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Unsupervised neural-symbolic integration

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Abstract
Symbolic has been long considered as a language of human intelligence while neural networks have advantages of robust computation and dealing with noisy data. The integration of neural-symbolic can offer better learning and reasoning while providing a means for interpretability through the representation of symbolic knowledge. Although previous works focus intensively on supervised feedforward neural networks, little has been done for the unsupervised counterparts. In this paper we show how to integrate symbolic knowledge into unsupervised neural networks. We exemplify our approach with knowledge in different forms, including propositional logic for DNA promoter prediction and first
Item Type: | Conference or Workshop Item (Paper) |
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Authors/Creators: | Tran, SN |
Keywords: | neural-symbolic |
Journal or Publication Title: | Proceedings of the 2017 International Joint Conference on Artificial Intelligence - Workshop on Explainable AI |
Copyright Information: | Copyright unknown |
Item Statistics: | View statistics for this item |
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