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Scalable Econometrics on Big Data -- The Logistic Regression on Spark

Authors :
Ouattara, Aurélien
Bulté, Matthieu
Lin, Wan-Ju
Scholl, Philipp
Veit, Benedikt
Ziakas, Christos
Felice, Florian
Virlogeux, Julien
Dikos, George
Publication Year :
2021

Abstract

Extra-large datasets are becoming increasingly accessible, and computing tools designed to handle huge amount of data efficiently are democratizing rapidly. However, conventional statistical and econometric tools are still lacking fluency when dealing with such large datasets. This paper dives into econometrics on big datasets, specifically focusing on the logistic regression on Spark. We review the robustness of the functions available in Spark to fit logistic regression and introduce a package that we developed in PySpark which returns the statistical summary of the logistic regression, necessary for statistical inference.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.10341
Document Type :
Working Paper