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Neural-symbolic (NeSy) AI strives to empower machine learning and large language models with fast, reliable predictions that exhibit commonsense and trustworthy reasoning by seamlessly integrating neural and symbolic methods. With such a broad scope, several taxonomies have been proposed to categorize this integration, emphasizing knowledge representation, reasoning algorithms, and applications. We introduce a knowledge representation-agnostic taxonomy focusing on the neural-symbolic interface capturing methods that reason with probability, logic, and arithmetic constraints. Moreover, we derive expressions for gradients of a prominent class of learning losses and a formalization of reasoning and learning. Through a rigorous empirical analysis spanning three tasks, we show NeSy approaches reach up to a 37% improvement over neural baselines in a semi-supervised setting and a 19% improvement over GPT-4 on question-answering.
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Charles Dickens
U.S. National Science Foundation
Connor Pryor
University of California, Santa Cruz
Lise Getoor
University of California, Santa Cruz
Proceedings of the AAAI Symposium Series
University of California, Santa Cruz
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Dickens et al. (Mon,) studied this question.
synapsesocial.com/papers/68e694bdb6db64358761b661 — DOI: https://doi.org/10.1609/aaaiss.v3i1.31187