A precisão de previsão dos métodos de Machine Learning é menor do que a pior método estatístico.
Resumo:
Machine Learning (ML) methods have been proposed in the academic
literature as alternatives to statistical ones for time series
forecasting. Yet, scant evidence is available about their relative
performance in terms of accuracy and computational requirements. The
purpose of this paper is to evaluate such performance across multiple
forecasting horizons using a large subset of 1045 monthly time series
used in the M3 Competition. After comparing the post-sample accuracy of
popular ML methods with that of eight traditional statistical ones, we
found that the former are dominated across both accuracy measures used
and for all forecasting horizons examined. Moreover, we observed that
their computational requirements are considerably greater than those of
statistical methods. The paper discusses the results, explains why the
accuracy of ML models is below that of statistical ones and proposes
some possible ways forward. The empirical results found in our research
stress the need for objective and unbiased ways to test the performance
of forecasting methods that can be achieved through sizable and open
competitions allowing meaningful comparisons and definite conclusions.
Makridakis S, Spiliotis E, Assimakopoulos V (2018)
Statistical and Machine Learning forecasting methods: Concerns and ways
forward. PLoS ONE 13(3):
e0194889.
https://doi.org/10.1371/journal.pone.0194889
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