Range Query Using Learning-Aware RPS in DHT-Based Peer-to-Peer Networks

Ze Deng, D. Feng, Ke Zhou, Zhan Shi, Chao Luo
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引用次数: 3

Abstract

Range query in Peer-to-Peer networks based on Distributed Hash Table (DHT) is still an open problem. The traditional way uses order-preserving hashing functions to create value indexes that are placed and stored on the corresponding peers to support range query. The way, however, suffers from high index maintenance costs. To avoid the issue, a scalable blind search method over DHTs - recursive partition search (RPS) can be used. But, RPS still easily incurs high network overhead as network size grows. Thus, in this paper, a learning-aware RPS (LARPS) is proposed to overcome the disadvantages of two approaches above mentioned. Extensive experiments show LARPS is a scalable and robust approach for range query, especially in the following cases: a) query range is wide, b) the requested resources follow Zipf distribution, and c) the number of required resources is small.
基于dht的对等网络中使用学习感知RPS的范围查询
基于分布式哈希表(DHT)的点对点网络中的范围查询仍然是一个有待解决的问题。传统的方法是使用保持顺序的散列函数来创建值索引,这些值索引放置并存储在相应的对等节点上,以支持范围查询。然而,这种方法的缺点是索引维护成本高。为了避免这个问题,可以使用一种可扩展的dht盲搜索方法——递归分区搜索(RPS)。但是,随着网络规模的增长,RPS仍然容易导致高网络开销。因此,本文提出了一种学习感知RPS (LARPS)来克服上述两种方法的缺点。大量实验表明,LARPS是一种可扩展且鲁棒的范围查询方法,特别是在以下情况下:查询范围大,请求资源遵循Zipf分布,所需资源数量少。
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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