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Finding rough and fuzzy-rough set reducts with SAT

机译:用SAT查找粗糙和模糊粗糙集约简

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摘要

Feature selection refers to the problem of selecting those input features that are most predictive of a given outcome; a problem encountered in many areas such as machine learning, pattern recognition and signal processing. In particular, solution to this has found successful application in tasks that involve datasets containing huge numbers of features (in the order of tens of thousands), which would otherwise be impossible to process further. Recent examples include text processing and web content classification. Rough set theory has been used as such a dataset pre-processor with much success, but current methods are inadequate at finding globally minimal reductions, the smallest sets of features possible. This paper proposes a technique that considers this problem from a propositional satisfiability perspective. In this framework, globally minimal subsets can be located and verified.
机译:特征选择是指选择那些最能预测给定结果的输入特征的问题。这是机器学习,模式识别和信号处理等许多领域遇到的问题。尤其是,针对此问题的解决方案已成功应用于包含大量特征(约数万个)的数据集的任务中,否则将无法进一步处理。最近的示例包括文本处理和Web内容分类。粗糙集理论已被用作这样的数据集预处理器,并取得了很大的成功,但是当前的方法不足以找到全局最小化的约简,可能的最小特征集。本文提出了一种从命题可满足性角度考虑此问题的技术。在此框架中,可以定位并验证全局最小子集。

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