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A Discrete Approach for Supervised Pattern Recognition

机译:一种监督模式识别的离散方法

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We present an approach for supervised pattern recognition based on combinatorial analysis of optimum paths from key samples (prototypes), which creates a discrete optimal partition of the feature space such that any unknown sample can be classified according to this partition. A training set is interpreted as a complete graph with at least one prototype in each class. They compete among themselves and each prototype defines an optimum-path tree, whose nodes are the samples more strongly connected to it than to any other. The result is an optimum-path forest in the training set. A test sample is assigned to the class of the prototype which offers it the optimum path in the forest. The classifier is designed to achieve zero classification errors in the training set, without over-fitting, and to learn from its errors. A comparison with several datasets shows the advantages of the method in accuracy and efficiency with respect to support vector machines.
机译:我们基于来自关键样本(原型)的最佳路径的组合分析来提出一种监督模式识别的方法,其创建特征空间的离散最佳分区,使得可以根据该分区对任何未知样本进行分类。训练集被解释为具有每个类中至少一个原型的完整图形。它们在它们之间竞争,每个原型都定义了一个最佳路径树,其节点是比任何其他更强烈地连接的样本。结果是训练集中的最佳路径林。将测试样本分配给原型的类别,该类提供了森林中的最佳路径。分类器旨在实现培训集中的零分类错误,而不会过度拟合,并从其错误中学习。与若干数据集的比较显示了对支持向量机的准确性和效率的方法的优点。

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