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arxiv: 2109.13430 · v1 · pith:2F7OE2U7new · submitted 2021-09-28 · 💻 cs.CL · cs.AI

SYGMA: System for Generalizable Modular Question Answering OverKnowledge Bases

classification 💻 cs.CL cs.AI
keywords knowledgebasesdatasetskbqaquestionreasoningtypesacross
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Knowledge Base Question Answering (KBQA) tasks that in-volve complex reasoning are emerging as an important re-search direction. However, most KBQA systems struggle withgeneralizability, particularly on two dimensions: (a) acrossmultiple reasoning types where both datasets and systems haveprimarily focused on multi-hop reasoning, and (b) across mul-tiple knowledge bases, where KBQA approaches are specif-ically tuned to a single knowledge base. In this paper, wepresent SYGMA, a modular approach facilitating general-izability across multiple knowledge bases and multiple rea-soning types. Specifically, SYGMA contains three high levelmodules: 1) KB-agnostic question understanding module thatis common across KBs 2) Rules to support additional reason-ing types and 3) KB-specific question mapping and answeringmodule to address the KB-specific aspects of the answer ex-traction. We demonstrate effectiveness of our system by evalu-ating on datasets belonging to two distinct knowledge bases,DBpedia and Wikidata. In addition, to demonstrate extensi-bility to additional reasoning types we evaluate on multi-hopreasoning datasets and a new Temporal KBQA benchmarkdataset on Wikidata, namedTempQA-WD1, introduced in thispaper. We show that our generalizable approach has bettercompetetive performance on multiple datasets on DBpediaand Wikidata that requires both multi-hop and temporal rea-soning

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Temp-R1: A Unified Autonomous Agent for Complex Temporal KGQA via Reverse Curriculum Reinforcement Learning

    cs.CL 2026-01 conditional novelty 7.0

    Temp-R1 uses reverse curriculum reinforcement learning to train an autonomous agent that achieves state-of-the-art results on temporal KGQA benchmarks by developing sophisticated reasoning on hard questions first.