Neurosymbolic AI and its Taxonomy: a survey
- URL: http://arxiv.org/abs/2305.08876v2
- Date: Wed, 17 May 2023 13:43:58 GMT
- Title: Neurosymbolic AI and its Taxonomy: a survey
- Authors: Wandemberg Gibaut, Leonardo Pereira, Fabio Grassiotto, Alexandre
Osorio, Eder Gadioli, Amparo Munoz, Sildolfo Gomes, Claudio dos Santos
- Abstract summary: Neurosymbolic AI deals with models that combine symbolic processing, like classic AI, and neural networks.
This survey investigates research papers in this area during recent years and brings classification and comparison between the presented models as well as applications.
- Score: 48.7576911714538
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Neurosymbolic AI deals with models that combine symbolic processing, like
classic AI, and neural networks, as it's a very established area. These models
are emerging as an effort toward Artificial General Intelligence (AGI) by both
exploring an alternative to just increasing datasets' and models' sizes and
combining Learning over the data distribution, Reasoning on prior and learned
knowledge, and by symbiotically using them. This survey investigates research
papers in this area during recent years and brings classification and
comparison between the presented models as well as applications.
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