人工知能学会第二種研究会資料
Online ISSN : 2436-5556
Pattern Discovery from a Single Graph with Quantitative Itemsets
Yuuki MiyoshiTomonobu OzakiTakenao Ohkawa
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研究報告書・技術報告書 フリー

2009 年 2009 巻 DMSM-A901 号 p. 10-

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In this paper, we focus on a single graph whose vertices contain a set of quantitative attributes. Several networks can be naturally represented in this complex graph. An example is a social network whose vertex corresponds to a person with some quantitative items such as age, salary and so on. Although it can easily be expected that this kind of data will increase rapidly, most of current graph mining algorithms do not handle these complex graphs directly. Motivated by the above background, by effectively combining techniques of graph mining and quantitative itemset mining, we developed an algorithm named FAG-gSpan for nding frequent patterns from a graph with quantitative itemsets.

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