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FP-Growth Algorithm for Discovering Region-Based Association Rule in the IoT Environment

Hong‐Jun Jang, Yeongwook Yang, Ji Su Park, Byoungwook Kim

2021Electronics21 citationsDOIOpen Access PDF

Abstract

With the development of the Internet of things (IoT), both types and amounts of spatial data collected from heterogeneous IoT devices are increasing. The increased spatial data are being actively utilized in the data mining field. The existing association rule mining algorithms find all items with high correlation in the entire data. Association rules that may appear differently for each region, however, may not be found when the association rules are searched for all data. In this paper, we propose region-based frequent pattern growth (RFP-Growth) to search for association rules by dense regions. First, RFP-Growth divides item transaction included position data into regions by a density-based clustering algorithm. Second, frequent pattern growth (FP-Growth) is performed for each transaction divided by region. The experimental results show that RFP-Growth discovers new association rules that the original FP-Growth cannot find in the whole data.

Topics & Concepts

Association rule learningDatabase transactionData miningCluster analysisAssociation (psychology)Computer scienceTransaction dataInternet of ThingsField (mathematics)AlgorithmArtificial intelligenceDatabaseMathematicsWorld Wide WebPure mathematicsEpistemologyPhilosophyData Mining Algorithms and ApplicationsData Management and AlgorithmsRough Sets and Fuzzy Logic