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Publications, working papers, and other research using data resources from IPUMS.

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Title: Pengembangan Learning Characteristic Rule Pada Algoritma Data Mining Attribute Oriented Induction

Citation Type: Journal Article

Publication Year: 2016

DOI: 10.14710/JSK.V6I1.104

Abstract: This paper shows the improvement of current characteristic rule learning in Attribute Oriented Induction (AOI) data mining technique. The proposed algorithm was applied with improvement upon current algorithm with 3 steps where the first step is elimination for checking condition if there is no higher level concept in concept hierarchy for attribute. The second step is elimination of attribute removal if fulfill for checking condition if there is no higher level concept. The third step is elimination of attributes in input dataset which no higher level concept in concept hierarchy. The development of these data mining algorithm applied Knowledge Data Discovery (KDD) methodology which consist 7 steps. Current and proposed AOI characteristic rule learning were implemented with server programming such as PHP Hypertext Preprocessor (PHP) and using 4 input datasets such as adult, breast cancer, census and IPUMS from University of California, Irvine (UCI) machine learning repository. The experiments showed that proposed AOI characteristic rule are better than current AOI characteristic rule, where experiments upon adult, breast cancer, census, IPUMS datasets have average 11, 3.8, 7.2, 7.2 respectively times better performance. The experiments were carried on AMD A10-7300(1.90 GHz) processor with 8.00 GB RAM

Url: http://www.jsiskom.undip.ac.id/index.php/jsk/article/view/104

User Submitted?: No

Authors: Wibowo, Adi; Warnars, Spits

Periodical (Full): Jurnal Sistem Komputer

Issue: 1

Volume: 6

Pages: 17-29

Data Collections: IPUMS USA

Topics: Methodology and Data Collection, Other

Countries:

IPUMS NHGIS NAPP IHIS ATUS Terrapop