在不指定实际最小支持度的情况下,通过ACS算法提取隶属函数

E. Vejdani, F. Saadatmand, M. Niazi, M. Yaghmaee
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引用次数: 3

摘要

近年来,蚁群系统(ACS)已成功地应用于优化问题。然而,将ACS应用于数据挖掘方面的工作却很少。提出了一种基于acs的模糊数据挖掘中的隶属函数提取算法。首先将隶属度函数编码成二进制,然后交给ACS来搜索最优的隶属度函数集。由于我们的模型不需要用户指定的最小支持度阈值,因此该算法可以执行全局搜索并实现系统自动化。实验结果表明,该算法显著改善了隶属函数,降低了计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting membership functions by ACS algorithm without specifying actual minimum support
Ant Colony Systems (ACS) have been successfully utilized to optimization problems in recent years. However, few works have been done on applying ACS to data mining. This paper proposes an ACS-based algorithm to extract membership functions in fuzzy data mining. The membership functions are first encoded into binary bits and then given to the ACS to search for the optimal set of membership functions. With the proposed algorithm, a global search can be performed and system automation is implemented, because our model does not require the user-specified threshold of minimum support. We experimentally evaluate our approach and reveal that our algorithm significantly improve membership functions and reduce the computation costs.
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