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A binary neural k-nearest neighbour technique

机译:二进制神经k最近邻技术

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摘要

K-Nearest Neighbour (k-NN) is a widely used technique for classifying and clustering data. K-NN is effective but is often criticised for its polynomial run-time growth as k-NN calculates the distance to every other record in the data set for each record in turn. This paper evaluates a novel k-NN classifier with linear growth and faster run-time built from binary neural networks. The binary neural approach uses robust encoding to map standard ordinal, categorical and real-valued data sets onto a binary neural network. The binary neural network uses high speed pattern matching to recall the k-best matches. We compare various configurations of the binary approach to a conventional approach for memory overheads, training speed, retrieval speed and retrieval accuracy. We demonstrate the superior performance with respect to speed and memory requirements of the binary approach compared to the standard approach and we pinpoint the optimal configurations.
机译:K最近邻(k-NN)是一种广泛用于数据分类和聚类的技术。 K-NN很有效,但经常因其多项式运行时增长而受到批评,因为k-NN依次为每个记录计算到数据集中每个其他记录的距离。本文评估了一种新型的k-NN分类器,该分类器具有线性增长和更快的运行时间,该分类器是通过二进制神经网络构建的。二进制神经方法使用鲁棒编码将标准序数,分类和实值数据集映射到二进制神经网络上。二进制神经网络使用高速模式匹配来调用k个最佳匹配。我们将二进制方法的各种配置与常规方法的内存开销,训练速度,检索速度和检索精度进行了比较。与标准方法相比,我们证明了二进制方法在速度和内存要求方面的优越性能,并指出了最佳配置。

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