Approximating Aggregation Queries in Peer-to-Peer Networks

Benjamin Arai, Gautam Das, D. Gunopulos, V. Kalogeraki
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引用次数: 47

Abstract

Peer-to-peer databases are becoming prevalent on the Internet for distribution and sharing of documents, applications, and other digital media. The problem of answering large scale, ad-hoc analysis queries ― e.g., aggregation queries ― on these databases poses unique challenges. Exact solutions can be time consuming and difficult to implement given the distributed and dynamic nature of peer-to-peer databases. In this paper we present novel sampling-based techniques for approximate answering of ad-hoc aggregation queries in such databases. Computing a high-quality random sample of the database efficiently in the P2P environment is complicated due to several factors ― the data is distributed (usually in uneven quantities) across many peers, within each peer the data is often highly correlated, and moreover, even collecting a random sample of the peers is difficult to accomplish. To counter these problems, we have developed an adaptive two-phase sampling approach, based on random walks of the P2P graph as well as block-level sampling techniques. We present extensive experimental evaluations to demonstrate the feasibility of our proposed solutio
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对等网络中近似聚合查询
点对点数据库在Internet上越来越流行,用于分发和共享文档、应用程序和其他数字媒体。在这些数据库上回答大规模、特别的分析查询(例如聚合查询)的问题带来了独特的挑战。考虑到点对点数据库的分布式和动态性,精确的解决方案可能非常耗时且难以实现。在本文中,我们提出了一种新的基于抽样的技术来近似回答此类数据库中的特别聚合查询。由于以下几个因素,在P2P环境中高效地计算高质量的数据库随机样本是复杂的:数据分布在许多对等点上(通常数量不均匀),在每个对等点内数据通常是高度相关的,而且,即使收集对等点的随机样本也很难完成。为了解决这些问题,我们开发了一种基于P2P图的随机游走和块级采样技术的自适应两阶段采样方法。我们提出了广泛的实验评估,以证明我们提出的解决方案的可行性
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