分布式媒体冗余索引均衡搜索空间分区

André Mourão, João Magalhães
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引用次数: 1

摘要

本文研究了媒体信息的均衡冗余索引问题。我们的目标是对搜索索引进行分区和分发,利用分布式系统的特性:跨节点的均衡负载、节点停机时的冗余以及并发查询下的高效节点使用。我们采用一种信息压缩方法来解决这个问题,并建议用过完整码本来表示数据,其中每个文档仅由几个码字表示,索引节点负责几个码字。量化算法的设计是为了尽可能地拟合原始数据,导致偏向于符合数据主要方向的码字。在本文中,我们提出了均衡KSVD (B-KSVD)算法,该算法根据数据的全局分布,将数据分配到均衡数量的码字上。索引实验表明,B-KSVD只需检查分布在10个分区上的完整索引的1%,就可以达到38%的1-召回率。基于k-means的传统方法要么需要使用更大的码本,要么需要检查索引的更大部分,以达到相同的检索性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Balanced Search Space Partitioning for Distributed Media Redundant Indexing
This paper addresses the problem of balanced, redundant indexing of media information. Our goal is to partition and distribute the search index, taking advantage of the distributed systems properties: balanced load across nodes, redundancy on node down and efficient node usage under concurrent querying. We follow an information compression approach to solve this problem and propose to represent data with overcomplete codebooks, where each document is represented by only a few codewords and an indexing node is responsible for several codewords. Quantization algorithms are designed to fit the original data as best as possible, leading to bias towards codewords that fit the principal directions of data. In this paper, we propose the balanced KSVD (B-KSVD) algorithm, that distributes the allocation of data across a balanced number of codewords, according to the global distribution of data. Indexing experiments showed that B-KSVD can achieve 38% 1-recall by inspecting only 1% of the full index, distributed over 10 partitions. Traditional methods based on k-means need to either use larger codebooks or to inspect a larger portion of the index to achieve the same retrieval performance.
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