Lee H M, Chen C M, Chen J M, Jou Y L
Dept. of Electron. Eng., Nat. Taiwan Univ. of Sci. & Technol., Taipei.
IEEE Trans Syst Man Cybern B Cybern. 2001;31(3):426-32. doi: 10.1109/3477.931536.
This paper presents an efficient fuzzy classifier with the ability of feature selection based on a fuzzy entropy measure. Fuzzy entropy is employed to evaluate the information of pattern distribution in the pattern space. With this information, we can partition the pattern space into nonoverlapping decision regions for pattern classification. Since the decision regions do not overlap, both the complexity and computational load of the classifier are reduced and thus the training time and classification time are extremely short. Although the decision regions are partitioned into nonoverlapping subspaces, we can achieve good classification performance since the decision regions can be correctly determined via our proposed fuzzy entropy measure. In addition, we also investigate the use of fuzzy entropy to select relevant features. The feature selection procedure not only reduces the dimensionality of a problem but also discards noise-corrupted, redundant and unimportant features. Finally, we apply the proposed classifier to the Iris database and Wisconsin breast cancer database to evaluate the classification performance. Both of the results show that the proposed classifier can work well for the pattern classification application.
本文提出了一种基于模糊熵测度的具有特征选择能力的高效模糊分类器。模糊熵用于评估模式空间中模式分布的信息。利用这些信息,我们可以将模式空间划分为不重叠的决策区域进行模式分类。由于决策区域不重叠,分类器的复杂度和计算量都降低了,因此训练时间和分类时间都非常短。虽然决策区域被划分为不重叠的子空间,但通过我们提出的模糊熵测度可以正确确定决策区域,从而实现良好的分类性能。此外,我们还研究了使用模糊熵来选择相关特征。特征选择过程不仅降低了问题的维度,还丢弃了受噪声干扰、冗余和不重要的特征。最后,我们将所提出的分类器应用于鸢尾花数据库和威斯康星乳腺癌数据库来评估分类性能。两个结果都表明所提出的分类器在模式分类应用中能够很好地工作。