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Data Mining Optimization uses C4.5 Classification and Particle Swarm Optimization (PSO) in the location selection of Student Boardinghouses

Ari Waluyo, Hendra Jatnika, Marlina Rahmi Shinta Permatasari, T Tuslaela, Indah Purnamasari, Agus Perdana Windarto

2020IOP Conference Series Materials Science and Engineering27 citationsDOIOpen Access PDF

Abstract

Abstract The purpose of this study is to select the location of student boarding houses using Particle Swarm Optimization (PSO) and C4.5 optimization techniques. The source of the data was obtained by observing and giving questionnaires to 150 respondents who were lodging in the Pematangsiantar-Simalungun area. from the data set of 81 records and using 5 parameters of assessment ((C1) water cleanliness, (C2) Facilities, (C3) Transportation, (C4) Security, and (C5) Conditions) obtained the results of modeling using the C4.5 + PSO algorithm has better accuracy is 97.78% compared to the C4.5 model whose accuracy is 97.53%. Thus, it is evident that the PSO applied to the weighting of the C4.5 attribute increases the value of accuracy..

Topics & Concepts

Particle swarm optimizationWeightingSelection (genetic algorithm)Data miningSet (abstract data type)Computer scienceMulti-swarm optimizationData setMathematical optimizationValue (mathematics)Swarm intelligenceArtificial intelligenceAlgorithmMachine learningMathematicsMedicineRadiologyProgramming languageData Mining and Machine Learning ApplicationsMultimedia Learning SystemsInformation Retrieval and Data Mining