Sortability of Time Series Data
Abstract
Evaluating the performance of causal discovery algorithms that aim to find causal relationships between time-dependent processes remains a challenging topic. In this paper, we show that certain characteristics of datasets, such as varsortability (Reisach et al. 2021) and R2-sortability (Reisach et al. 2023), also occur in datasets for autocorrelated stationary time series. We illustrate this empirically using four types of data: simulated data based on SVAR models and Erdős-Rényi graphs, the data used in the 2019 causality-for-climate challenge (Runge et al. 2019), real-world river stream datasets, and real-world data generated by the Causal Chamber of (Gamella et al. 2024). To do this, we adapt var- and R2-sortability to time series data. We also investigate the extent to which the performance of continuous score-based causal discovery methods goes hand in hand with high sortability. Arguably, our most surprising finding is that the investigated real-world datasets exhibit high varsortability and low R2-sortability indicating that scales may carry a significant amount of causal information.
Cite
Text
Lohse and Wahl. "Sortability of Time Series Data." Transactions on Machine Learning Research, 2025.Markdown
[Lohse and Wahl. "Sortability of Time Series Data." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/lohse2025tmlr-sortability/)BibTeX
@article{lohse2025tmlr-sortability,
title = {{Sortability of Time Series Data}},
author = {Lohse, Christopher and Wahl, Jonas},
journal = {Transactions on Machine Learning Research},
year = {2025},
url = {https://mlanthology.org/tmlr/2025/lohse2025tmlr-sortability/}
}