Partitioning of feature space for pattern classification

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摘要

The article proposes a simple approach for finding a fuzzy partitioning of a feature space for pattern classification problems. A feature space is initially decomposed into some overlapping hyperboxes depending on the relative positions of the pattern classes found in the training samples. A few fuzzy if-then rules reflecting the pattern classes by the generated hyperboxes are then obtained in terms of a relational matrix. The relational matrix is utilized in the modified compositional rule of inference in order to recognize an unknown pattern. The proposed system is capable of handling imprecise information both in the learning and the processing phases. The imprecise information is considered to be either incomplete or mixed or interval or linguistic in form. Ways of handling such imprecise information are also discussed. The effectiveness of the system is demonstrated on some synthetic data sets in two-dimensional feature space. The practical applicability of the system is verified on four real data such as the Iris data set, an appendicitis data set, a speech data set and a hepatic disease data set.

论文关键词:Pattern classification,Fuzzy partitioning,Fuzzy if-then rules,Fuzzy sets,Compositional rule inference,Management of uncertainty

论文评审过程:Received 8 December 1995, Revised 23 December 1996, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(97)00012-5