首页> 外文会议>International Conference on Advances in Natural Computation(ICNC 2005); 20050827-29; Changsha(CN) >Locally Determining the Number of Neighbors in the k-Nearest Neighbor Rule Based on Statistical Confidence
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Locally Determining the Number of Neighbors in the k-Nearest Neighbor Rule Based on Statistical Confidence

机译:基于统计置信度局部确定k最近邻规则中的邻居数

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The k-nearest neighbor rule is one of the most attractive pattern classification algorithms. In practice, the value of k is usually determined by the cross-validation method. In this work, we propose a new method that locally determines the number of nearest neighbors based on the concept of statistical confidence. We define the confidence associated with decisions that are made by the majority rule from a finite number of observations and use it as a criterion to determine the number of nearest neighbors needed. The new algorithm is tested on several real-world datasets and yields results comparable to those obtained by the k-nearest neighbor rule. In contrast to the k-nearest neighbor rule that uses a fixed number of nearest neighbors throughout the feature space, our method locally adjusts the number of neighbors until a satisfactory level of confidence is reached. In addition, the statistical confidence provides a natural way to balance the trade-off between the reject rate and the error rate by excluding patterns that have low confidence levels.
机译:k最近邻居规则是最有吸引力的模式分类算法之一。在实践中,k的值通常由交叉验证方法确定。在这项工作中,我们提出了一种新方法,该方法根据统计置信度的概念在本地确定最近邻居的数量。我们定义与多数规则根据有限数量的观察所做出的决策相关的置信度,并将其用作确定所需的最近邻居数的标准。该新算法已在多个真实世界的数据集上进行了测试,其结果可与k近邻规则获得的结果相媲美。与在整个特征空间中使用固定数量的最近邻居的k最近邻居规则相反,我们的方法会局部调整邻居数量,直到达到令人满意的置信度。另外,统计置信度通过排除具有低置信度水平的模式,提供了一种自然的方式来平衡拒绝率和错误率之间的权衡。

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