Min-max classifiers: Learnability, design and application

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This paper introduces the class of min-max classifiers. These are binary-valued functions that can be used as pattern classifiers of both real-valued and binary-valued feature vectors. They are also lattice-theoretic generalization of Boolean functions and are also related to feed-forward neural networks and morphological signal operators.We studied supervised learning of these classifiers under the Probably Approximately Correct (PAC) model proposed by Valiant. Several subclasses of thresholded min-max functions are shown to be learnable, generalizing the learnability results for the corresponding classes of Boolean functions.We also propose a LMS algorithm for the practical training of these pattern classifiers. Experimental results using the LMS algorithm for handwritten character recognition are promising. For example, in our experiments the min-max classifiers were able to achieve error rates that are comparable or better than those generated using neural networks. The major advantage of min-max classifiers compared to neural networks is their simplicity and the faster convergence of their training algorithm.

论文关键词:Pattern classification,Machine learning,Mathematical morphology,Image processing,Character recognition

论文评审过程:Received 9 February 1994, Revised 27 October 1994, Accepted 14 December 1994, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/0031-3203(94)00161-E