AIOct 29, 2024

Mapping the Neuro-Symbolic AI Landscape by Architectures: A Handbook on Augmenting Deep Learning Through Symbolic Reasoning

arXiv:2410.22077v115 citationsh-index: 6
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of combining symbolic reasoning with deep learning for AI practitioners, but is incremental as it organizes existing work rather than introducing new methods.

This survey tackles the problem of integrating symbolic and neural methods in AI by mapping neuro-symbolic techniques into architectural families, providing a structured overview to help engineers augment neural networks and guide future research.

Integrating symbolic techniques with statistical ones is a long-standing problem in artificial intelligence. The motivation is that the strengths of either area match the weaknesses of the other, and $\unicode{x2013}$ by combining the two $\unicode{x2013}$ the weaknesses of either method can be limited. Neuro-symbolic AI focuses on this integration where the statistical methods are in particular neural networks. In recent years, there has been significant progress in this research field, where neuro-symbolic systems outperformed logical or neural models alone. Yet, neuro-symbolic AI is, comparatively speaking, still in its infancy and has not been widely adopted by machine learning practitioners. In this survey, we present the first mapping of neuro-symbolic techniques into families of frameworks based on their architectures, with several benefits: Firstly, it allows us to link different strengths of frameworks to their respective architectures. Secondly, it allows us to illustrate how engineers can augment their neural networks while treating the symbolic methods as black-boxes. Thirdly, it allows us to map most of the field so that future researchers can identify closely related frameworks.

Foundations

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