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WorldTree V2: A corpus of science-domain structured explanations and inference patterns supporting multi-hop inference

Zhengnan Xie, Sebastian Thiem, Jaycie Martin, Elizabeth Wainwright, Steven Marmorstein, Peter Jansen

2020UA Campus Repository (The University of Arizona)41 citationsOpen Access PDF

Abstract

Explainable question answering for complex questions often requires combining large numbers of facts to answer a question while providing a human-readable explanation for the answer, a process known as multi-hop inference. Standardized science questions require combining an average of 6 facts, and as many as 16 facts, in order to answer and explain, but most existing datasets for multi-hop reasoning focus on combining only two facts, significantly limiting the ability of multi-hop inference algorithms to learn to generate large inferences. In this work we present the second iteration of the WorldTree project, a corpus of 5,114 standardized science exam questions paired with large detailed multi-fact explanations that combine core scientific knowledge and world knowledge. Each explanation is represented as a lexically-connected “explanation graph” that combines an average of 6 facts drawn from a semi-structured knowledge base of 9,216 facts across 66 tables. We use this explanation corpus to author a set of 344 high-level science domain inference patterns similar to semantic frames supporting multi-hop inference. Together, these resources provide training data and instrumentation for developing many-fact multi-hop inference models for question answering. © European Language Resources Association (ELRA), licensed under CC-BY-NC

Topics & Concepts

InferenceComputer scienceQuestion answeringArtificial intelligenceNatural language processingKnowledge baseData scienceMachine learningInformation retrievalTopic ModelingNatural Language Processing TechniquesBiomedical Text Mining and Ontologies
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