快速贪婪分布式算法的快速随机剪枝

Saurav Pandit, S. Pemmaraju
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引用次数: 10

摘要

我们首先定义一个涉及卖方和买方的修剪过程。目标是快速选择卖家的一个子集,使这些卖家带入市场的产品具有较小的成本比,即所选卖家产品的总成本与感兴趣的买家愿意支付的金额之比。正如这里所建模的那样,修剪过程可以用来加速贪婪算法的分布式实现(例如,对于最小支配集,设施位置等)。我们给出了一个随机修剪过程的实例,对于任意正k,在O(k)个通信轮中运行O(log N)个大小的消息,产生O(Nc/k)的代价比。这里N是卖家数量和买家数量的乘积c是一个很小的常数。以这种O(k)轮剪枝算法为基础,我们推导了几种简单、贪婪、O(k)轮的MDS和设施位置分布近似算法(包括度量版本和非度量版本)。我们的算法在多对数轮中实现最佳近似比率,并从最佳已知近似因子中剔除“对数因子”,通常使用lp四舍五入技术实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid randomized pruning for fast greedy distributed algorithms
We start by defining a pruning process involving sellers on one side and buyers on the other. The goal is to quickly select a subset of the sellers so that the products that these sellers bring to the market has small cost ratio, i.e., the ratio of the total cost of the selected sellers' products to amount that interested buyers are willing to pay. As modeled here, the pruning process can be used to speed up distributed implementations of greedy algorithms (e.g., for minimum dominating set, facility location, etc). We present a randomized instance of the pruning process that, for any positive k, runs in O(k) communication rounds with O(log N)-sized messages, yielding a cost ratio of O(Nc/k). Here N is the product of the number of sellers and number of buyers and c is a small constant. Using this O(k)-round pruning algorithm as the basis, we derive several simple, greedy, O(k)-round distributed approximation algorithms for MDS and facility location (both metric and non-metric versions). Our algorithms achieve optimal approximation ratios in polylogarithmic rounds and shave a "logarithmic factor" off the best, known, approximation factor, typically achieved using LP-rounding techniques.
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