Determinants of efficiency in state-chartered financial institutions: Why financial education and freedom matter

Heliyon. 2020 Dec 29;6(12):e05795. doi: 10.1016/j.heliyon.2020.e05795. eCollection 2020 Dec.

Abstract

In this paper, we verify which qualitative banking attributes can determine the level of American state-chartered Financial Institutions (FIs) and evaluate its underlying variables. The methodology followed three procedures of analysis. First, we measured banking efficiency using a two-stage SBM network data envelopment analysis (NDEA). Subsequently, we used machine learning methods to predict efficient FIs from qualitative attributes. Finally, we tested the variables related to the attributes, using a fractionated logistic regression controlled by economic-financial variables. As main results, we found that attributes linked to political-administrative localization criteria were the more important attribute in predicting if the FI was in the efficient group; we confirmed the recent findings of the literature that state that less governmental influence (freedom) is related to more efficient institutions. Besides that, we found that a population with a higher financial education have FIs with higher levels of efficiency.

Keywords: Banking efficiency; Fractional logistic regression; Machine learning; SBM DEA network; State-chartered financial institutions.