TEQUILA: Temporal Question Answering over Knowledge Bases

Zhen Jia, Abdalghani Abujabal, Rishiraj Saha Roy, Jannik Stroetgen, Gerhard Weikum

Abstract

Question answering over knowledge bases (KB-QA) poses challenges in handling complex questions that need to be decomposed into sub-questions. An important case, addressed here, is that of temporal questions, where cues for temporal relations need to be discovered and handled. We present TEQUILA, an enabler method for temporal QA that can run on top of any KB-QA engine. TEQUILA has four stages. It detects if a question has temporal intent. It decomposes and rewrites the question into non-temporal sub-questions and temporal constraints. Answers to sub-questions are then retrieved from the underlying KB-QA engine. Finally, TEQUILA uses constraint reasoning on temporal intervals to compute final answers to the full question. Comparisons against state-of-the-art baselines show the viability of our method.

Results

TaskDatasetMetricValueModel
Question AnsweringTempQuestionsF137.5AQQU+TEQUILA
Question AnsweringTempQuestionsHits@136.2AQQU+TEQUILA
Question AnsweringTempQuestionsF132QUINT+TEQUILA
Question AnsweringTempQuestionsHits@131.7QUINT+TEQUILA

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