Abstract

In the current performance evaluation works of commercial banks, most of the researches only focus on the relationship between a single characteristic and performance and lack a comprehensive analysis of characteristics. On the other hand, they mainly focus on causal inference and lack systematic quantitative conclusions from the perspective of prediction. This paper is the first to comprehensively investigate the predictability of multidimensional features on commercial bank performance using boosting regression tree. The dimensionality in the financial-related fields is relatively high. There are not only observable price data, financial fundamentals data, etc., but also many unobservable undisclosed data and undisclosed events; more sources of income cannot be explained by existing models. Aiming at the characteristics of commercial bank data, this paper proposes an adaptively reduced step size gradient boosting regression tree algorithm for bank performance evaluation. In this method, a random subsample sampling is performed before training each regression tree. The adaptive reduction step size is used to replace the reduction step size setting of the original algorithm, which overcomes the shortcomings of low accuracy and poor generalization ability of the existing regression decision tree model. Compared to the BIRCH algorithm for classification of existing data, our proposed gradient boosting regression tree algorithm with adaptively reduced step size obtains better classification results. This paper empirically uses data from rural banks in 30 provinces in China to classify the different characteristics of rural banks’ performance in order to better evaluate their performance.

Highlights

  • Introduction e traditionalMalmquist index [1] examines the efficiency and productivity changes of financial institutions

  • In the current performance evaluation works of commercial banks, most of the researches only focus on the relationship between a single characteristic and performance and lack a comprehensive analysis of characteristics

  • They mainly focus on causal inference and lack systematic quantitative conclusions from the perspective of prediction. is paper is the first to comprehensively investigate the predictability of multidimensional features on commercial bank performance using boosting regression tree. e dimensionality in the financial-related fields is relatively high. ere are observable price data, financial fundamentals data, etc., and many unobservable undisclosed data and undisclosed events; more sources of income cannot be explained by existing models

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Summary

Introduction

Introduction e traditionalMalmquist index [1] examines the efficiency and productivity changes of financial institutions. Machine learning technology has certain applications in performance evaluation in the financial field. In the current performance evaluation work of commercial banks using machine learning, most of the researches only focus on the relationship between a single characteristic and performance and lack a comprehensive analysis of characteristics; on the other hand, they mainly focus on causal inference and lack systematic quantitative conclusions from the perspective of prediction. Most of the existing bank performance evaluation models are based on the Malmquist index method, but the information dimensionality in the financial-related fields is relatively high [5,6,7,8]. Most of the existing bank performance evaluation models are based on the Malmquist index method, but the information dimensionality in the financial-related fields is relatively high [5,6,7,8]. ere are observable price data, financial fundamentals data, etc., and many unobservable undisclosed data and undisclosed events; more sources of income cannot be explained by existing models

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