Efficient Indexes for Diverse Top-k Range Queries

P. Agarwal, Stavros Sintos, Alex Steiger
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引用次数: 7

Abstract

Let P be a set of n (non-negatively) weighted points in Rd. We consider the problem of computing a subset of (at most) k diverse and high-valued points of P that lie inside a query range, a problem relevant to many areas such as search engines, recommendation systems, and online stores. The diversity and value of a set of points are measured as functions (say average or minimum) of their pairwise distances and weights, respectively. We study both bicriteria and constrained optimization problems. In the former, we wish to return a set of k points that maximize a weighted sum of their value and diversity measures, and in the latter, we wish to return a set of at most k points that maximize their value and satisfy a diversity constraint. We obtain three main types of results in this paper: Near-linear time (0.5-ε)-approximation algorithms for the bicriteria optimization problem in the offline setting. Near-linear size indexes for the bicriteria optimization problem that for a query rectangle return a (0.5-ε)-approximate solution in time O(k polylog(n)). The indexes can be constructed in O(n polylog(n)) time. Near-linear size indexes for answering constrained optimization range queries. For a query rectangle, a 0.5O(d)-approximate solution can be computed in O(k polylog(n)) time. If we allow some of the returned points to lie at most ε outside of the query rectangle then an (1-ε)-approximate solution can be computed in O(k polylog(n)) time. The indexes are constructed in O(n polylog(n)) and nO(1/εd) time, respectively.
不同Top-k范围查询的高效索引
设P是Rd中n个(非负)加权点的集合。我们考虑计算(最多)k个位于查询范围内的P的不同和高价值点的子集的问题,这个问题与许多领域相关,如搜索引擎,推荐系统和在线商店。一组点的多样性和值分别是它们的成对距离和权重的函数(比如平均值或最小值)。我们研究了双准则和约束优化问题。在前一种情况下,我们希望返回k个点的集合,这些点的值和多样性度量的加权和最大化,而在后一种情况下,我们希望返回最多k个点的集合,这些点的值最大化并满足多样性约束。本文主要得到三种结果:离线双准则优化问题的近似线性时间(0.5-ε)逼近算法;双准则优化问题的近线性尺寸索引,对于查询矩形,在时间O(k polylog(n))内返回(0.5-ε)-近似解。索引可以在O(n polylog(n))时间内构建。用于回答受限优化范围查询的近线性大小索引。对于一个查询矩形,0.5O(d)的近似解可以在O(k polylog(n))时间内计算出来。如果我们允许一些返回点位于查询矩形的最大为ε之外,则可以在O(k polylog(n))时间内计算出(1-ε)-近似解。指标分别在O(n polylog(n))和nO(1/εd)时间内构建。
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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