Ray K S, Dinda T K
Electron. & Commun. Sci. Unit, Indian Stat. Inst., Calcutta, India.
IEEE Trans Syst Man Cybern B Cybern. 2003;33(1):1-16. doi: 10.1109/TSMCB.2002.804361.
Our aim is to design a pattern classifier using fuzzy relational calculus (FRC) which was initially proposed by Pedrycz (1990). In the course of doing so, we first consider a particular interpretation of the multidimensional fuzzy implication (MFI) to represent our knowledge about the training data set. Subsequently, we introduce the notion of a fuzzy pattern vector to represent a population of training patterns in the pattern space and to denote the antecedent part of the said particular interpretation of the MFI. We introduce a new approach to the computation of the derivative of the fuzzy max-function and min-function using the concept of a generalized function. During the construction of the classifier based on FRC, we use fuzzy linguistic statements (or fuzzy membership function to represent the linguistic statement) to represent the values of features (e.g., feature F/sub 1/ is small and F/sub 2/ is big) for a population of patterns. Note that the construction of the classifier essentially depends on the estimate of a fuzzy relation /spl Rfr/ between the input (fuzzy set) and output (fuzzy set) of the classifier. Once the classifier is constructed, the nonfuzzy features of a pattern can be classified. At the time of classification of the nonfuzzy features of the testpatterns, we use the concept of fuzzy masking to fuzzify the nonfuzzy feature values of the testpatterns. The performance of the proposed scheme is tested on synthetic data. Finally, we use the proposed scheme for the vowel classification problem of an Indian language.
我们的目标是设计一种使用模糊关系演算(FRC)的模式分类器,该演算最初由佩德雷茨于1990年提出。在此过程中,我们首先考虑多维模糊蕴含(MFI)的一种特定解释,以表示我们对训练数据集的了解。随后,我们引入模糊模式向量的概念,以表示模式空间中的一组训练模式,并表示上述MFI特定解释的前件部分。我们引入一种使用广义函数概念来计算模糊最大函数和最小函数导数的新方法。在基于FRC构建分类器的过程中,我们使用模糊语言陈述(或用于表示语言陈述的模糊隶属函数)来表示一组模式的特征值(例如,特征F / sub 1 / 小且F / sub 2 / 大)。请注意,分类器的构建本质上取决于对分类器输入(模糊集)和输出(模糊集)之间模糊关系(\mathcal{R})的估计。一旦构建了分类器,就可以对模式的非模糊特征进行分类。在对测试模式的非模糊特征进行分类时,我们使用模糊屏蔽的概念来模糊测试模式的非模糊特征值。所提出方案的性能在合成数据上进行了测试。最后,我们将所提出的方案用于一种印度语言的元音分类问题。