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A new algorithm for reduct computation based on gap elimination and attribute contribution

机译:一种基于差距消除和属性贡献的减减计算算法

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摘要

Attribute reduction is a key aspect of Rough Set Theory. Finding the complete set of reducts is important for solving problems such as the assessment of attribute relevance, multi-objective cost-sensitive attribute reduction and dynamic reduct computation. The main limitation in the application of Rough Set methods is that finding all reducts of a decision system has exponential complexity regarding the number of attributes. Several algorithms have been reported to reduce the cost of reduct computation. Unfortunately, most of these algorithms relay on high cost operations for candidate evaluation. Therefore, in this paper, we propose a new algorithm for computing all reducts of a decision system, based on the pruning properties of gap elimination and attribute contribution, that uses simpler operations for candidate evaluation in order to reduce the runtime. Finally, the proposed algorithm is evaluated and compared with other state of the art algorithms, over synthetic and real decision systems. (C) 2017 Elsevier Inc. All rights reserved.
机译:属性减少是粗糙集理论的一个关键方面。寻找完整的减曲集对于解决属性相关性评估,多目标成本敏感属性减少和动态减减计算等问题非常重要。粗糙集方法应用中的主要限制是发现决策系统的所有减少对具有指数复杂性的关于属性的数量。据报道,据报道了几种算法降低了减减计算的成本。不幸的是,大多数这些算法中继用于候选评估的高成本操作。因此,在本文中,我们提出了一种基于差距消除和属性贡献的修剪特性来计算决策系统的所有减少的新算法,该算法使用更简单的候选评估来减少运行时。最后,评估所提出的算法,并与综合和实际决策系统的其他状态进行评估和比较。 (c)2017年Elsevier Inc.保留所有权利。

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