快速学习稀疏检索的优化引导遍历

Yifan Qiao, Yingrui Yang, Haixin Lin, Tao Yang
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引用次数: 2

摘要

最近的研究表明,bm25驱动的动态索引跳转可以极大地加速基于maxscore的基于DeepImpact派生的学习稀疏表示的文档检索。本文研究了在使用SPLADE和uniCOIL等其他模型检索top k时,这种遍历制导策略的有效性,并发现当BM25模型与学习权模型没有很好地对齐或检索深度k很小时,无约束BM25驱动的跳转可能会产生明显的相关性下降。本文在总结前人工作的基础上,对BM25导航索引遍历算法进行了优化,采用两级剪枝控制方案和模型对齐,实现了基于稀疏表示的快速检索。虽然可能会增加延迟的代价,但所提出的方案比没有BM25指导的原始MaxScore方法快得多,同时保留了相关性有效性。本文分析了该两级剪枝方案的竞争力,并评估了其在搜索多个测试数据集时在排序相关性和时间效率方面的权衡。
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Optimizing Guided Traversal for Fast Learned Sparse Retrieval
Recent studies show that BM25-driven dynamic index skipping can greatly accelerate MaxScore-based document retrieval based on the learned sparse representation derived by DeepImpact. This paper investigates the effectiveness of such a traversal guidance strategy during top k retrieval when using other models such as SPLADE and uniCOIL, and finds that unconstrained BM25-driven skipping could have a visible relevance degradation when the BM25 model is not well aligned with a learned weight model or when retrieval depth k is small. This paper generalizes the previous work and optimizes the BM25 guided index traversal with a two-level pruning control scheme and model alignment for fast retrieval using a sparse representation. Although there can be a cost of increased latency, the proposed scheme is much faster than the original MaxScore method without BM25 guidance while retaining the relevance effectiveness. This paper analyzes the competitiveness of this two-level pruning scheme, and evaluates its tradeoff in ranking relevance and time efficiency when searching several test datasets.
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