最优模糊值特征子集选择中的动态阈值确定

Jirong Li
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引用次数: 3

摘要

特征子集选择是一种模式识别问题,通常被视为一种数据挖掘增强技术。将不精确的特征值视为模糊集,与传统方法相比,不会丢失其包含的信息。最优模糊值特征子集选择(OFFSS)是一种模糊值特征子集选择技术。OFFSS的核心是在扩展矩阵中寻找路径的启发式搜索算法,其中元素为两个模糊集的重叠度。路径是小于或等于某个阈值的所有元素。不同的阈值会严重影响特征子集的质量。在OFFSS中没有讨论确定阈值的方法。本文主要研究OFFSS中阈值的动态确定问题。通过将结果特征子集应用于模糊决策树归纳,并与原算法进行比较,在选定的5个UCI标准数据集上证明了改进算法具有更满意的训练和测试精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamically Threshold Value Determination in the Optimal Fuzzy-Valued Feature Subset Selection
Feature subset selection is a pattern recognition problem which is usually viewed as a data mining enhancement technique. By viewing the imprecise feature values as fuzzy sets, the information it contains would not be lost compared with the traditional methods. Optimal fuzzy-valued feature subset selection (OFFSS) is a technique for fuzzy-valued feature subset selection. The core of OFFSS is the heuristic search algorithm for finding a path in the extension matrix where elements are the overlapping degree of two fuzzy sets. The path is all the elements less than or equal to a certain threshold value. Different threshold values would seriously affect the quality of the feature subset. The method of determining the threshold value has not been discussed in OFFSS. This paper focuses on the problem of determining the threshold value dynamically in OFFSS. By applications of the result feature subset to fuzzy decision tree induction and by comparison with the original algorithm, the revised algorithm is demonstrated more satisfying training and testing accuracy in the selected five UCI standard datasets.
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