Causal Discovery from Temporally Aggregated Time Series.

Uncertain Artif Intell

School of Information Technologies, FEIT, University of Sydney, NSW, Australia.

Published: August 2017

AI Article Synopsis

  • Understanding the challenge of discovering causal structures in dynamical systems using observed time series data, which can be distorted by subsampling or temporal aggregation.
  • Recent advancements have improved our ability to identify causal relations from subsampled data, while aggregating data complicates the process further.
  • The paper proposes a method for recovering the original causal relationships from aggregated data by assuming it follows a vector autoregressive model, demonstrating that with certain conditions, the causal structure can be identified and providing a new estimation technique validated on synthetic and real datasets.

Article Abstract

Discovering causal structure of a dynamical system from observed time series is a traditional and important problem. In many practical applications, observed data are obtained by applying subsampling or temporally aggregation to the original causal processes, making it difficult to discover the underlying causal relations. Subsampling refers to the procedure that for every consecutive observations, one is kept, the rest being skipped, and recently some advances have been made in causal discovery from such data. With temporal aggregation, the local averages or sums of consecutive, non-overlapping observations in the causal process are computed as new observations, and causal discovery from such data is even harder. In this paper, we investigate how to recover causal relations at the original causal frequency from temporally aggregated data when is known. Assuming the time series at the causal frequency follows a vector autoregressive (VAR) model, we show that the causal structure at the causal frequency is identifiable from aggregated time series if the noise terms are independent and non-Gaussian and some other technical conditions hold. We then present an estimation method based on non-Gaussian state-space modeling and evaluate its performance on both synthetic and real data.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5995575PMC

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