Timezone: »
Predicting the dependencies between observations from multiple time series is critical for applications such as anomaly detection, financial risk management, causal analysis, or demand forecasting. However, the computational and numerical difficulties of estimating time-varying and high-dimensional covariance matrices often limits existing methods to handling at most a few hundred dimensions or requires making strong assumptions on the dependence between series. We propose to combine an RNN-based time series model with a Gaussian copula process output model with a low-rank covariance structure to reduce the computational complexity and handle non-Gaussian marginal distributions. This permits to drastically reduce the number of parameters and consequently allows the modeling of time-varying correlations of thousands of time series. We show on several real-world datasets that our method provides significant accuracy improvements over state-of-the-art baselines and perform an ablation study analyzing the contributions of the different components of our model.
Author Information
David Salinas (Naverlabs Europe)
Michael Bohlke-Schneider (Amazon)
Laurent Callot (Amazon)
Roberto Medico (Ghent University)
Jan Gasthaus (Amazon.com)
More from the Same Authors
-
2021 : Deep Generative model with Hierarchical Latent Factors for Timeseries Anomaly Detection »
Cristian Challu · Peihong Jiang · Ying Nian Wu · Laurent Callot -
2021 : On Symmetries in Variational Bayesian Neural Nets »
Richard Kurle · Tim Januschowski · Jan Gasthaus · Bernie Wang -
2021 : Deep Generative model with Hierarchical Latent Factors for Timeseries Anomaly Detection »
Cristian Challu · Peihong Jiang · Ying Nian Wu · Laurent Callot -
2021 Poster: Detecting Anomalous Event Sequences with Temporal Point Processes »
Oleksandr Shchur · Ali Caner Turkmen · Tim Januschowski · Jan Gasthaus · Stephan Günnemann -
2021 Poster: Probabilistic Forecasting: A Level-Set Approach »
Hilaf Hasson · Bernie Wang · Tim Januschowski · Jan Gasthaus -
2021 Poster: Online false discovery rate control for anomaly detection in time series »
Quentin Rebjock · Baris Kurt · Tim Januschowski · Laurent Callot -
2020 Poster: Deep Rao-Blackwellised Particle Filters for Time Series Forecasting »
Richard Kurle · Syama Sundar Rangapuram · Emmanuel de Bézenac · Stephan Günnemann · Jan Gasthaus -
2020 Poster: Normalizing Kalman Filters for Multivariate Time Series Analysis »
Emmanuel de Bézenac · Syama Sundar Rangapuram · Konstantinos Benidis · Michael Bohlke-Schneider · Richard Kurle · Lorenzo Stella · Hilaf Hasson · Patrick Gallinari · Tim Januschowski -
2019 : Coffee/Poster session 2 »
Xingyou Song · Puneet Mangla · David Salinas · Zhenxun Zhuang · Leo Feng · Shell Xu Hu · Raul Puri · Wesley Maddox · Aniruddh Raghu · Prudencio Tossou · Mingzhang Yin · Ishita Dasgupta · Kangwook Lee · Ferran Alet · Zhen Xu · Jörg Franke · James Harrison · Jonathan Warrell · Guneet Dhillon · Arber Zela · Xin Qiu · Julien Niklas Siems · Russell Mendonca · Louis Schlessinger · Jeffrey Li · Georgiana Manolache · Debojyoti Dutta · Lucas Glass · Abhishek Singh · Gregor Koehler -
2018 Poster: Deep State Space Models for Time Series Forecasting »
Syama Sundar Rangapuram · Matthias W Seeger · Jan Gasthaus · Lorenzo Stella · Bernie Wang · Tim Januschowski -
2016 Poster: Bayesian Intermittent Demand Forecasting for Large Inventories »
Matthias W Seeger · David Salinas · Valentin Flunkert -
2016 Oral: Bayesian Intermittent Demand Forecasting for Large Inventories »
Matthias W Seeger · David Salinas · Valentin Flunkert