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QuerioDALI: Question Answering Over Dynamic and Linked Knowledge Graphs

机译:QuerioDALI:动态和链接的知识图上的问题解答

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We present a domain-agnostic system for Question Answering over multiple semi-structured and possibly linked datasets without the need of a training corpus. The system is motivated by an industry use-case where Enterprise Data needs to be combined with a large body of Open Data to fulfill information needs not satisfied by prescribed application data models. Our proposed Question Answering pipeline combines existing components with novel methods to perform, in turn, linguistic analysis of a query, named entity extraction, entity/graph search, fusion and ranking of possible answers. We evaluate QuerioDALI with two open-domain benchmarks and a biomedical one over Linked Open Data sources, and show that our system produces comparable results to systems that require training data and are domain-dependent. In addition, we analyze the current challenges and shortcomings.
机译:我们提出了一个领域不可知的系统,可以在不需要训练语料的情况下对多个半结构化和可能链接的数据集进行问答。该系统受行业用例的激励,在该案例中,企业数据需要与大量开放数据结合起来,以满足规定的应用程序数据模型无法满足的信息需求。我们建议的问答管道将现有组件与新颖的方法结合起来,依次执行查询的语言分析,命名实体提取,实体/图形搜索,融合和可能答案的排名。我们使用链接的开放数据源上的两个开放域基准和一个生物医学基准来评估QuerioDALI,并显示我们的系统所产生的结果与需要训练数据且依赖于域的系统具有可比性。此外,我们分析了当前的挑战和不足。

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