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A pattern synthesis technique with an efficient nearest neighbor classifier for binary pattern recognition

机译:一种具有高效最近邻分类的模式综合技术,用于二进制模式识别

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Important factors affecting the efficiency and performance of the nearest neighbor classifier (NNC) are space, classification time requirements and for high dimensional data, due to the curse of dimensionality, the training set size should be large. We propose novel techniques to improve the performance of NNC and at the same time to reduce its computational burden. A compact representation of the training set along with an efficient NNC which does implicit pattern synthesis is presented. A comparison of empirical results is made with relevant methods.
机译:影响最近邻邻分类器(NNC)效率和性能的重要因素是空间,分类时间要求和高维数据,由于维度的诅咒,训练集尺寸应该很大。我们提出了新颖的技术来提高NNC的性能,同时可以减少其计算负担。提出了一种紧凑的训练集合,以及有效的NNC,其具有隐含的模式合成。用相关方法进行实证结果的比较。

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