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A fuzzy record-to-record travel algorithm for solving rough set attribute reduction

机译:一种用于求解粗糙集属性约简的模糊记录到记录旅行算法

摘要

Attribute reduction can be defined as the process of determining a minimal subset of attributes from an original set of attributes. This paper proposes a new attribute reduction method that is based on a record-to-record travel algorithm for solving rough set attribute reduction problems. This algorithm has a solitary parameter called the DEVIATION, which plays a pivotal role in controlling the acceptance of the worse solutions, after it becomes pre-tuned. In this paper, we focus on a fuzzy-based record-to-record travel algorithm for attribute reduction (FuzzyRRTAR). This algorithm employs an intelligent fuzzy logic controller mechanism to control the value of DEVIATION, which is dynamically changed throughout the search process. The proposed method was tested on standard benchmark data sets. The results show that FuzzyRRTAR is efficient in solving attribute reduction problems when compared with other meta-heuristic approaches
机译:属性约简可以定义为从一组原始属性中确定属性的最小子集的过程。提出了一种基于记录到记录旅行算法的属性约简方法,用于解决粗糙集属性约简问题。该算法有一个称为DEVIATION的单独参数,在经过预先调整后,它在控制较差解的接受方面起着关键作用。在本文中,我们专注于基于模糊的记录到记录旅行算法以进行属性约简(FuzzyRRTAR)。该算法采用智能模糊逻辑控制器机制来控制DEVIATION的值,该值会在整个搜索过程中动态变化。在标准基准数据集上对提出的方法进行了测试。结果表明,与其他元启发式方法相比,FuzzyRRTAR可有效解决属性约简问题

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