A survey on complex factual question answering

AI Open(2023)

引用 8|浏览160
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摘要
Answering complex factual questions has drawn a lot of attention. Researchers leverage various data sources to support complex QA, such as unstructured texts, structured knowledge graphs and relational databases, semi-structured web tables, or even hybrid data sources. However, although the ideas behind these approaches show similarity to some extent, there is not yet a consistent strategy to deal with various data sources. In this survey, we carefully examine how complex factual question answering has evolved across various data sources. We list the similarities among these approaches and group them into the analysis–extend–reason framework, despite the various question types and data sources that they focus on. We also address future directions for difficult factual question answering as well as the relevant benchmarks.
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关键词
Question answering,Complex question,Factual question,Knowledge base question answering,Text2SQL,Document-based question answering,Table question answering,Multi-source question answering
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