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Efficient Context-Aware K-Nearest Neighbor Search

机译:高效的上下文感知K最近邻居搜索

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We develop a context-sensitive and linear-time K-nearest neighbor search method, wherein the test object and its neighborhood (in the training dataset) are required to share a similar structure via establishing bilateral relations. Our approach particularly enables to deal with two types of irregularities: (i) when the (test) objects are outliers, i.e. they do not belong to any of the existing structures in the (training) dataset, and (ii) when the structures (e.g. classes) in the dataset have diverse densities. Instead of aiming to capture the correct underlying structure of the whole data, we extract the correct structure in the neighborhood of the test object, which leads to computational efficiency of our search strategy. We investigate the performance of our method on a variety of real-world datasets and demonstrate its superior performance compared to the alternatives.
机译:我们开发了一种上下文敏感和线性时间K最近邻搜索方法,其中,通过建立双边关系,需要测试对象及其邻域(在训练数据集中)共享相似的结构。我们的方法尤其能够处理两种类型的不规则性:(i)当(测试)对象是异常值时,即它们不属于(训练)数据集中的任何现有结构,以及(ii)当结构(数据集中的类(例如类)具有不同的密度。与其着眼于捕获整个数据的正确基础结构,不如从测试对象的附近提取正确的结构,从而提高了搜索策略的计算效率。我们研究了我们的方法在各种现实世界数据集上的性能,并证明了其与其他方法相比的优越性能。

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