Machine Learning and Traditional Econometric Models: A Systematic Mapping Study
Metadatos
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Materia
Machine learning Econometric models Regression Prediction
Date
2022-02-23Referencia bibliográfica
Pérez-Pons, M... [et al.] (2021). Machine Learning and Traditional Econometric Models: A Systematic Mapping Study. Journal of Artificial Intelligence and Soft Computing Research, 12(2) 79-100. [https://doi.org/10.2478/jaiscr-2022-0006]
Patrocinador
project "INTELFIN: Artificial Intelligence for investment and value creation in SMEs through competitive analysis and business environment" - Ministry of Science, Innovation and Universities (ChallengesCollaboration 2017) RTC-2017-6536-7; State Agency for Research (AEI); European CommissionRésumé
Machine Learning (ML) is a disruptive concept that has given rise to and generated
interest in different applications in many fields of study. The purpose of Machine
Learning is to solve real-life problems by automatically learning and improving from experience
without being explicitly programmed for a specific problem, but for a generic
type of problem. This article approaches the different applications of ML in a series of
econometric methods. Objective: The objective of this research is to identify the latest
applications and do a comparative study of the performance of econometric and ML models.
The study aimed to find empirical evidence for the performance of ML algorithms
being superior to traditional econometric models. The Methodology of systematic mapping
of literature has been followed to carry out this research, according to the guidelines
established by [39], and [58] that facilitate the identification of studies published about
this subject. Results: The results show, that in most cases ML outperforms econometric
models, while in other cases the best performance has been achieved by combining traditional
methods and ML applications. Conclusion: inclusion and exclusions criteria have
been applied and 52 articles closely related articles have been reviewed. The conclusion
drawn from this research is that it is a field that is growing, which is something that is
well known nowadays and that there is no certainty as to the performance of ML being
always superior to that of econometric models.