论文标题

知识基础问题通过基于案例的推理对子图的回答

Knowledge Base Question Answering by Case-based Reasoning over Subgraphs

论文作者

Das, Rajarshi, Godbole, Ameya, Naik, Ankita, Tower, Elliot, Jia, Robin, Zaheer, Manzil, Hajishirzi, Hannaneh, McCallum, Andrew

论文摘要

由于所需的多种多样的,无限的推理模式,对知识库(KB)的问题回答(QA)是具有挑战性的。但是,我们假设在大型KB中,为各自的子图中的各个实体回答查询类型所需的推理模式。利用不同子图的当地社区之间的这种结构相似性,我们引入了一个半参数模型(CBR-SUBG),(i)一个非参数组件,对于每个查询,该组件都会动态地检索其他类似的$ k $ - $ - $ - $ - neartebries(KNN)培训询问,以及Query Pecixicixixixixixixixixific Compents and comparts and comparts and compartions and compartement and comment and and Compartement and Compartement and Compartement and Compartement and Compartement and and Compartement and and Compartement(II)。 KNN查询的子图,然后将其应用于目标查询的子图。我们还提出了一种自适应子图收集策略,以选择一个特定于查询的compact子图,从而使我们可以扩展到包含数十亿个事实的完整freebase kb。我们表明,CBR-SUBG可以回答需要子图推理模式的查询,并在几个KBQA基准上的最佳型号竞争性能。我们的子图集策​​略还会产生更紧凑的子图(例如55 \%的webqsp尺寸降低,同时将答案召回率增加4.85 \%)\ footNote {code,code,code,model和subgraphs,请\ url {https://github.com/github.com/rajarshd/crrajarshd/cbr-subg}}}}}}}}}}。

Question answering (QA) over knowledge bases (KBs) is challenging because of the diverse, essentially unbounded, types of reasoning patterns needed. However, we hypothesize in a large KB, reasoning patterns required to answer a query type reoccur for various entities in their respective subgraph neighborhoods. Leveraging this structural similarity between local neighborhoods of different subgraphs, we introduce a semiparametric model (CBR-SUBG) with (i) a nonparametric component that for each query, dynamically retrieves other similar $k$-nearest neighbor (KNN) training queries along with query-specific subgraphs and (ii) a parametric component that is trained to identify the (latent) reasoning patterns from the subgraphs of KNN queries and then apply them to the subgraph of the target query. We also propose an adaptive subgraph collection strategy to select a query-specific compact subgraph, allowing us to scale to full Freebase KB containing billions of facts. We show that CBR-SUBG can answer queries requiring subgraph reasoning patterns and performs competitively with the best models on several KBQA benchmarks. Our subgraph collection strategy also produces more compact subgraphs (e.g. 55\% reduction in size for WebQSP while increasing answer recall by 4.85\%)\footnote{Code, model, and subgraphs are available at \url{https://github.com/rajarshd/CBR-SUBG}}.

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