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Non-Monotonic Attribute Reduction in Decision-Theoretic Rough Sets

机译:决策理论粗糙集中的非单调属性约简

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For most attribute reduction in Pawlak rough set model (PRS), monotonicity is a basic property for the quantitative measure of an attribute set. Based on the monotonicity, a series of attribute reductions in Pawlak rough set model such as positive-region-preserved reductions and condition entropy-preserved reductions are defined and the corresponding heuristic algorithms are proposed in previous rough sets research. However, some quantitative measures of attribute set may be non-monotonic in probabilistic rough set model such as decision-theoretic rough set (DTRS), and the non-monotonic definition of the attribute reduction should be reinvestigated and the heuristic algorithm should be reconsidered. In this paper, the monotonicity of the positive region in PRS and DTRS are comparatively discussed. Theoretic analysis shows that the positive region in DTRS model may be expanded with the decrease of the attributes, which is essentially different from that in PRS model. Hereby, a new non-monotonic attribute reduction is presented for the DTRS model in this paper, and a heuristic algorithm for searching the newly defined attribute reduction is proposed, in which the positive region is allowed to be expanded instead of remaining unchanged in the process of attribute reduction. Experimental analysis is included to validate the theoretic analysis and quantify the effectiveness of the proposed attribute reduction algorithm.
机译:对于Pawlak粗糙集模型(PRS)中的大多数属性约简而言,单调性是定量度量属性集的基本属性。基于单调性,定义了Pawlak粗糙集模型的一系列属性约简,例如保留正区域的约简和条件熵保留的约简,并在先前的粗糙集研究中提出了相应的启发式算法。但是,在概率粗糙集模型中,某些属性集的定量度量可能是非单调的,例如决策理论粗糙集(DTRS),因此应重新研究属性约简的非单调定义,并应重新考虑启发式算法。本文比较讨论了PRS和DTRS中正区域的单调性。理论分析表明,随着属性的减少,DTRS模型中的正区域可能会扩大,这与PRS模型中的正区域本质上是不同的。因此,本文针对DTRS模型提出了一种新的非单调属性约简,并提出了一种启发式搜索新定义的属性约简的算法,该算法允许扩展正区域而不是在处理过程中保持不变属性减少。实验分析包括在内,以验证理论分析并量化所提出的属性约简算法的有效性。

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