Call for Papers
Topics and motivation
We welcome any contributions on ongoing research at the interface of causality and time series modeling, including but not limited to:
Causal structure learning on time series data
Causal effect estimation, from adjustment to do-calculus, on time series
Counterfactual reasoning on time series
Interventions for time-dependent causal models
Time series root cause analysis
Causal representation learning for time series
Causal modeling of time-scale or frequency-dependent relations
Frequency-space causal inference and structure learning
Dynamical systems-based causal inference
Stochastic process-based causal inference
Benchmarks simulating real-world challenges
Example applications from different scientific domains (Earth sciences, neuroscience, economy, etc)
Formatting and submission instructions
We invite submissions on on-going research that have not yet been published in a venue with proceedings. While we welcome unfinished work, submissions in this track should contain original ideas, new connections between research fields, or novel results. The main body of the submission,including figures and tables, must not exceed 8 pages plus one additional page for references. There is no page restriction for supplementary material. Reviewers will be asked to judge the main body of the paper and will not be required to read the supplementary material.
Papers should be submitted anonymously as a single pdf to the OpenReview submission portal;
Papers should be formatted using the workshop’s style file.
All papers will undergo double-blind peer review. A subset of the accepted papers will be invited for a contributed talk; all other accepted papers will be invited to be presented at the poster sessions. The workshop will not have proceedings.
Important dates
Submission Start: May 01 2023 11:59AM UTC-0 (April 30 2023 23:59 UTC-12)
Submission Deadline: June 01 2023 11:59AM UTC-0 (May 31 2023 23:59 UTC-12) June 03 2023 11:59AM UTC-0 (June 2 2023 23:59 UTC-12)
Author notification: July 5 2023 11:59AM UTC-0 (July 4 2023 23:59 UTC-12).