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Adaptive discretizer for machine learning based on granular computing and rough sets

机译:基于粒度计算和粗糙集的自适应机器学习离散化器

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Machine-learning approaches based on granular computing and rough sets are good at dealing with discrete values and symbolic data. In this paper, a novel adaptive discretizer is proposed to discretize attributes with continuous values so that granular computing and rough set theory can avoid dealing with huge number of continuous values. It is demonstrated that this adaptive discretizer can improve quality of reducts and reduce the number of basic granules in an information system with continuous attributes. The experimental results on benchmark data sets show that the adaptive discretizer can improve the decision accuracy for the machine learning approaches based rough sets.
机译:基于粒度计算和粗糙集的机器学习方法擅长处理离散值和符号数据。在本文中,提出了一种新颖的自适应离散化器来离散具有连续值的属性,从而使粒状计算和粗糙集理论可以避免处理大量的连续值。证明了这种自适应离散器可以提高还原质量,并减少具有连续属性的信息系统中基本颗粒的数量。在基准数据集上的实验结果表明,自适应离散器可以提高基于粗糙集的机器学习方法的决策精度。

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