Causal Discovery with Attention-Based Convolutional Neural Networks

Machine Learning and Knowledge Extraction 2019 Meike NautaDoina BucurChristin Seifert

Having insight into the causal associations in a complex system facilitates decision making, e.g., for medical treatments, urban infrastructure improvements or financial investments. The amount of observational data grows, which enables the discovery of causal relationships between variables from observation of their behaviour in time... (read more)

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