Discovering Nonlinear Relations with Minimum Predictive Information Regularization
2020-01-07Code Available1· sign in to hype
Tailin Wu, Thomas Breuel, Michael Skuhersky, Jan Kautz
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- github.com/tailintalent/causalOfficialIn paperpytorch★ 23
Abstract
Identifying the underlying directional relations from observational time series with nonlinear interactions and complex relational structures is key to a wide range of applications, yet remains a hard problem. In this work, we introduce a novel minimum predictive information regularization method to infer directional relations from time series, allowing deep learning models to discover nonlinear relations. Our method substantially outperforms other methods for learning nonlinear relations in synthetic datasets, and discovers the directional relations in a video game environment and a heart-rate vs. breath-rate dataset.