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arxiv: 2009.03420 · v3 · pith:EK3F4KDG · submitted 2020-09-07 · cs.AI

A Hybrid Neuro-Symbolic Approach for Complex Event Processing

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classification cs.AI
keywords approachcomplexeventnetworkneuraltrainingdataevents
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Training a model to detect patterns of interrelated events that form situations of interest can be a complex problem: such situations tend to be uncommon, and only sparse data is available. We propose a hybrid neuro-symbolic architecture based on Event Calculus that can perform Complex Event Processing (CEP). It leverages both a neural network to interpret inputs and logical rules that express the pattern of the complex event. Our approach is capable of training with much fewer labelled data than a pure neural network approach, and to learn to classify individual events even when training in an end-to-end manner. We demonstrate this comparing our approach against a pure neural network approach on a dataset based on Urban Sounds 8K.

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