Nearest-neighbor searching under uncertainty

P. Agarwal, A. Efrat, Swaminathan Sankararaman, Wuzhou Zhang
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引用次数: 57

Abstract

Nearest-neighbor queries, which ask for returning the nearest neighbor of a query point in a set of points, are important and widely studied in many fields because of a wide range of applications. In many of these applications, 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 and/or query point is specified as a probability density function and the goal is to return the point that minimizes the expected distance, which we refer to as the expected nearest neighbor (ENN). We present methods for computing an exact ENN or an ε-approximate ENN, for a given error parameter 0 < ε 0 < 1, under different distance functions. These methods build an index of near-linear size and answer ENN queries in polylogarithmic or sublinear time, depending on the underlying function. As far as we know, these are the first nontrivial methods for answering exact or ε-approximate ENN queries with provable performance guarantees.
不确定条件下的最近邻搜索
最近邻查询是要求返回查询点集合中查询点的最近邻居,由于应用范围广泛,在许多领域都很重要并被广泛研究。在许多此类应用中,例如传感器数据库、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,我们在概率框架中研究最近邻查询,其中每个输入点和/或查询点的位置被指定为概率密度函数,目标是返回期望距离最小的点,我们将其称为期望最近邻(ENN)。对于给定误差参数0 < ε 0 < 1,在不同的距离函数下,我们给出了精确ENN或ε-近似ENN的计算方法。这些方法建立一个近线性大小的索引,并根据底层函数在多对数或亚线性时间内回答ENN查询。据我们所知,这些是第一批具有可证明性能保证的回答精确或ε-近似ENN查询的非平凡方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.40
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