利用距离权重提高特征加权k近邻的精度

K. U. Syaliman, Ause Labellapansa, Ana Yulianti
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引用次数: 2

摘要

: FWk-NN是k-NN的改进,其中FWk-NN为每个数据特征赋予权重,从而减少与目标不太相关的特征的影响。特征加权被证明能够提高k-NN的准确率。然而,FWK-NN仍然使用多数投票系统来确定新数据的类别。多数投票制度被认为有几个弱点,它忽略了数据之间的相似性和双重多数阶级的可能性。为了克服FWk-NN的投票多数问题,本研究将通过使用距离权重来改变投票多数。本研究使用从UCI存储库获得的数据集和水质数据集。UCI存储库中使用的数据有虹膜、电离层、海耶斯-罗斯和玻璃。基于UCI存储库数据集进行的测试证明,使用距离权重的FWk-NN平均提高了约2%,其中玻璃数据集的准确率最高,提高了4.23%。在水质数据中,使用距离权值的FWk-NN可以达到92.58%的准确率,比FWk-NN提高了2%。从所有测试的数据来看,距离权重能够使FWk-NN的准确率平均提高1.9%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Accuracy of Features Weighted k-Nearest Neighbor using Distance Weight
: FWk-NN is an improvement of k-NN, where FWk-NN gives weight to each data feature thereby reducing the influence of features that are less relevant to the target. Feature weighting is proven to be able to improve the accuracy of k-NN. However, the FWK-NN still uses the majority vote system for class determination to new data. Whereby the majority vote system is considered to have several weaknesses, it ignores the similarity between data and the possibility of a double majority class. To overcome the issue of vote majority at FWk-NN, the research will change the voting majority by using distance weight. This study uses a dataset obtained from the UCI repository and a water quality data set. The data used from the UCI repository are iris, ionosphere, hayes-Roth, and glass. Based on the tests carried out using UCI repository dataset it is proven that FWk-NN using distance weight has averaged an increase about2%, with the highest increase of accuracy of 4.23% in the glass dataset. In water quality data, FWk-NN using distance weight can achieve an accuracy of 92.58% or has increased 2% from FWk-NN. From all the data tested, it is proven that the distance weight is able to increase the accuracy of the FWk-NN with an average increase about 1.9%.
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