Most of the Chinese rural commercial banks are formed through the shareholding system reform of rural credit cooperatives. According to the opinion of the supervisory authority, the existing rural credit cooperatives will be restructured into rural commercial banks, and no new rural credit cooperatives will be formed after that [1]. Rural commercial banks are the main force that serves and support the development of ‘agriculture, rural areas, and farmers.’ Therefore, China should improve the financial service level of rural commercial banks as soon as possible, stick to its position and strengthen the governance. According to the National Statistical Yearbook data, the total agricultural output value of the western Chinese region in 2020 is 3,458.533 billion yuan, which accounts for 30% of the Chinese total agricultural output and 19% of the western region's annual GDP. The rural population is 182.27 million, which accounts for 13% of the Chinese total rural population and 48% of the total population in the western region. Compared with the central and eastern regions, rural commercial banks in western China are still relatively late in their restructuring and establishment. Their credit risk evaluation methods are relatively backward. This article has collected and sorted out the loan data of a rural commercial bank in Sichuan (from now on referred to as KK Bank) in western China from 2018 to 2020 and applied the linear fractional differential equation model for empirical analysis. This completes the evaluation of the credit risk of rural commercial banks in western China. The linear fractional differential equation model is proposed based on the value at risk (VaR) model. Because the linear fractional differential equation model is suitable for small- and medium-sized banks and the calculation result has a single digital expression, it has strong operability and feasibility. This model enriches the research on credit risk evaluation methods of rural commercial banks in western China [2]. This has important practical significance for studying the credit risk evaluation of regional rural commercial banks and promoting the stable and healthy development of rural commercial banks.
This article examines the credit process of nine rural commercial banks in the western region. As shown in Figure 1, the entire credit process can be divided into three parts. That is, before, during and after the loan [3]. The pre-loan part is mainly divided into customer application, customer application acceptance, loan investigation and evaluation. The loan part includes loan review, loan review and approval, loan contract signing and loan issuance. The post-loan part mainly includes management after loan issuance, loan recovery and loan file management.
The loan approval flow chart of nine rural commercial banks in the western region
Good preventive measures in the early stage are an effective way to control credit risk. This is a process of preliminary investigation of customers. As far as Sichuan KK Rural Commercial Bank is concerned, the preliminary investigation of customers is mainly to investigate customers’ basic information by filling in questionnaires. This stage belongs to the stage of credit risk identification [4]. At this stage, the customer's basic information, financial status, non-financial status and guarantee capabilities will be investigated. And the preliminary collection, sorting and analysis of customer information. The investigation and evaluation of loan customers and loan review are the keys to whether a loan will be approved successfully. At this stage, customers with greater credit risk can be initially eliminated.
The mid-term loan period requires a further in-depth review of the information of the loan customer. At this stage, most rural commercial banks in western regions used household surveys in rural areas. Commercial banks will check whether the households provide false information by SMEs and their companies and review the information provided utilising on-site investigations. This method has higher labour costs. Based on the investigation and evaluation of loan customers, the bank will eliminate those who do not meet the standards in the preliminary review process [5]. For customers who have passed the preliminary review, their qualifications will be checked again. Banks conduct on-site investigations to determine credit ratings of loan customers and finally form a survey report for review and approval. This stage is also called rating and measuring credit risk.
Monitoring and management of after loan issuance are also crucial. It mainly includes four stages: the first follow-up inspection, regular and irregular site visits by the account manager, deposit and loan by the archivist, and risk analysis report to the risk department. Among them, account managers’ regular and irregular on-site surveys are an important part of the credit risk control of rural commercial banks [6]. After the bank grants a loan to a customer, it needs to continue supervising and investigating to understand or find out whether the customer is speculating. For example, whether the customer transfers the loan for other purposes and whether it is consistent with the use agreed in the loan contract.
Compared with large commercial banks, rural commercial banks in the western region started late, and credit risk evaluation and management are also relatively backward. Coupled with the shortage of historical data, it will become extremely difficult for credit risk evaluation models to quantify data [7]. The nine rural commercial banks in the western region often adopt subjective judgements and adopt a simplified model to increase assumptions when measuring credit risk. Currently, the credit risk evaluation models of rural commercial banks in western China mainly include expert analysis methods, loan rating methods, financial analysis methods and credit scoring methods.
After combining multiple analysis methods, it is found that only efficient and scientific credit scoring methods can effectively assess credit risk in the market environment of financial innovation reform. Therefore, the evaluation and management of credit risk of rural commercial banks in western China need to adopt modern credit risk evaluation methods [8]. The modern risk evaluation model calculates the loaner's default probability, standard deviation, default loss rate, and distribution and then uses.
In this part, we suggest some methods for solving linear fractional differential equations.
Among them,
First, it is random whether each loan in the loan portfolio defaults. Second, the probability of default for each loan is very small [9]. The third is that the probability of default between each loan is independent of each other. The occurrence of default events obeys the Poisson distribution
The calculation process of the linear fractional differential equation model can be divided into three steps: The first step is the classification of risk exposure frequency bands. Assuming that a loan portfolio has a total of
The second step is the calculation of the default probability of
Step 3: Calculation of the loss distribution of
Step 4: Calculate the economic capital, expected loss and unexpected loss of the loan portfolio. The VaR of the loan portfolio can be calculated given a confidence level in the calculations of the second and third steps. That is the unexpected loss of the loan portfolio. For example, when the confidence level = 95%, we get the maximum loss under the confidence level. VaR (unexpected loss) = maximum loss-expected loss.
This paper selects 1,117 loans from the outstanding loans of Sichuan KK Rural Commercial Bank from 2018 to 2020 as sample data. We analyse the distribution of loan amounts. Following the principle of frequency band allocation, the total loan amount of these 1,117 loans is 112.308 billion yuan. Among them, the loan with the largest risk exposure amounted to 3.28 million yuan. We assume that the unit risk exposure L = 500,000 yuan, and then we can divide six frequency bands. It is shown in Table 1.
Frequency band distribution of 1,117 loans of Sichuan KK Rural Commercial Bank
V1 | 0–50 | 20 | 510 | 4.00% | 20.40 | 408.0 |
V2 | 51–100 | 60 | 200 | 3.00% | 6.00 | 360.0 |
V3 | 101–150 | 120 | 300 | 2.75% | 8.24 | 989.1 |
V4 | 151–200 | 160 | 32 | 2.07% | 0.66 | 106.2 |
V5 | 201–250 | 220 | 65 | 2.93% | 1.90 | 418.5 |
V6 | 251 | 310 | 10 | 2.53% | 0.25 | 78.6 |
According to the principle of the linear fractional differential equation model, we use the loan data of Sichuan KK Rural Commercial Bank. With the help of MATLAB software, we can calculate the distribution of loan losses. The loss distribution is shown in Figure 2.
Distribution of default loss of loan portfolio under
It can be seen from Table 1 that the expected loss of Sichuan KK Rural Commercial Bank is 23.6 million yuan. The linear fractional differential equation model calculates the maximum loss VaR
Among the 1,117 loan samples selected by Sichuan KK Rural Commercial Bank from 2018 to 2020, there are 328 agricultural loans. Sichuan KK Rural Commercial Bank's agricultural loans accounted for 29.7% of total loans from 2018 to 2020. The ratio of agricultural loans to total loans in the sample data is 29.3%, basically in line with the ratio of the overall data.
Among these 328 agricultural loans, the total amount of agricultural loans was 10.57 billion yuan. The agricultural loan with the largest risk exposure amounted to 1.81 million yuan [12]. We assume that the unit risk exposure is L = 300,000 yuan; then we can divide six frequency bands as shown in Table 2.
Frequency band distribution of agricultural loans sampled by Sichuan KK Rural Commercial Bank
V1 | 0–30 | 20 | 156 | 2.72% | 4.24 | 84.80 |
V2 | 31–60 | 40 | 73 | 3.07% | 2.24 | 89.60 |
V3 | 61–90 | 70 | 40 | 3.50% | 1.40 | 97.90 |
V4 | 91–120 | 100 | 30 | 2.82% | 0.85 | 84.60 |
V5 | 121–150 | 130 | 23 | 3.03% | 0.70 | 90.60 |
V6 | 151 | 180 | 6 | 2.93% | 0.18 | 31.70 |
According to the principle of the linear fractional differential equation model, the loss distribution of agricultural loans can be calculated. The loss distribution is shown in Figure 3.
Loss distribution of Sichuan KK Rural Commercial Bank's agricultural loan sample
From Table 2, it can be seen that the expected loss of Sichuan KK Rural Commercial Bank is 4.791 million yuan. The maximum loss VaR
The total agricultural-related sample loan of Sichuan KK Rural Commercial Bank is 10.57 billion yuan. At the confidence level of
The VaR
It is effective to use the linear fractional differential equation model to evaluate the credit risk of rural commercial banks in western China. We need to build a relatively complete credit rating system and speed up the construction of credit rating databases. Rural commercial banks in western China should use financial service consultants as their starting point to improve individualised and diversified financial services. In addition, they should make good use of financial tools and continuously improve the ability and level of rural financial services to serve the real economy. We need to improve the long-term one-way flow of factors between urban and rural areas and promote the deep integration of urban and rural development.