Extension of Decision Tree Algorithm for Stream Data Mining Using Real Data

Minegishi Tatsuya Future University-Hakodate
Ise Masayuki Future University Hakodate
Niimi Ayahiko Future University Hakodate
Konishi Osamu Future University-Hakodate
発行日
2009-11-10
抄録
Recently, because of increasing amount of data in the society, data stream mining targeting large scale data has attracted attention. The data mining is a technology of discovery new knowledge and patterns from the massive amounts of data, and what the data correspond to data stream is data stream mining. In this paper, we propose the feature selection with online decision tree. At first, we construct online type decision tree to regard credit card transaction data as data stream on data stream mining. At second, we select attributes thought to be important for detection of illegal use. We apply VFDT (Very Fast Decision Tree learner) algorithm to online type decision tree construction.
ISSN
1883-3977
NCID
BB00577064