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An Efficient Nearest Neighbor Classifier Using an Adaptive Distance Measure

机译:使用自适应距离测度的有效最近邻分类器

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摘要

The Nearest Neighbor (NN) rule is one of the simplest and most effective pattern classification algorithms. In basic NN rule, all the instances in the training set are considered the same to find the NN of an input test pattern. In the proposed approach in this article, a local weight is assigned to each training instance. The weights are then used while calculating the adaptive distance metric to find the NN of a query pattern. To determine the weight of each training pattern, we propose a learning algorithm that attempts to minimize the number of misclassified patterns on the training data. To evaluate the performance of the proposed method, a number of UCI-ML data sets were used. The results show that the proposed method improves the generalization accuracy of the basic NN classifier. It is also shown that the proposed algorithm can be considered as an effective instance reduction technique for the NN classifier.
机译:最近邻(NN)规则是最简单,最有效的模式分类算法之一。在基本的NN规则中,训练集中的所有实例被认为是相同的,以找到输入测试模式的NN。在本文提出的方法中,将局部权重分配给每个训练实例。然后在计算自适应距离度量时使用权重来查找查询模式的NN。为了确定每种训练模式的权重,我们提出了一种学习算法,尝试最小化训练数据上错误分类的模式的数量。为了评估所提出方法的性能,使用了许多UCI-ML数据集。结果表明,该方法提高了基本神经网络分类器的泛化精度。还表明,所提出的算法可以被认为是用于NN分类器的有效实例约简技术。

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