Combining Clustering techniques and Formal Concept Analysis to characterize Interestingness Measures
نویسندگان
چکیده
Formal Concept Analysis "FCA" is a data analysis method which enables to discover hidden knowledge existing in data. A kind of hidden knowledge extracted from data is association rules. Different quality measures were reported in the literature to extract only relevant association rules. Given a dataset, the choice of a good quality measure remains a challenging task for a user. Given a quality measures evaluation matrix according to semantic properties, this paper describes how FCA can highlight quality measures with similar behavior in order to help the user during his choice. The aim of this article is the discovery of Interestingness Measures "IM" clusters, able to validate those found due to the hierarchical and partitioning clustering methods (AHC and kmeans). Then, based on the theoretical study of sixty one interestingness measures according to nineteen properties, proposed in a recent study, FCA describes several groups of measures.
منابع مشابه
Combining Clustering techniques and FCA to characterize Interestingness Measures
Formal Concept Analysis "FCA" is a data analysis method which enables to discover hidden knowledge existing in data. A kind of hidden knowledge extracted from data is association rules. Di erent Interestingness Measures "IMs" were reported in the literature to extract only relevant association rules. Given a dataset, the choice of a good interestingness measure remains a challenging task for a ...
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ورودعنوان ژورنال:
- CoRR
دوره abs/1008.3629 شماره
صفحات -
تاریخ انتشار 2010