On Subjective Measures of Interestingness in Knowledge Discovery
نویسندگان
چکیده
One of the central problems in the eld of knowledge discovery is the development of good measures of in terestingness of discovered patterns Such measures of interestingness are divided into objectivemeasures those that depend only on the structure of a pat tern and the underlying data used in the discovery process and the subjective measures those that also depend on the class of users who examine the pattern The purpose of this paper is to lay the groundwork for a comprehensive study of subjective measures of interestingness In the paper we clas sify these measures into actionable and unexpected and examine the relationship between them The unexpected measure of interestingness is de ned in terms of the belief system that the user has Inter estingness of a pattern is expressed in terms of how it a ects the belief system
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