Neurosymbolic Deep Learning Semantics
Artur d'Avila Garcez, Simon Odense

TL;DR
This paper proposes a neurosymbolic framework using logic to provide semantics for deep learning, aiming to enhance AI's scientific understanding and knowledge extraction capabilities.
Contribution
It introduces a formal framework for semantic encoding that links neural networks and logic, unifying various existing approaches and addressing practical challenges.
Findings
Framework formalizes the mapping between neural networks and logic
Reviews prominent neural encoding and knowledge extraction techniques
Highlights difficulties in identifying semantic encoding in practice
Abstract
Artificial Intelligence (AI) is a powerful new language of science as evidenced by recent Nobel Prizes in chemistry and physics that recognized contributions to AI applied to those areas. Yet, this new language lacks semantics, which makes AI's scientific discoveries unsatisfactory at best. With the purpose of uncovering new facts but also improving our understanding of the world, AI-based science requires formalization through a framework capable of translating insight into comprehensible scientific knowledge. In this paper, we argue that logic offers an adequate framework. In particular, we use logic in a neurosymbolic framework to offer a much needed semantics for deep learning, the neural network-based technology of current AI. Deep learning and neurosymbolic AI lack a general set of conditions to ensure that desirable properties are satisfied. Instead, there is a plethora of…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Biomedical Text Mining and Ontologies · Topic Modeling
