快速候选生成两阶段文档排名:帖子列表交集与布隆过滤器

N. Asadi, Jimmy J. Lin
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引用次数: 22

摘要

大多数现代网络搜索引擎采用两阶段排序策略:使用“廉价”但低质量的评分函数生成候选文档列表,然后使用“昂贵”但高质量的方法(通常是机器学习)重新排序。本文重点研究了在此背景下联合查询处理的候选对象生成问题。我们描述并评估了一种快速、近似的基于Bloom过滤器的帖子列表交叉算法。由于现代学习排序技术的力量和对早期精度的强调,可以在不损失端到端检索效率的情况下实现显着的加速。探索揭示了丰富的设计空间,其中可以根据特定的硬件配置和应用场景平衡有效性和效率。
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Fast candidate generation for two-phase document ranking: postings list intersection with bloom filters
Most modern web search engines employ a two-phase ranking strategy: a candidate list of documents is generated using a "cheap" but low-quality scoring function, which is then reranked by an "expensive" but high-quality method (usually machine-learned). This paper focuses on the problem of candidate generation for conjunctive query processing in this context. We describe and evaluate a fast, approximate postings list intersection algorithms based on Bloom filters. Due to the power of modern learning-to-rank techniques and emphasis on early precision, significant speedups can be achieved without loss of end-to-end retrieval effectiveness. Explorations reveal a rich design space where effectiveness and efficiency can be balanced in response to specific hardware configurations and application scenarios.
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