TL;DR
This structured review assesses whether Neuro-Symbolic AI approaches in NLP effectively achieve reasoning, generalization, interpretability, and transferability, highlighting the importance of logic compilation and the need for standardized benchmarks.
Contribution
The paper provides a comprehensive review of NeSy in NLP, analyzing factors influencing success and advocating for standardized reasoning definitions and benchmarks.
Findings
Logic compilation into neural networks enhances NeSy goals
No clear correlation between knowledge representation and success
Discrepancies in reasoning definitions affect conclusions
Abstract
Advocates for Neuro-Symbolic Artificial Intelligence (NeSy) assert that combining deep learning with symbolic reasoning will lead to stronger AI than either paradigm on its own. As successful as deep learning has been, it is generally accepted that even our best deep learning systems are not very good at abstract reasoning. And since reasoning is inextricably linked to language, it makes intuitive sense that Natural Language Processing (NLP), would be a particularly well-suited candidate for NeSy. We conduct a structured review of studies implementing NeSy for NLP, with the aim of answering the question of whether NeSy is indeed meeting its promises: reasoning, out-of-distribution generalization, interpretability, learning and reasoning from small data, and transferability to new domains. We examine the impact of knowledge representation, such as rules and semantic networks, language…
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