Nearest neighbor searching under uncertainty II

P. Agarwal, B. Aronov, Sariel Har-Peled, J. M. Phillips, K. Yi, Wuzhou Zhang
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引用次数: 15

Abstract

Nearest-neighbor (NN) search, which returns the nearest neighbor of a query point in a set of points, is an important and widely studied problem in many fields, and it has wide range of applications. In many of them, such as sensor databases, location-based services, face recognition, and mobile data, the location of data is imprecise. We therefore study nearest neighbor queries in a probabilistic framework in which the location of each input point is specified as a probability distribution function. We present efficient algorithms for (i) computing all points that are nearest neighbors of a query point with nonzero probability; (ii) estimating, within a specified additive error, the probability of a point being the nearest neighbor of a query point; (iii) using it to return the point that maximizes the probability being the nearest neighbor, or all the points with probabilities greater than some threshold to be the NN. We also present some experimental results to demonstrate the effectiveness of our approach.
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不确定条件下的最近邻搜索
最近邻搜索(NN)是在查询点集合中返回查询点的最近邻居,是许多领域广泛研究的一个重要问题,具有广泛的应用前景。在其中的许多领域,如传感器数据库、基于位置的服务、人脸识别和移动数据,数据的位置是不精确的。因此,我们在一个概率框架中研究最近邻查询,其中每个输入点的位置被指定为一个概率分布函数。我们提出了一种高效的算法:(i)以非零概率计算查询点的所有近邻点;(ii)在指定的加性误差范围内,估计一个点是查询点的最近邻居的概率;(iii)使用它返回最大概率成为最近邻居的点,或所有概率大于某个阈值的点作为神经网络。我们还提供了一些实验结果来证明我们的方法的有效性。
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CiteScore
4.40
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