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Updating attribute reduction in incomplete decision systems with the variation of attribute set

机译:通过属性集的变化更新不完备决策系统中的属性约简

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摘要

In rough set theory, attribute reduction is a challenging problem in the applications in which data with numbers of attributes available. Moreover, due to dynamic characteristics of data collection in decision systems, attribute reduction will change dynamically as attribute set in decision systems varies over time. How to carry out updating attribute reduction by utilizing previous information is an important task that can help to improve the efficiency of knowledge discovery. In view of that attribute reduction algorithms in incomplete decision systems with the variation of attribute set have not yet been discussed so far. This paper focuses on positive region-based attribute reduction algorithm to solve the attribute reduction problem efficiently in the incomplete decision systems with dynamically varying attribute set. We first introduce an incremental manner to calculate the new positive region and tolerance classes. Consequently, based on the calculated positive region and tolerance classes, the corresponding attribute reduction algorithms on how to compute new attribute reduct are put forward respectively when an attribute set is added into and deleted from the incomplete decision systems. Finally, numerical experiments conducted on different data sets from UCI validate the effectiveness and efficiency of the proposed algorithms in incomplete decision systems with the variation of attribute set.
机译:在粗糙集理论中,在具有大量属性的数据可用的应用程序中,属性约简是一个具有挑战性的问题。此外,由于决策系统中数据收集的动态特性,随着决策系统中的属性集随时间变化,属性减少将动态变化。如何利用先前的信息进行属性约简更新是一项重要的任务,可以帮助提高知识发现的效率。鉴于此,迄今为止尚未讨论具有属性集变化的不完整决策系统中的属性约简算法。本文重点研究基于正区域的属性约简算法,以有效地解决属性集动态变化的不完备决策系统中的属性约简问题。我们首先介绍一种增量方式来计算新的正区域和公差等级。因此,根据计算出的正区域和公差等级,分别提出了在不完全决策系统中添加和删除属性集时如何计算新的属性约简的相应属性约简算法。最后,对UCI不同数据集进行的数值实验验证了所提出算法在不完整决策系统中属性集变化的有效性和效率。

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