Index compression through document reordering

Daniel K. Blandford, G. Blelloch
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引用次数: 136

Abstract

An important concern in the design of search engines is the construction of an inverted index. An inverted index, also called a concordance, contains a list of documents (or posting list) for every possible search term. These posting lists are usually compressed with difference coding. Difference coding yields the best compression when the lists to be coded have high locality. Coding methods have been designed to specifically take advantage of locality in inverted indices. Here, we describe an algorithm to permute the document numbers so as to create locality in an inverted index. This is done by clustering the documents. Our algorithm, when applied to the TREC ad hoc database (disks 4 and 5), improves the performance of the best difference coding algorithm we found by fourteen percent. The improvement increases as the size of the index increases, so we expect that greater improvements would be possible on larger datasets.
通过文档重新排序来压缩索引
在搜索引擎的设计中,一个重要的关注点是反向索引的构建。倒排索引,也称为索引,包含每个可能搜索词的文档列表(或发布列表)。这些张贴列表通常用不同的编码进行压缩。当要编码的列表具有较高的局部性时,差异编码产生最佳压缩。编码方法已经被设计为专门利用倒排索引中的局部性。在这里,我们描述了一种算法来排列文档号,以便在倒排索引中创建局部性。这是通过聚集文档来完成的。当将我们的算法应用于TREC特设数据库(磁盘4和5)时,我们发现的最佳差异编码算法的性能提高了14%。改进随着索引大小的增加而增加,所以我们期望在更大的数据集上有更大的改进。
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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