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Combining Minkowski and Cheyshev: New distance proposal and survey of distance metrics using k-nearest neighbours classifier

机译:结合Minkowski和Cheyshev:新的距离建议和使用k最近邻分类器的距离度量调查

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This work proposes a distance that combines Minkowski and Chebyshev distances and can be seen as an intermediary distance. This combination not only achieves efficient run times in neighbourhood iteration tasks in Z(2), but also obtains good accuracies when coupled with the k-Nearest Neighbours (k-NN) classifier. The proposed distance is approximately 1.3 times faster than Manhattan distance and 329.5 times faster than Euclidean distance in discrete neighbourhood iterations. An accuracy analysis of the kNN classifier using a total of 33 datasets from the UCI repository, 15 distances and values assigned to k that vary from 1 to 200 is presented. In this experiment, the proposed distance obtained accuracies that were better than the average more often than its counterparts (in 26 cases out of 33), and also obtained the best accuracy more frequently (in 9 out of 33 cases). (C) 2018 Elsevier B.V. All rights reserved.
机译:这项工作提出了一个结合了Minkowski和Chebyshev距离的距离,可以看作是中间距离。这种组合不仅在Z(2)中的邻域迭代任务中获得了有效的运行时间,而且在与k最近邻居(k-NN)分类器结合时也获得了良好的准确性。在离散邻域迭代中,建议的距离比曼哈顿距离大约快1.3倍,比欧几里得距离快329.5倍。提出了一个kNN分类器的准确性分析,该分析使用了来自UCI存储库的总共33个数据集,15个距离和分配给k的值(从1到200不等)。在该实验中,建议的距离获得的准确度要比平均值高得多(在33例中有26例),并且其准确性也更高(在33例中有9例)。 (C)2018 Elsevier B.V.保留所有权利。

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