DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING

This research develops an association rule framework based on optimizing the minimum support value, minimum confidence, and applying weights to items using a combination of PSO and WFIM algorithms in the FP-Growth algorithm. This research is designed to overcome the limitations in determining the mi...

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Main Author: Muhammad, Fadly
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/87708
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:87708
spelling id-itb.:877082025-02-02T22:20:31ZDEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING Muhammad, Fadly Indonesia Theses Framework, Association Rule, FP-Growth, Particle Swarm Optimization, Weighted Frequent Itemset Mining INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/87708 This research develops an association rule framework based on optimizing the minimum support value, minimum confidence, and applying weights to items using a combination of PSO and WFIM algorithms in the FP-Growth algorithm. This research is designed to overcome the limitations in determining the minimum support value and considering the weight of each item. This research aims to develop an association rule optimization framework for the FP-Growth algorithm that produces relevant and efficient association rules. In an effort to overcome the limitations of the traditional FP-Growth algorithm, this research proposes optimization through three main approaches. First, optimization of FP-Growth algorithm using PSO to automatically determine the optimal minimum support and confidence values. Second, the application of the WFIM approach to improve the relevance of association rules by considering the weight of each item in the transaction. Third, the integration of PSO and WFIM in the developed framework creates a more efficient, flexible, and adaptive approach to dataset characteristics. Experimental results show that the combination of PSO and WFIM in FP-Growth can improve the quality of association rules with more significant lift values than traditional methods. In terms of runtime and memory usage, the optimized framework shows higher efficiency, with reduced execution time and lower memory requirements than traditional FP-Growth. The results concluded that the PSO and WFIM approaches improved the flexibility of the FP-Growth algorithm in handling datasets with complex characteristics. The optimized algorithm successfully extracts more association rules with better quality than the traditional FP-Growth algorithm. It also shows reduced runtime and more efficient memory usage. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description This research develops an association rule framework based on optimizing the minimum support value, minimum confidence, and applying weights to items using a combination of PSO and WFIM algorithms in the FP-Growth algorithm. This research is designed to overcome the limitations in determining the minimum support value and considering the weight of each item. This research aims to develop an association rule optimization framework for the FP-Growth algorithm that produces relevant and efficient association rules. In an effort to overcome the limitations of the traditional FP-Growth algorithm, this research proposes optimization through three main approaches. First, optimization of FP-Growth algorithm using PSO to automatically determine the optimal minimum support and confidence values. Second, the application of the WFIM approach to improve the relevance of association rules by considering the weight of each item in the transaction. Third, the integration of PSO and WFIM in the developed framework creates a more efficient, flexible, and adaptive approach to dataset characteristics. Experimental results show that the combination of PSO and WFIM in FP-Growth can improve the quality of association rules with more significant lift values than traditional methods. In terms of runtime and memory usage, the optimized framework shows higher efficiency, with reduced execution time and lower memory requirements than traditional FP-Growth. The results concluded that the PSO and WFIM approaches improved the flexibility of the FP-Growth algorithm in handling datasets with complex characteristics. The optimized algorithm successfully extracts more association rules with better quality than the traditional FP-Growth algorithm. It also shows reduced runtime and more efficient memory usage.
format Theses
author Muhammad, Fadly
spellingShingle Muhammad, Fadly
DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING
author_facet Muhammad, Fadly
author_sort Muhammad, Fadly
title DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING
title_short DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING
title_full DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING
title_fullStr DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING
title_full_unstemmed DEVELOPMENT OF ASSOCIATION RULE FRAMEWORK USING PARTICLE SWARM OPTIMIZATION ON FP-GROWTH WEIGHTED FREQUENT ITEMSET MINING
title_sort development of association rule framework using particle swarm optimization on fp-growth weighted frequent itemset mining
url https://digilib.itb.ac.id/gdl/view/87708
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