Data envelopment analysis and data mining to efficiency estimation and evaluation

Author: Abdel Latef M. Anouze and Imad Bou-Hamad
Publisher: International Journal of Islamic and Middle Eastern Finance and Management,

ABOUT BOOK

Purpose This paper aims to assess the application of seven statistical and data mining techniques to second-stage data envelopment analysis (DEA) for bank performance. Design/methodology/approach Different statistical and data mining techniques are used to second-stage DEA for bank performance as a part of an attempt to produce a powerful model for bank performance with effective predictive ability. The projected data mining tools are classification and regression trees (CART), conditional inference trees (CIT), random forest based on CART and CIT, bagging, artificial neural networks and their statistical counterpart, logistic regression. Findings The results showed that random forests and bagging outperform other methods in terms of predictive power. Originality/value This is the first study to assess the impact of environmental factors on banking performance in Middle East and North Africa countries.

Powered by: