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NELLIE: A Neuro-Symbolic Inference Engine for Grounded, Compositional, and Explainable Reasoning

A paper proposing a new approach to question answering using neural language modeling and symbolic reasoning.

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NELLIE: A Neuro-Symbolic Inference Engine for Grounded, Compositional, and Explainable Reasoning

By Nathaniel Weir, Clark, Peter, Van Durme, BenjaminarXiv (Cornell University)
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The authors present NELLIE, a system that combines neural language modeling with symbolic reasoning to answer questions. This approach is grounded in natural language corpora and produces human-interpretable proof trees.

The system outperforms state-of-the-art reasoners while providing knowledge-grounded explanations.

Abstract

The authors present NELLIE, a system that combines neural language modeling with symbolic reasoning to answer questions. This approach is grounded in natural language corpora and produces human-interpretable proof trees. The system outperforms state-of-the-art reasoners while providing knowledge-grounded explanations.

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neuro-symbolic reasoninginference enginequestion answeringgrounded explanationssymbolic reasoningLarge Language ModelsRetrieval & RAGSemantic InteroperabilityAI Agents
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