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Leveraging Abstract Meaning Representation for Knowledge Base Question Answering

3 December 2020
Pavan Kapanipathi
Ibrahim Abdelaziz
Srinivas Ravishankar
Salim Roukos
Alexander G. Gray
Ramón Fernández Astudillo
Maria Chang
Cristina Cornelio
Saswati Dana
Achille Fokoue
Dinesh Garg
A. Gliozzo
Sairam Gurajada
Hima P. Karanam
Naweed Khan
Dinesh Khandelwal
Young-Suk Lee
Yunyao Li
F. Luus
Ndivhuwo Makondo
Nandana Mihindukulasooriya
Tahira Naseem
S. Neelam
Lucian Popa
Revanth Reddy Gangi Reddy
Ryan Riegel
Gaetano Rossiello
Udit Sharma
G P Shrivatsa Bhargav
Mo Yu
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Abstract

Knowledge base question answering (KBQA)is an important task in Natural Language Processing. Existing approaches face significant challenges including complex question understanding, necessity for reasoning, and lack of large end-to-end training datasets. In this work, we propose Neuro-Symbolic Question Answering (NSQA), a modular KBQA system, that leverages (1) Abstract Meaning Representation (AMR) parses for task-independent question understanding; (2) a simple yet effective graph transformation approach to convert AMR parses into candidate logical queries that are aligned to the KB; (3) a pipeline-based approach which integrates multiple, reusable modules that are trained specifically for their individual tasks (semantic parser, entity andrelationship linkers, and neuro-symbolic reasoner) and do not require end-to-end training data. NSQA achieves state-of-the-art performance on two prominent KBQA datasets based on DBpedia (QALD-9 and LC-QuAD1.0). Furthermore, our analysis emphasizes that AMR is a powerful tool for KBQA systems.

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