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Quick Attribute Reduction Based on Approximation Dependency Degree

机译:基于近似依赖度的快速属性

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—Attribute reduction is one of the core research content of Rough sets theory. Many existing algorithms mainly are aimed at the reduction of consistency decision table, and very little work has been done for attribute reduction aimed at inconsistency decision table. In fact, the methods finding Pawlak reduction from consistent decision table are not suitable for inconsistency decision table. In this paper, we introduce the approximation dependency reduction modal and present the Quick Attribution Reduction based on Approximation Dependency Degree (Quick-ARADD), which can retain the original boundary region and the original positive region unchanged, and keep the approximation accuracy unchanged for all decision equivalence classes (the partition of universe on decision attributes) of a decision table. Theoretical analysis and experimental results show that the Quick-ARADD algorithm is effective and feasible.
机译:-Attribute减少是粗糙集理论的核心研究内容之一。许多现有算法主要旨在减少一致性决策表,并且已经为旨在判定不一致决策表的属性减少来完成很少的工作。实际上,从一致决策表中找到Pawlak减少的方法不适合不一致的决策表。在本文中,我们介绍了近似依赖性减少模态,并呈现了基于近似依赖度(Quick-Aradd)的快速归因降低,其可以保留原始边界区域和原始正区域,并保持近似精度对所有内容保持不变决策当量类(决策属性上的宇宙分区)。理论分析和实验结果表明,快速aradd算法是有效可行的。

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