Publication | Open Access
A Semantic Loss Function for Deep Learning with Symbolic Knowledge
70
Citations
38
References
2017
Year
Artificial IntelligenceGeometric LearningEngineeringMachine LearningNeural NetworkAi FoundationAutoencodersSymbolic KnowledgeData ScienceSymbolic LearningMachine Learning ModelKnowledge DiscoverySemantic Loss FunctionLoss FunctionComputer ScienceSymbolic Machine LearningDeep LearningKnowledge DistillationAutomated Reasoning
This paper develops a novel methodology for using symbolic knowledge in deep learning. From first principles, we derive a semantic loss function that bridges between neural output vectors and logical constraints. This loss function captures how close the neural network is to satisfying the constraints on its output. An experimental evaluation shows that it effectively guides the learner to achieve (near-)state-of-the-art results on semi-supervised multi-class classification. Moreover, it significantly increases the ability of the neural network to predict structured objects, such as rankings and paths. These discrete concepts are tremendously difficult to learn, and benefit from a tight integration of deep learning and symbolic reasoning methods.
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