Learning Spatial-Temporal Varying Graphs with Applications to Climate Data Analysis

Authors

  • Xi Chen Carnegie Mellon University
  • Yan Liu IBM T. J. Watson Research Center
  • Han Liu Carnegie Mellon University
  • Jaime Carbonell Carnegie Mellon University

DOI:

https://doi.org/10.1609/aaai.v24i1.7658

Keywords:

Graph Structure Learning, Spatial-Temporal Data Mining, Climate Data Analysis

Abstract

An important challenge in understanding climate change is to uncover the dependency relationships between various climate observations and forcing factors. Graphical lasso, a recently proposed L1 penalty based structure learning algorithm, has been proven successful for learning underlying dependency structures for the data drawn from a multivariate Gaussian distribution. However, climatological data often turn out to be non-Gaussian, e.g. cloud cover, precipitation, etc. In this paper, we examine nonparametric learning methods to address this challenge. In particular, we develop a methodology to learn dynamic graph structures from spatial-temporal data so that the graph structures at adjacent time or locations are similar. Experimental results demonstrate that our method not only recovers the underlying graph well but also captures the smooth variation properties on both synthetic data and climate data. An important challenge in understanding climate change is to uncover the dependency relationships between various climate observations and forcing factors. Graphical lasso, a recently proposed An important challenge in understanding climate change is to uncover the dependency relationships between various climate observations and forcing factors. Graphical lasso, a recently proposed L1 penalty based structure learning algorithm, has been proven successful for learning underlying dependency structures for the data drawn from a multivariate Gaussian distribution. However, climatological data often turn out to be non-Gaussian, e.g. cloud cover, precipitation, etc. In this paper, we examine nonparametric learning methods to address this challenge. In particular, we develop a methodology to learn dynamic graph structures from spatial-temporal data so that the graph structures at adjacent time or locations are similar. Experimental results demonstrate that our method not only recovers the underlying graph well but also captures the smooth variation properties on both synthetic data and climate data.

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Published

2010-07-03

How to Cite

Chen, X., Liu, Y., Liu, H., & Carbonell, J. (2010). Learning Spatial-Temporal Varying Graphs with Applications to Climate Data Analysis. Proceedings of the AAAI Conference on Artificial Intelligence, 24(1), 425-430. https://doi.org/10.1609/aaai.v24i1.7658