Abstract

Agricultural enterprises play a significant role in China’s economic development. However, compared with other enterprises, agricultural enterprises are facing serious financial problems. Financing difficulty is essentially a question of financing efficiency. Based on the DEA method, this paper evaluates the financing efficiency of 39 agricultural listed companies in China from 2013 to 2017. The results suggest that the financing efficiency is generally low, and the Total Factor Productivity of agricultural enterprises’ financing has a tendency to decrease first and then increase. The influencing factors of financing efficiency are analyzed using the Tobit regression model and the random forest regression model. And we find the following: (1) The random forest regression model significantly outperformed the Tobit regression model, with determination coefficients (R2) greater than 0.9 in full sample sets. (2) Total liability, financial expenses, return on total assets, and inventory turnover rate are important factors affecting financing efficiency of agricultural listed companies. (3) Return on total assets and inventory turnover rate promote the financing efficiency, while total liability and financial expenses reduce financing efficiency. Finally, the paper makes some suggestions for the financing of agricultural enterprises.

Highlights

  • Agriculture provides us with the food and clothing, and provides us with energy and chemical raw materials needed for industrial development

  • Abate et al [6] analyzed the impact of institutional finance on agricultural technology adoption in Ethiopia, and the results showed that the access to institutional finance had a significant positive impact on farmers’ adoption of agricultural technology

  • The results indicate that the financing efficiency of agricultural enterprises is promoted by efficiency change and pure technical efficiency change and hindered by scale efficiency change

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Summary

Introduction

Agriculture provides us with the food and clothing, and provides us with energy and chemical raw materials needed for industrial development. This paper selects 39 agricultural listed companies in Shanghai Stock Exchange and Shenzhen Stock Exchange from 2013 to 2017, evaluates financing efficiency of Chinese agricultural listed companies with DEA model, and explores the impact of internal and external factors on financing efficiency. The random forest regression model is used to explore the impact of internal and external factors on financing efficiency, and the results are compared with those of econometric regression analysis. The paper provides examples of application of machine learning methods on the research field of financing efficiency, and has practical significance for empirical analysis on the financing efficiency of Chinese agricultural listed companies.

Methods
Indicator Selection and Data Sources
Empirical Analysis
Findings
Conclusions and Recommendations
Full Text
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