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Bernhard Schölkopf: Learning Causal Mechanisms (ICLR invited talk) 

Steven Van Vaerenbergh
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Abstract: In machine learning, we use data to automatically find dependencies in the world, with the goal of predicting future observations. Most machine learning methods build on statistics, but one can also try to go beyond this, assaying causal structures underlying statistical dependencies. Can such causal knowledge help prediction in machine learning tasks? We argue that this is indeed the case, due to the fact that causal models are more robust to changes that occur in real world datasets. We discuss implications of causal models for machine learning tasks, focusing on an assumption of ‘independent mechanisms’.
ei.is.tuebingen.mpg.de/person/bs

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1 июл 2024

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Комментарии : 1   
@citiblocsMaster
@citiblocsMaster 6 лет назад
Brilliant. Causality is not very well understood and probably one of the keys to building better machine learning models
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