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QuaRel: A Dataset and Models for Answering Questions about Qualitative Relationships

机译:Quarel:数据集和模型,用于回答有关定性关系的问题

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Many natural language questions require recognizing and reasoning with qualitative relationships (e.g., in science, economics, and medicine), but are challenging to answer with corpus-based methods. Qualitative modeling provides tools that support such reasoning, but the semantic parsing task of mapping questions into those models has formidable challenges. We present QuaRel, a dataset of diverse story questions involving qualitative relationships that characterize these challenges, and techniques that begin to address them. The dataset has 2771 questions relating 19 different types of quantities. For example, "Jenny observes that the robot vacuum cleaner moves slower on the living room carpet than on the bedroom carpet. Which carpet has more friction?" We contribute (1) a simple and flexible conceptual framework for representing these kinds of questions; (2) the QuaRel dataset, including logical forms, exemplifying the parsing challenges; and (3) two novel models for this task, built as extensions of type-constrained semantic parsing. The first of these models (called QuaSP+) significantly outperforms off-the-shelf tools on QuaRel. The second (QuaSP+Zero) demonstrates zero-shot capability, i.e., the ability to handle new qualitative relationships without requiring additional training data, something not possible with previous models. This work thus makes inroads into answering complex, qualitative questions that require reasoning, and scaling to new relationships at low cost. The dataset and models are available at http://data.allenai.org/quarel.
机译:许多自然语言问题需要满足和推理定性关系(例如,科学,经济学和医学),但挑战基于语料库的方法挑战。定性建模提供支持这种推理的工具,但将问题映射到这些模型中的语义解析任务具有强大的挑战。我们呈现Quarel,一个不同的故事问题的数据集,涉及定性关系,表征这些挑战的特征,以及开始解决这些挑战的技术。数据集具有2771个问题,相关19种不同类型的数量。例如,“珍妮观察机器人的吸尘器在客厅地毯上移动速度较慢,而不是在卧室地毯上。哪个地毯有更多的摩擦?”我们为代表这些问题提供了一种简单而灵活的概念框架; (2)Quarel DataSet,包括逻辑表格,举例说明了解析挑战; (3)这项任务的两种新型模型,构建为类型约束语义解析的扩展。这些模型中的第一个(称为Quax +)显着优于Quarel上的现成工具。第二个(QuASP + Zero)演示了零拍摄能力,即处理新的定性关系的能力,而无需额外的培训数据,以前的模型不可能。因此,这项工作导致回答需要推理的复杂,定性问题,并以低成本缩放到新的关系。数据集和模型可在http://data.Allenai.org/quarel提供。

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