Summary:
When facing an unknown forecasting problem, accuracy on the predictions as well as useful information about the underlying physics of the process are mostly appreciated. In this paper
the Thor model, a fully interpretable model with automatic identification, is presented. Based on additivity assumptions and piecewise linear regression, it allows the analyst to gain insight
about the problem by examining the automatically selected model. Monte-Carlo simulations have been run to ensure that the model selection procedure behaves correctly under weakly dependent data. Moreover, comparison over other well-known methodologies has been done to evaluate its accuracy performance, both in simulated data and in the context of short-term natural gas demand forecasting. Empirical results show that the accuracy of the proposed model is competitive against more complex methods such a neural networks.
Keywords: Forecasting, Econometric models, Decision making, Model selection, Natural gas demand
Registration date: 10/06/2013
IIT-13-056A