Training and Evaluating Causal Forecasting Models for Time-Series
Deep learning time-series models are often used to make forecasts that inform downstream decisions. Since these decisions can differ from those in the training set, there is an implicit requirement that time-series models will generalize outside of their training distribution. Despite this core requ...
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Zusammenfassung: | Deep learning time-series models are often used to make forecasts that inform
downstream decisions. Since these decisions can differ from those in the
training set, there is an implicit requirement that time-series models will
generalize outside of their training distribution. Despite this core
requirement, time-series models are typically trained and evaluated on
in-distribution predictive tasks. We extend the orthogonal statistical learning
framework to train causal time-series models that generalize better when
forecasting the effect of actions outside of their training distribution. To
evaluate these models, we leverage Regression Discontinuity Designs popular in
economics to construct a test set of causal treatment effects. |
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DOI: | 10.48550/arxiv.2411.00126 |