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QaldGen: Towards Microbenchmarking of Question Answering Systems over Knowledge Graphs

机译:QaldGen:通过知识图实现问答系统的微基准测试

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Over the last years, a number of Knowledge Graph (KG) based Question Answering (QA) systems have been developed. Consequently, the series of Question Answering Over Linked Data (QALD1-QALD9) challenges and other datasets have been proposed to evaluate these systems. However, the QA datasets contain a fixed number of natural language questions and do not allow users to select micro benchmarking samples of the questions tailored towards specific use-cases. We propose QaldGen, a framework for microbenchmarking of QA systems over KGs which is able to select customised question samples from existing QA datasets. The framework is flexible enough to select question samples of varying sizes and according to the user-defined criteria on the most important features to be considered for QA benchmarking. This is achieved using different clustering algorithms. We compare state-of-the-art QA systems over knowledge graphs by using different QA benchmarking samples. The observed results show that specialised micro-benchmarking is important to pinpoint the limitations of the various QA systems and its components.
机译:在过去的几年中,已经开发了许多基于知识图(KG)的问答系统(QA)。因此,提出了一系列关于链接数据的问答(QALD1-QALD9)挑战和其他数据集来评估这些系统。但是,质量检查数据集包含固定数量的自然语言问题,并且不允许用户选择针对特定用例量身定制的问题的微观基准样本。我们建议使用QaldGen,这是一个用于KG上QA系统微基准测试的框架,该框架能够从现有QA数据集中选择定制的问题样本。该框架足够灵活,可以选择不同大小的问题样本,并根据用户定义的标准来确定质量保证基准测试所要考虑的最重要特征。这是通过使用不同的聚类算法来实现的。通过使用不同的QA基准测试样本,我们将最新的质量检查系统与知识图进行比较。观察到的结果表明,专门的微基准测试对于查明各种QA系统及其组件的局限性很重要。

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