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On Optimizing Locally Linear Nearest Neighbour Reconstructions Using Prototype Reduction Schemes

机译:用原型减少方案优化局部线性最近邻重建

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This paper concerns the use of Prototype Reduction Schemes (PRS) to optimize the computations involved in typical k-Nearest Neighbor (k-NN) rules. These rules have been successfully used for decades in statistical Pattern Recognition (PR) applications, and have numerous applications because of their known error bounds. For a given data point of unknown identity, the k-NN possesses the phenomenon that it combines the information about the samples from a priori target classes (values) of selected neighbors to, for example, predict the target class of the tested sample. Recently, an implementation of the k-NN, named as the Locally Linear Reconstruction (LLR) [11], has been proposed. The salient feature of the latter is that by invoking a quadratic optimization process, it is capable of systematically setting model parameters, such as the number of neighbors (specified by the parameter, k) and the weights. However, the LLR takes more time than other conventional methods when it has to be applied to classification tasks. To overcome this problem, we propose a strategy of using a PRS to efficiently compute the optimization problem. In this paper, we demonstrate, first of all, that by completely discarding the points not included by the PRS, we can obtain a reduced set of sample points, using which, in turn, the quadratic optimization problem can be computed far more expediently. The values of the corresponding indices are comparable to those obtained with the original training set (i.e., the one which considers all the data points) even though the computations required to obtain the prototypes and the corresponding classification accuracies are noticeably less. The proposed method has been tested on artificial and real-life data sets, and the results obtained are very promising, and has potential in PR applications.
机译:本文涉及使用原型减少方案(PRS)的,以优化参与典型的k最近邻(K-NN)规则的计算。这些规则已经成功地使用了几十年的统计模式识别(PR)的应用程序,并且由于它们已知的误差范围的众多应用。对于未知身份的一个给定的数据点,第k-NN具有它结合有关样品选自邻居,例如,预测目标类被测试的样品中的先验目标类(值)的信息的现象。最近,第k-NN的一种实现中,命名为局部线性重建(LLR)[11],已经提出了。后者的显着特征是,通过调用一个二次优化过程中,它能够有系统地设定模型参数,如邻居(由参数,K指定)的数量和权重。然而,LLR花费的时间比其他传统方法更多的时间,当它被应用到分类任​​务。为了克服这个问题,我们建议使用PRS有效计算优化问题的战略。在本文中,我们证明,首先,通过完全丢弃不包括在由PRS点,我们可以得到一组采样点的减少,利用这又,二次优化问题可以更加方便地进行计算。相应的索引的值是可比较的,以与原始训练集获得的那些(即,它参考的所有数据点的一个),即使计算所需获得原型和相应的分类精确度是显着更小。该方法已经过测试,在人工和真实数据集,以及所获得的结果非常乐观,并在公关的应用潜力。

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