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Multi-objective optimization method for thresholds learning and neighborhood computing in a neighborhood based decision-theoretic rough set model

机译:基于邻域决策理论的粗糙集模型中阈值学习和邻域计算的多目标优化方法

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Recently, a neighborhood based decision-theoretic rough set (NDTRS) model was proposed to deal with the general data which contained numerical values and noisy values simultaneously. However, it still suffered from the issue of granularity selection and the relationship between the thresholds and the neighborhood was also not investigated in depth. In this paper, a multi-objective optimization model for NDTRS to learn the thresholds and select the granularity (compute the neighborhood) comprehensively is proposed. In this model, three significant problems: decreasing the size of the boundary region, decreasing the overall decision cost for the three types of rules, and increasing the size of the neighborhood are taken into consideration. We use 10 UCI datasets to validate the performance of our method. With the Improved Strength Pareto Evolutionary Algorithm (SPEA2), the Pareto optimal solutions are obtained automatically. The experimental results demonstrate the trade-off among the three objectives and show that the thresholds and neighborhoods obtained by our method are more intuitive. (C) 2017 Elsevier B.V. All rights reserved.
机译:最近,提出了一种基于邻域的决策理论粗糙集(NDTRS)模型来同时处理包含数值和噪声值的一般数据。然而,它仍然遭受粒度选择的问题,并且阈值和邻域之间的关系也没有被深入研究。本文提出了一种用于NDTRS的多目标优化模型,以学习阈值并综合选择粒度(计算邻域)。在该模型中,考虑了三个重要问题:减小边界区域的大小,减小三种规则的总体决策成本以及增大邻域的大小。我们使用10个UCI数据集来验证我们方法的性能。使用改进强度的帕累托进化算法(SPEA2),可以自动获得帕累托最优解。实验结果证明了这三个目标之间的权衡,并且表明通过我们的方法获得的阈值和邻域更加直观。 (C)2017 Elsevier B.V.保留所有权利。

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