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ON THE ROLE OF INTERPRETABILITY IN FUZZY DATA MINING

机译:可解释性在模糊数据挖掘中的作用

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摘要

Data Mining, a central step in the broader overall process of Knowledge Discovery from Databases, concerns with discovering useful properties, called patterns, from data. Un-derstandability is an essential - yet rarely tackled - feature that makes resulting patterns accessible by end users. In this paper we argue that the adoption of Fuzzy Logic for Data Mining can improve understandability of derived patterns. Indeed, Fuzzy Logic is able to represent concepts in a "human-centric" way. Hence, Data Mining methods based on Fuzzy Logic may potentially meet the so-called "Comprehensibility Postulate", which characterizes the blurry notion of understandability. However, the mere adoption of Fuzzy Logic for Data Mining is not enough to achieve understandability. This paper describes and comments a number of issues that need to be addressed to provide for understandable patterns. A careful consideration of all such issues may end up in a systematic methodology to discover comprehensible knowledge from data.
机译:数据挖掘是从数据库进行知识发现的更广泛总体过程的中心步骤,它涉及从数据中发现有用的特性(称为模式)。不可理解性是必不可少的(但很少解决)的功能,它使最终用户可以访问生成的模式。在本文中,我们认为采用模糊逻辑进行数据挖掘可以提高派生模式的可理解性。实际上,模糊逻辑能够以“以人为中心”的方式表示概念。因此,基于模糊逻辑的数据挖掘方法可能会满足所谓的“可理解性假设”,该特征表征了可理解性的模糊概念。但是,仅采用模糊逻辑进行数据挖掘还不足以实现可理解性。本文描述并评论了许多需要解决的问题,以提供可理解的模式。对所有这些问题的仔细考虑可能最终会形成一种系统的方法,以便从数据中发现可理解的知识。

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