Litcius/Paper detail

NeurASP: Embracing Neural Networks into Answer Set Programming

Zhun Yang, Adam Ishay, Joohyung Lee

2020114 citationsDOIOpen Access PDF

Abstract

We present NeurASP, a simple extension of answer set programs by embracing neural networks. By treating the neural network output as the probability distribution over atomic facts in answer set programs, NeurASP provides a simple and effective way to integrate sub-symbolic and symbolic computation. We demonstrate how NeurASP can make use of a pre-trained neural network in symbolic computation and how it can improve the neural network's perception result by applying symbolic reasoning in answer set programming. Also, NeurASP can make use of ASP rules to train a neural network better so that a neural network not only learns from implicit correlations from the data but also from the explicit complex semantic constraints expressed by the rules.

Topics & Concepts

Computer scienceArtificial neural networkSet (abstract data type)Simple (philosophy)Extension (predicate logic)Artificial intelligenceTheoretical computer scienceComputationAnswer set programmingModels of neural computationMachine learningAlgorithmProgramming languageEpistemologyPhilosophyLogic, Reasoning, and KnowledgeMulti-Agent Systems and NegotiationTopic Modeling
NeurASP: Embracing Neural Networks into Answer Set Programming | Litcius