Litcius/Paper detail

Scalable and Efficient Approach for High Temporal Fuzzy Utility Pattern Mining

Taewoong Ryu, Heonho Kim, Chanhee Lee, Heonmo Kim, Bay Vo, Jerry Chun‐Wei Lin, Witold Pedrycz, Unil Yun

2022IEEE Transactions on Cybernetics23 citationsDOI

Abstract

Fuzzy utility (FU) pattern mining with an advantage in human reasoning has become one of the interesting topics in studies of knowledge discovery. The discovered information in FU pattern mining from real-life quantitative databases with item profits is suitable for interpreting data from a human perspective because it is not expressed using numerical values but linguistic terms which consist of natural languages. State-of-the-art approaches in this literature provide extended results by considering temporal factors, such as seasons, which can be influential in real-life situations. However, they still suffer from scalability issues because they are based on level-wise approaches which generate a number of candidates. In this article, we propose a scalable and efficient approach with a novel data structure for mining high temporal FU patterns without generating candidates. Efficient pruning techniques and algorithms are presented to improve the performance of the proposed approach. Performance experiments on both real and synthetic datasets show that the suggested algorithm has better performance than the state-of-the-art algorithms in terms of runtime, memory usage, and scalability.

Topics & Concepts

ScalabilityComputer sciencePruningData miningFuzzy logicPerspective (graphical)State (computer science)Artificial intelligenceKnowledge extractionMachine learningDatabaseAlgorithmBiologyAgronomyData Mining Algorithms and ApplicationsRough Sets and Fuzzy LogicData Management and Algorithms