Dynamic Window-level Granger Causality of Multi-channel Time Series
read the original abstract
Granger causality method analyzes the time series causalities without building a complex causality graph. However, the traditional Granger causality method assumes that the causalities lie between time series channels and remain constant, which cannot model the real-world time series data with dynamic causalities along the time series channels. In this paper, we present the dynamic window-level Granger causality method (DWGC) for multi-channel time series data. We build the causality model on the window-level by doing the F-test with the forecasting errors on the sliding windows. We propose the causality indexing trick in our DWGC method to reweight the original time series data. Essentially, the causality indexing is to decrease the auto-correlation and increase the cross-correlation causal effects, which improves the DWGC method. Theoretical analysis and experimental results on two synthetic and one real-world datasets show that the improved DWGC method with causality indexing better detects the window-level causalities.
This paper has not been read by Pith yet.
Forward citations
Cited by 1 Pith paper
-
Partial Identification under High-Dimensional Potential Outcomes and Confounders via Optimal Transport
A subspace-decomposed optimal transport estimator using sliced Wasserstein distance on residuals to tighten partial identification bounds in high dimensions.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.