Surrogate Modeling for Explainable Predictive Time Series Corrections

Surrogate Modeling for Explainable Predictive Time Series Corrections










arXiv:2412.19897v1 Announce Type: new
Abstract: We introduce a local surrogate approach for explainable time-series forecasting. An initially non-interpretable predictive model to improve the forecast of a classical time-series ‘base model’ is used. ‘Explainability’ of the correction is provided by fitting the base model again to the data from which the error prediction is removed (subtracted), yielding a difference in the model parameters which can be interpreted. We provide illustrative examples to demonstrate the potential of the method to discover and explain underlying patterns in the data.






Alfredo Lopez, Florian Sobieczky





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