Associative classification using automata with structure based merging
Associative Classification, a combination of two important and different fields (classification and association rule mining), aims at building accurate and interpretable classifiers by means of association rules. The process used to generate association rules is exponential by nature; thus in AC, re...
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Online Access: | http://eprints.utm.my/id/eprint/88439/1/AlexSimTzeHiang2019_AssociativeClassificationusingAutomatawithStructurebasedMerging.pdf http://eprints.utm.my/id/eprint/88439/ http://dx.doi.org/10.14569/ijacsa.2019.0100788 |
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my.utm.884392020-12-15T00:06:24Z http://eprints.utm.my/id/eprint/88439/ Associative classification using automata with structure based merging Mohammad Abrar, Mohammad Abrar Sim, Alex Tze Hiang Abbas, Sohail QA75 Electronic computers. Computer science Associative Classification, a combination of two important and different fields (classification and association rule mining), aims at building accurate and interpretable classifiers by means of association rules. The process used to generate association rules is exponential by nature; thus in AC, researchers focused on the reduction of redundant rules via rules pruning and rules ranking techniques. These techniques take an important part in improving the efficiency; however, pruning may negatively affect the accuracy by pruning interesting rules. Further, these techniques are time consuming in term of processing and also require domain specific knowledge to decide upon the selection of the best ranking and pruning strategy. In order to overcome these limitations, in this research, an automata based solution is proposed to improve the classifier's accuracy while replacing ranking and pruning. A new merging concept is introduced which used structure based similarity to merge the association rules. The merging not only help to reduce the classifier size but also minimize the loss of information by avoiding the pruning. The extensive experiments showed that the proposed algorithm is efficient than AC, Naive Bayesian, and Rule and Tree based classifiers in term of accuracy, space, and speed. The merging takes the advantages of the repetition in the rules set and keep the classifier as small as possible. Science and Information Organization 2019 Article PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/88439/1/AlexSimTzeHiang2019_AssociativeClassificationusingAutomatawithStructurebasedMerging.pdf Mohammad Abrar, Mohammad Abrar and Sim, Alex Tze Hiang and Abbas, Sohail (2019) Associative classification using automata with structure based merging. International Journal of Advanced Computer Science and Applications, 10 (7). pp. 672-685. ISSN 2158-107X http://dx.doi.org/10.14569/ijacsa.2019.0100788 |
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QA75 Electronic computers. Computer science Mohammad Abrar, Mohammad Abrar Sim, Alex Tze Hiang Abbas, Sohail Associative classification using automata with structure based merging |
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Associative Classification, a combination of two important and different fields (classification and association rule mining), aims at building accurate and interpretable classifiers by means of association rules. The process used to generate association rules is exponential by nature; thus in AC, researchers focused on the reduction of redundant rules via rules pruning and rules ranking techniques. These techniques take an important part in improving the efficiency; however, pruning may negatively affect the accuracy by pruning interesting rules. Further, these techniques are time consuming in term of processing and also require domain specific knowledge to decide upon the selection of the best ranking and pruning strategy. In order to overcome these limitations, in this research, an automata based solution is proposed to improve the classifier's accuracy while replacing ranking and pruning. A new merging concept is introduced which used structure based similarity to merge the association rules. The merging not only help to reduce the classifier size but also minimize the loss of information by avoiding the pruning. The extensive experiments showed that the proposed algorithm is efficient than AC, Naive Bayesian, and Rule and Tree based classifiers in term of accuracy, space, and speed. The merging takes the advantages of the repetition in the rules set and keep the classifier as small as possible. |
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Article |
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Mohammad Abrar, Mohammad Abrar Sim, Alex Tze Hiang Abbas, Sohail |
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Mohammad Abrar, Mohammad Abrar Sim, Alex Tze Hiang Abbas, Sohail |
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Mohammad Abrar, Mohammad Abrar |
title |
Associative classification using automata with structure based merging |
title_short |
Associative classification using automata with structure based merging |
title_full |
Associative classification using automata with structure based merging |
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Associative classification using automata with structure based merging |
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Associative classification using automata with structure based merging |
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associative classification using automata with structure based merging |
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Science and Information Organization |
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2019 |
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http://eprints.utm.my/id/eprint/88439/1/AlexSimTzeHiang2019_AssociativeClassificationusingAutomatawithStructurebasedMerging.pdf http://eprints.utm.my/id/eprint/88439/ http://dx.doi.org/10.14569/ijacsa.2019.0100788 |
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