| Literature DB >> 29755201 |
Antti Hyttinen1, Sergey Plis2, Matti Järvisalo1, Frederick Eberhardt3, David Danks4.
Abstract
We consider causal structure estimation from time series data in which measurements are obtained at a coarser timescale than the causal timescale of the underlying system. Previous work has shown that such subsampling can lead to significant errors about the system's causal structure if not properly taken into account. In this paper, we first consider the search for system timescale causal structures that correspond to a given measurement timescale structure. We provide a constraint satisfaction procedure whose computational performance is several orders of magnitude better than previous approaches. We then consider finite-sample data as input, and propose the first constraint optimization approach for recovering system timescale causal structure. This algorithm optimally recovers from possible conflicts due to statistical errors. We then apply the method to real-world data, investigate the robustness and scalability of our method, consider further approaches to reduce underdetermination in the output, and perform an extensive comparison between different solvers on this inference problem. Overall, these advances build towards a full understanding of non-parametric estimation of system timescale causal structures from sub-sampled time series data.Entities:
Keywords: causal discovery; causality; constraint optimization; constraint satisfaction; graphical models; time series
Year: 2017 PMID: 29755201 PMCID: PMC5944866 DOI: 10.1016/j.ijar.2017.07.009
Source DB: PubMed Journal: Int J Approx Reason ISSN: 0888-613X Impact factor: 3.816