cs.AI updates on arXiv.org 09月18日
DAQu:数据库增强查询表示方法提升信息检索
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本文提出一种名为DAQu的数据库增强查询表示方法,通过在多个表中扩展查询相关元数据,并结合图集编码策略,显著提升信息检索性能。

arXiv:2406.16013v2 Announce Type: replace-cross Abstract: Information retrieval models that aim to search for documents relevant to a query have shown multiple successes, which have been applied to diverse tasks. Yet, the query from the user is oftentimes short, which challenges the retrievers to correctly fetch relevant documents. To tackle this, previous studies have proposed expanding the query with a couple of additional (user-related) features related to it. However, they may be suboptimal to effectively augment the query, and there is plenty of other information available to augment it in a relational database. Motivated by this fact, we present a novel retrieval framework called Database-Augmented Query representation (DAQu), which augments the original query with various (query-related) metadata across multiple tables. In addition, as the number of features in the metadata can be very large and there is no order among them, we encode them with the graph-based set-encoding strategy, which considers hierarchies of features in the database without order. We validate our DAQu in diverse retrieval scenarios, demonstrating that it significantly enhances overall retrieval performance over relevant baselines. Our code is available at \href{https://github.com/starsuzi/DAQu}{this https URL}.

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信息检索 数据库增强 查询表示 图集编码 检索性能
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