大规模搜索引擎中基于频繁项集挖掘的交集缓存

Wanwan Zhou, Ruixuan Li, Xinhua Dong, Zhiyong Xu, Weijun Xiao
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引用次数: 6

摘要

缓存是大规模web搜索引擎中的一种有效优化,它通过利用缓存位置尽可能地减少存储系统的底层I/O负担。结果缓存和发布列表缓存是常用的方法。但是,它们不能很好地处理长查询。交叉缓存中使用的策略效率低下,对于不同的应用程序灵活性差。本文分析了典型搜索引擎中查询词交集的特点,提出了一种新的三层缓存架构TLMCA,该架构将交集缓存、结果缓存和发布列表缓存结合在内存中。在TLMCA中,我们引入了基于Top-N频繁项集挖掘的交集缓存数据选择策略,并设计了基于增量频繁项集挖掘的交集缓存数据替换策略。实验结果表明,与两级缓存相比,所提出的交叉缓存选择和替换策略可使TLMCA检索性能提高27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intersection Cache Based on Frequent Itemset Mining in Large Scale Search Engines
Caching is an effective optimization in large scale web search engines, which is to reduce the underlying I/O burden of storage systems as far as possible by leveraging cache localities. Result cache and posting list cache are popular used approaches. However, they cannot perform well with long queries. The policies used in intersection cache are inefficient with poor flexibility for different applications. In this paper, we analyze the characteristics of query term intersections in typical search engines, and present a novel three-level cache architecture, called TLMCA, which combines the intersection cache, result cache, and posting list cache in memory. In TLMCA, we introduce an intersection cache data selection policy based on the Top-N frequent itemset mining, and design an intersection cache data replacement policy based on incremental frequent itemset mining. The experimental results demonstrate that the proposed intersection cache selection and replacement policies used in TLMCA can improve the retrieval performance by up to 27% compared to the two-level cache.
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