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Tabu search for attribute reduction in rough set theory

机译:禁忌搜索在粗糙集理论中的属性约简

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摘要

In this paper, we consider a memory-based heuristic of tabu search to solve the attribute reduction problem in rough set theory. The proposed method, called tabu search attribute reduction (TSAR), is a high-level TS with long-term memory. Therefore, TSAR invokes diversification and intensification search schemes besides the TS neighborhood search methodology. TSAR shows promising and competitive performance compared with some other CI tools in terms of solution qualities. Moreover, TSAR shows a superior performance in saving the computational costs.
机译:在本文中,我们考虑基于禁忌搜索的记忆启发式算法来解决粗糙集理论中的属性约简问题。所提出的称为禁忌搜索属性约简(TSAR)的方法是具有长期记忆的高级TS。因此,除了TS邻域搜索方法外,TSAR还调用了多样化和集约化搜索方案。与其他CI工具相比,TSAR在解决方案质量方面显示出令人鼓舞的竞争优势。此外,TSAR在节省计算成本方面显示出卓越的性能。

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