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A Robust Instance Weighting Technique for Nearest Neighbor Classification in Noisy Environments

机译:嘈杂环境中最近邻分类的鲁棒实例加权技术

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The performance of Nearest Neighbor (NN) classifier is highly dependent on the distance (or similarity) function used to find the NN of an input test pattern. Many of the proposed algorithms try to optimize the accuracy of the NN rule using a weighted distance function. In this scheme, a weight parameter is learned for each of the training instances. The weights of training instances are used in the generalization phase to find the NN of an input test pattern. The Weighted Distance Nearest Neighbor (WDNN) algorithm attempts to maximize the leave-one-out classification rate of the training set by adjusting the weight parameters. The procedure simply leads to weights that overfit the train data, which degrades the performance of the method especially in noisy environments. In this paper, we propose an enhanced version of WDNN, called Overfit Avoidance for WDNN (OAWDNN), that significantly outperforms the algorithm in generalization phase. The proposed method uses an early stopping approach to decrease instance weights specified by WDNN, which implicitly makes the class boundary smooth and consequently more generalized. In order to evaluate robustness of the algorithm, class label noise is added to a variety of UCI datasets. The experimental results show the supremacy of the proposed method in generalization accuracy.
机译:最近邻(NN)分类器的性能高度依赖于用于查找输入测试模式的NN的距离(或相似性)函数。许多提出的算法尝试使用加权距离函数来优化NN规则的准确性。在该方案中,为每个训练实例学习权重参数。在泛化阶段使用训练实例的权重来找到输入测试模式的NN。加权距离最近邻居(WDNN)算法尝试通过调整权重参数来最大化训练集的留一法分类率。该过程只会导致权重过度拟合火车数据,从而降低方法的性能,尤其是在嘈杂的环境中。在本文中,我们提出了一种WDNN的增强版本,称为WDNN的过拟合避免(OAWDNN),该版本在泛化阶段显着优于该算法。所提出的方法使用早期停止方法来减少由WDNN指定的实例权重,这隐含地使类边界平滑,因此更加通用。为了评估算法的鲁棒性,将类别标签噪声添加到各种UCI数据集。实验结果表明了该方法在泛化精度上的优越性。

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