PyTorch implementation for the Neuro-Symbolic Concept Learner (NS-CL).
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Updated
Oct 24, 2020 - Python
PyTorch implementation for the Neuro-Symbolic Concept Learner (NS-CL).
Ontolearn is an open-source software library for explainable structured machine learning in Python. It learns OWL class expressions from positive and negative examples.
ZeroC is a neuro-symbolic method that trained with elementary visual concepts and relations, can zero-shot recognize and acquire more complex, hierarchical concepts, even across domains
A novel approach to learning concept embeddings and approximate reasoning in ALC knowledge bases with deep neural networks
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Library for hierarchical concept composition and reasoning
Some of the most popular Machine Learning Concepts.
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Official implementation of ICLR 2023 paper "A Minimalist Dataset for Systematic Generalization of Perception, Syntax, and Semantics"
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