Kasihmuddin
Nurul Atiqah Romli
Gaeithry Manoharam
Mohd. Asyraf Mansor
author_sort Nur 'Afifah Rusdi
collection DOAJ
description In the perspective of logic mining, the attribute selection, and the objective function of the best logic is the two main factors that identifies the effectiveness of our proposed logic mining model. The non-significant attributes selected will cause the Discrete Hopfield Neural Network to learned and obtain wrong synaptic weight. Thus, this will result to suboptimal solution. Although we might select the correct attributes, the conventional objective function of the best logic limits the search space to obtained more induced logic during the retrieval phase of Discrete Hopfield Neural Network. Therefore, this paper proposes a novel logic mining by integrating statistical analysis in the pre-processing phase to ensure that only optimal attributes will be selected. Supervised learning approach via correlation analysis is implemented for the purpose of attribute selection. Additionally, permutation operator serves to enhance the probability of the higher order satisfiability logical rule to be satisfied by having finite arrangement of attributes. During the learning phase, we proposed multi-unit Discrete Hopfield Neural Network to enhance the search space which leads to optimal solution. The efficiency of the proposed model is tested on 15 real-life datasets by comparing the performance of the model with existing works in logic mining using five performance metrics including accuracy, sensitivity, precision, Matthews Correlation Coefficient (MCC) and F1 Score. According to the results, the proposed model has its own strength by dominating most of the average rank of the performance metrics. This demonstrates that the proposed model can differentiate across all domains in the confusion matrix. Additionally, the p-value obtained based on the five-performance metrics indicate that there is a significantly difference between the proposed model and all existing works since the value obtained for accuracy (0.000), sensitivity (0.001), precision (0.000), F1 score (0.000) and MCC (0.000) are less than 0.05. This finding statistically prove that the proposed model is more effective compared with existing works in logic mining.
first_indexed 2024-03-13T08:54:29Z
format Article
id doaj.art-90a5c00c71244e00ba3a39ef80f5cc66
institution Directory Open Access Journal
issn 1319-1578
language English
last_indexed 2024-03-13T08:54:29Z
publishDate 2023-05-01
publisher Elsevier
record_format Article
series Journal of King Saud University: Computer and Information Sciences
spelling doaj.art-90a5c00c71244e00ba3a39ef80f5cc662023-05-29T04:03:47ZengElsevierJournal of King Saud University: Computer and Information Sciences1319-15782023-05-01355101554Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selectionNur 'Afifah Rusdi0Mohd Shareduwan Mohd Kasihmuddin1Nurul Atiqah Romli2Gaeithry Manoharam3Mohd. Asyraf Mansor4School of Mathematical Sciences, Universiti Sains Malaysia, Penang 11800, Malaysia; Institute of Engineering Mathematics, Universiti Malaysia Perlis, Kampus Pauh Puta, 02600 Arau, Perlis, MalaysiaSchool of Mathematical Sciences, Universiti Sains Malaysia, Penang 11800, Malaysia; Corresponding author.School of Mathematical Sciences, Universiti Sains Malaysia, Penang 11800, MalaysiaSchool of Mathematical Sciences, Universiti Sains Malaysia, Penang 11800, MalaysiaSchool of Distance Education, Universiti Sains Malaysia, Penang 11800, MalaysiaIn the perspective of logic mining, the attribute selection, and the objective function of the best logic is the two main factors that identifies the effectiveness of our proposed logic mining model. The non-significant attributes selected will cause the Discrete Hopfield Neural Network to learned and obtain wrong synaptic weight. Thus, this will result to suboptimal solution. Although we might select the correct attributes, the conventional objective function of the best logic limits the search space to obtained more induced logic during the retrieval phase of Discrete Hopfield Neural Network. Therefore, this paper proposes a novel logic mining by integrating statistical analysis in the pre-processing phase to ensure that only optimal attributes will be selected. Supervised learning approach via correlation analysis is implemented for the purpose of attribute selection. Additionally, permutation operator serves to enhance the probability of the higher order satisfiability logical rule to be satisfied by having finite arrangement of attributes. During the learning phase, we proposed multi-unit Discrete Hopfield Neural Network to enhance the search space which leads to optimal solution. The efficiency of the proposed model is tested on 15 real-life datasets by comparing the performance of the model with existing works in logic mining using five performance metrics including accuracy, sensitivity, precision, Matthews Correlation Coefficient (MCC) and F1 Score. According to the results, the proposed model has its own strength by dominating most of the average rank of the performance metrics. This demonstrates that the proposed model can differentiate across all domains in the confusion matrix. Additionally, the p-value obtained based on the five-performance metrics indicate that there is a significantly difference between the proposed model and all existing works since the value obtained for accuracy (0.000), sensitivity (0.001), precision (0.000), F1 score (0.000) and MCC (0.000) are less than 0.05. This finding statistically prove that the proposed model is more effective compared with existing works in logic mining.http://www.sciencedirect.com/science/article/pii/S1319157823001003Multi-unit Discrete Hopfield Neural NetworkHigher order satisfiabilityLogic miningSupervised learningPermutation
spellingShingle Nur 'Afifah Rusdi
Mohd Shareduwan Mohd Kasihmuddin
Nurul Atiqah Romli
Gaeithry Manoharam
Mohd. Asyraf Mansor
Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection
Journal of King Saud University: Computer and Information Sciences
Multi-unit Discrete Hopfield Neural Network
Higher order satisfiability
Logic mining
Supervised learning
Permutation
title Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection
title_full Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection
title_fullStr Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection
title_full_unstemmed Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection
title_short Multi-unit Discrete Hopfield Neural Network for higher order supervised learning through logic mining: Optimal performance design and attribute selection
title_sort multi unit discrete hopfield neural network for higher order supervised learning through logic mining optimal performance design and attribute selection
topic Multi-unit Discrete Hopfield Neural Network
Higher order satisfiability
Logic mining
Supervised learning
Permutation
url http://www.sciencedirect.com/science/article/pii/S1319157823001003
work_keys_str_mv AT nurafifahrusdi multiunitdiscretehopfieldneuralnetworkforhigherordersupervisedlearningthroughlogicminingoptimalperformancedesignandattributeselection
AT mohdshareduwanmohdkasihmuddin multiunitdiscretehopfieldneuralnetworkforhigherordersupervisedlearningthroughlogicminingoptimalperformancedesignandattributeselection
AT nurulatiqahromli multiunitdiscretehopfieldneuralnetworkforhigherordersupervisedlearningthroughlogicminingoptimalperformancedesignandattributeselection
AT gaeithrymanoharam multiunitdiscretehopfieldneuralnetworkforhigherordersupervisedlearningthroughlogicminingoptimalperformancedesignandattributeselection
AT mohdasyrafmansor multiunitdiscretehopfieldneuralnetworkforhigherordersupervisedlearningthroughlogicminingoptimalperformancedesignandattributeselection