JSA 2Volume 4, No. 6 June 2023

p-ISSN 2722-7782 | e-ISSN 2722-5356

DOI: �https://doi.org/10.46799/jsa.v4i6.610


The Influence of Internal Performance and Macroeconomic Conditions on Regional Development Bank Credit Risk in Indonesia Period 2017-2021

 

Tri Wahyu Winarso, Surya Raharja

Faculty of Economics and Business, Diponegoro University

Email: [email protected], [email protected]

 


 

Abstract: ���������


This study aims to identify the effect of internal performance and macroeconomic conditions on the credit risk of Regional Development Banks in Indonesia in the 2017-2021 period. This research is a quantitative research using statistical data. The population used in this research is Regional Development Banks in Indonesia from 2017 to 2021. The sample used in this research is from 24 Regional Development Banks in Indonesia that have been registered with the Financial Services Authority (OJK). The data for this research were obtained from library sources available at the Financial Services Authority, the Central Bureau of Statistics and Bank Indonesia. The research data was processed using the Error Correction Model (ERM) with Microsoft Excel and Eviews 10 software. The results of this study indicate that the Credit Growth Ratio has a positive effect on NPLs both in the long term and in the short term. CKPN receipts have a positive effect on NPL both in the long term and in the short term, BOPO has a negative effect on NPL both in the long term and in the short term, inflation has a positive effect on NPL both in the long term and in the short term, GRDP has a negative effect on NPL both in the long term and short term.

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Keywords: Regional Development Bank; Macroeconomics; Credit Risk.

 

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INTRODUCTION

The rate of economic growth in Indonesia is supported by economic activities such as the financial sector, manufacturing industry, agriculture, forestry, fisheries, mining, processing, construction, information technology and services and other sectors, the financial services sector is one sector that contributes to the rate of economic growth. national. The Central Bureau of Statistics (BPS) has released data on economic growth in Indonesia which shows thatsthe financial services sector from 2017 to 2020 quarter I has shown a growth trend that tends to be positive every year (yoy)interpretedonly decreased in the 2018 period. Internal performance in the economic activity of a sector, in this case the financial services sector, is very influential on the sustainability of business growth as well as macroeconomic conditions in the area of business operations which play a very important role because macro conditions determine the economic cycle in this case public production and consumption. The increasingly developed business processes of the financial services sector are followed by an increase in the potential risks of the business being carried out. Macroeconomic factors can also influence banking financial performance, including inflation and economic growth in banking operational areas, because banks cannot be separated from macroeconomic policies, conditions and activities.

��� It is hoped that the banking industry will always achieve credit growth because the biggest source of income for banks is generally supported by income from credit products. So with credit being the biggest source of income for banks, the banking industry is trying to compete in expanding credit. The following table shows the development of bank credit in Indonesia:

Table 1

Development of Banking Credit in Indonesia

Bank Group

2017

2018

2019

2020

2021

Conventional and Sharia Commercial Banks

state-owned banks

1,963,039

2,239,600

2,430,773

2,445,965

2,623,165

regional development banks

377,525

395,631

397,470

399,213

401,278

National Private Bank

2,194,405

2,188,809

2,209,816

2,229,460

2,237,083

Foreign Bank Branch Office

200,418

244,994

230,266

177,922

167,855

Amount

4,735,387

5,294,882

5,616,987

5,481,560

5,768,585

Source: Financial Services Authority and Central Bureau of Statistics����������

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Table 1 shows the growth of credit expansion from the Banking Industry in Indonesia, according to data released, the trend of credit growth tends to dominate from year to year (year on year) starting from 2017 to 2021, but in 2020 Indonesian banking credit as a whole tends to experience decreased compared to credit expansion growth in the previous period, because this was caused by the Covid-19 pandemic, apart from that there were other causes that needed to be conducted research to determine these conditions.

As a result of the macroeconomic slowdown in each region, economic activity has shrunk and inflation levels are less controlled in the region, this has created obstacles for business actors and even large industries operating in an area. This situation, in conclusion, causes the financial sector to be more specifically affected by banking, which faces the threat of reduced ability from the business world to use credit facilities to repay loans which results in the formation of non-performing loans (NPL), namely the risk of lending, where the risk of credit expansion means to controlled in order to always keep the banking system in good health and able to maintain performance in optimizing profitability.

If banks do not pay attention to lending to groups that are considered to have high risk, it can lead to a buildup of loans that have the potential to become Bad Loans or Non Performing Loans (NPL) which is a risk in lending (Utari, et al, 2012). represents the opposite situation, namely the weakening of the economy or the underdevelopment of the business world.In line with this situation, of course the regional government through related stakeholders together with the authorities and the Regional Development Bank ensures/formulates all policies to provide solutions.

The following graph shows the trend of the NPL ratio of Regional Development Banks and GRDP throughout Indonesia for the period (2017-2021):

Figure 1

Trends in the NPL Ratio of Regional Development Banks and GRDP throughout Indonesia for the Period (2017-2021)

 

A graph on a blue background

Description automatically generated with low confidence

Source: Financial Services Authority and Central Bureau of Statistics (data is processed)

Based on Figure 1 which shows that the NPL ratio of Regional Development Banks as a whole in Indonesia has experienced a significant increase in the 2020 period compared to the previous year in 2019 there was an increase of 0.76%, and in the 2020 period displays the very highest NPL ratio throughout the 2017 period - 2021 along with a decline in economic development due to the Covid-19 pandemic, this means that in the 2020 period Regional Development Banks in Indonesia as a whole face risks from large lending in the last 5 years.

In line with credit performance which experienced a decline in 2020 as represented by the NPL indicator which increased significantly that year, macroeconomic conditions also experienced a decline as reflected in the Gross Regional Domestic Product (GRDP) indicator so that in 2020 it decreased to - 2.07% for macroeconomic growth, this is in line with the declining macroeconomic condition. This condition indicates that business conditions are also experiencing a decline resulting in a decrease in the ability of business actors, where most of the business actors are debtors from banks, in fulfilling their obligations resulting in The credit performance of debtors, most of these business actors, have decreased to the non-performing credit category.

Regarding the performance of Regional Development Banks, it can be seen from the indicators of credit expansion growth, CKPN/ECL reserve ratios, and operational optimization (BOPO) with regional macroeconomic conditions as seen from the indicators of Gross Regional Domestic Product (GDP) and inflation in each operational area of the Development Bank Regions on credit risk (NPL) in the midst of a situation where there is an interesting new phenomenon to study the effect of, in previous similar studies the impact of economic turmoil has not been studied before the impact of the bubble economy period, namely the Covid-19 pandemic.

In previous research, among others, that tried by Ardana (2019) analyzed using the Error Correction Model (ECM) procedure to share a reflection of the results if there were no short-term ties between the variables of interest rates, GDP, and the change in value to credit risk/NPF (Non Performing Finance). ) and there is no long-term bond between inflation and NPF (Non Performing Finance) in Islamic Banks in Indonesia where these variables are macroeconomic markers. After that, the research carried out by Mustafa (2019) used macroeconomic independent variables, namely GDP, and the level of unemployment against NPL in Commercial Bank problems in Malaysia. The analytical tool uses ARDL, which describes the results when macroeconomic markers affect the NPL.

It is necessary to provide in-depth research to identify or analyze variables both from the internal performance of the bank itself and from external aspects that are closely related to bank performance. The other aspect is the macroeconomic aspect, more specifically the macroeconomic conditions in each operational area of the Regional Development Bank, because in previous research it had not been grouped between internal variables and external variables as an influence on bank performance in controlling credit risk where credit is a crucial bank instrument. in supporting bank profitability and in sustaining regional economic development.

Based on the title and setting0back in this study, the focus of problem identification is: (a) Does the performance of Regional Development Banks on the yoy credit growth ratio indicator affect the risk0credit0 seen in the non-performing loan (NPL) ratio indicator? (b) Does the performance of Regional Development Banks against the CKPN/ECL ratio indicator affect credit risk as seen in the NPL ratio? (c) Does the performance of Regional Development Banks against the BOPO ratio indicator affect the risk credit seen in the non-performing loan (NPL) ratio indicator?

 

METHODOLOGY

Data Type

The data obtained in this research is from General Banking Statistics through the Financial Services Authority (OJK) Website, Indonesian Banking Statistics (BI) as well as data information from the Central Statistics Agency (BPS) Website, both central and regional, in this case the province. There is also information taken by research to be testedisthe dependent variable Non-performing Loan (NPL) loans at Regional Development Banks otherwise the independent variable year on year Credit Development ratio (%), the ratio of CKPN/ECL to productive assets (%), the ratio of Operating Expenses and Operating Income (BOPO%), Inflation (%), the ratio of the development of Gross Regional Domestic Product (GDP) year on year (%). This data was processed using Microsoft Excel and the Error Correction Model (ECM) Analysis Method with Eviews 10 software.

Research Population

The population used in this research is Regional Development Banks in Indonesia from 2017 to 2021.

Research Sample

The sample used in this research is from 24 Regional Development Banks in Indonesia that have been registered with the Financial Services Authority (OJK). The sampling procedure in this research uses a purposive random sampling procedure.

Method of collecting data

This study uses the library research method, namely by collecting materials related to the research topic originating from theses, theses, papers, original documents, and other sources.

 


RESULT AND DISCUSSION

Descriptive Statistical Analysis

The following is a descriptive analysis of this study:

Table 3
Descriptive Statistical Test Results

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Y

X1

X2

X3

X4

X5

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Means

2.808583

9.713333

1.925667

75.16667

2.568083

3.825417

Median

2.280000

8.170000

1.625000

75.50000

2.585000

4.985000

Maximum

22.27000

107.9300

17.43000

164.9000

6.460000

20.60000

Minimum

0.010000

-46.39000

0.010000

0.630000

0.320000

-15.74000

std. Dev.

2.796962

16.95122

1.930166

21.98452

1.043450

4.113804

source: (Researcher Processed, 2022)

Based on Table 3 above, several things can be explained as follows:

  1. The amount of data (n) is 120 where researchers take samples from 2017 to 2021.
  2. MeansY is worth 2.808583, the minimum value is 0.010000, the maximum value is 22.27000, and the standard deviation is 2.796962 with a total of 120 data (n). The mean value of 2.808583 indicates that Y during the observation period averages 2.808583 per year. The standard deviation value is 2.796962shows that statistically over a period of years2017-2021the Y value meets the standard, because the standard deviation value shows a relatively lower value when compared to the average value.
  3. MeansX1 is 9.713333, the minimum value is -46.39000, the maximum value is 107.9300, and the standard deviation is 16.95122 with a total of 120 data (n). The mean value is 9.713333 indicating that X1 during the observation period averaged 9.713333 per year. The standard deviation value is 16.95122shows that statistically over a period of years2017-2021markX1does not meet the standard, because the standard deviation value shows a relatively higher value when compared to the average value.
  4. MeansX2 is worth 1.925667, minimum value is 0.010000, maximum value is 17.43000, and standard deviation is 1.930166 with a total of 120 data (n). The mean value of 1.925667 indicates that X2 during the observation period averages 1.925667 per year. The standard deviation value is 1.930166shows that statistically over a period of years2017-2021markX2does not meet the standard, because the standard deviation value shows a relatively higher value when compared to the average value
  5. MeansX3 is worth 75.16667, the minimum value is 0.630000, the maximum value is 164.9000, and the standard deviation is 21.98452 with a total of 120 data (n). The mean value of 75.16667 indicates that X3 during the observation period averages 75.16667 per year. The standard deviation value is 21.98452shows that statistically over a period of years2017-2021the value of X3 already meets the standard, because the standard deviation value shows a relatively lower value when compared to the average value.
  6. MeansX4 has a value of 2.568083, minimum value has a value of 0.320000, maximum value has a value of 6.460000, and standard deviation has a value of 1.043450 with a total of 120 data (n). The mean value of 75.16667 indicates that X3 during the observation period averages 2.568083 per year. The standard deviation value is 1.043450shows that statistically over a period of years2017-2021the value of X4 already meets the standard, because the standard deviation value shows a relatively lower value when compared to the average value.
  7. MeansX5 has a value of 3.825417, minimum value of -15.74000, maximum value of 20.60000, and standard deviation of 4.113804 with a total of 120 data (n). The mean value of 3.825417 indicates that X5 during the observation period averages 3.825417 per year. The standard deviation value is 4.113804shows that statistically over a period of years2017-2021markX2does not meet the standard, because the standard deviation value shows a relatively higher value when compared to the average value.
  8.  

Measurement ECM (Error Correction Model)

Stationarity Test

Table 4
Stationarity Test Results

 

 

 

 

 

 

 

 

 

 

method

 

Statistics

Prob.**

ADF - Fisher Chi-square

189,246

0.0000

ADF - Choi Z-stat

-11.3352

0.0000

 

 

 

 

 

 

 

 

 

 

** Probabilities for Fisher tests are computed using an asymptotic Chi

-square distribution. All other tests assume asymptotic normality.

 

 

 

 

 

Intermediate ADF test results UNTITLED

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Series

Prob.

lag

Max Lag

Obs

Y

0.0003

0

12

119

X1

0.0000

0

12

119

X2

0.0000

0

12

119

X3

0.0000

0

12

119

X4

0.0099

4

12

115

X5

0.0125

4

12

115

 

 

 

 

 

 

 

 

 

 

����������������������� source: (Researcher Processed, 2022)

Based on Table 4, the results of the Augmented Dickey-Fuller (ADF) Stationarity Test for each variable are seen to be stationary, as seen from the P-Value of each variable below 0.05 so that it can be concluded from the stationarity test results above, regression testing in this study can use ECM method

Cointegration Test

The cointegration test results with the following results:

Table 5
Cointegration Test Results

 

 

 

 

 

 

 

 

 

 

Unrestricted Cointegration Rank Test (Trace)

 

 

 

 

 

 

 

 

 

 

 

Hypothesized

 

trace

0.05

 

No. of CE(s)

Eigenvalue

Statistics

Critical Values

Prob.**

 

 

 

 

 

 

 

 

 

 

None *

0.404078

147.1125

95.75366

0.0000

At most 1 *

0.214056

87.58318

69.81889

0.0010

At most 2 *

0.208722

59.88321

47.85613

0.0025

At most 3 *

0.138425

32.96106

29.79707

0.0209

At most 4 *

0.070039

15.82686

15.49471

0.0446

At most 5 *

0.062944

7.476448

3.841466

0.0062

 

 

 

 

 

 

 

 

 

 

Trace test indicates 6 cointegrating eqn(s) at the 0.05 level

* denotes rejection of the hypothesis at the 0.05 level

**MacKinnon-Haug-Michelis (1999) p-values

 

source: (Researcher Processed, 2022)

Based on Table 5, the results of the cointegration test for each variable show that cointegration has occurred. The P-value of each variable is below 0.05, so it can be concluded that from the cointegration test results above, regression testing in this study can use the ECM method, which is the most suitable method. .

HYPOTHESIS TESTING

The following are the results of multiple linear regression testing in Table 6

Table 6
Long Term Multiple Linear Regression Equations

 

 

 

 

 

 

 

 

 

 

Variable

coefficient

std. Error

t-Statistics

Prob.

 

 

 

 

 

 

 

 

 

 

C

3.380581

1.429354

2.365111

0.0218

X1

3.717302

0.880400

4.222289

0.0000

X2

1.098858

0.069944

15.71060

0.0000

X3

-0.899170

0.266840

-3.369694

0.0011

X4

3.841487

0.978374

3.926400

0.0002

X5

-1.373113

0.516072

-2.660701

0.0091

 

 

 

 

 

 

 

 

 

 

 

Effects Specification

 

 

 

 

 

 

 

 

 

 

 

 

Cross-section fixed (dummy variables)

 

 

 

 

 

 

 

 

 

 

 

R-squared

0.914523

Mean dependent var

2.808583

Adjusted R-squared

0.888222

SD dependent var

2.796962

SE of regression

0.935115

Akaike info criterion

2.910406

Sum squared residue

79.57396

Schwarz criterion

3.584049

Likelihood logs

-145.6243

Hannan-Quinn criter.

3.183975

F-statistics

34.77178

Durbin-Watson stat

1.988605

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

The following are the results of multiple linear regression testing

Table 7
Short Term Multiple Linear Regression Equations

 

 

 

 

 

 

 

 

 

 

Variable

coefficient

std. Error

t-Statistics

Prob.

 

 

 

 

 

 

 

 

 

 

C

3.717302

0.880400

4.222289

0.0000

X1(-1)

4.642096

1.680238

2.762761

0.0065

X2(-1)

1.161307

0.082644

14.05188

0.0000

X3(-1)

-0.923787

0.335560

-2.752976

0.0067

X4(-1)

0.500322

0.175632

2.848693

0.0051

X5(-1)

-0.348490

0.132550

-2.629109

0.0096

 

 

 

 

 

 

 

 

 

 

R-squared

0.776886

Mean dependent var

2.824688

Adjusted R-squared

0.764491

SD dependent var

2.843289

SE of regression

1.379827

Akaike info criterion

3.542255

Sum squared residue

171.3531

Schwarz criterion

3.702527

Likelihood logs

-164.0283

Hannan-Quinn criter.

3.607040

F-statistics

62.67635

Durbin-Watson stat

1.945181

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

Following are the results of the t test:


Tabel 8
Long Term t Test Results

 

 

 

 

 

 

 

 

 

 

Variable

coefficient

std. Error

t-Statistics

Prob.

 

 

 

 

 

 

 

 

 

 

C

3.380581

1.429354

2.365111

0.0218

X1

3.717302

0.880400

4.222289

0.0000

X2

1.098858

0.069944

15.71060

0.0000

X3

-0.899170

0.266840

-3.369694

0.0011

X4

3.841487

0.978374

3.926400

0.0002

X5

-1.373113

0.516072

-2.660701

0.0091

 

 

 

 

 

 

 

 

 

 

 

Effects Specification

 

 

 

 

 

 

 

 

 

 

 

 

Cross-section fixed (dummy variables)

 

 

 

 

 

 

 

 

 

 

 

R-squared

0.914523

Mean dependent var

2.808583

Adjusted R-squared

0.888222

SD dependent var

2.796962

SE of regression

0.935115

Akaike info criterion

2.910406

Sum squared residue

79.57396

Schwarz criterion

3.584049

Likelihood logs

-145.6243

Hannan-Quinn criter.

3.183975

F-statistics

34.77178

Durbin-Watson stat

1.988605

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

Table 9
Short Term t Test Results

 

 

 

 

 

 

 

 

 

 

Variable

coefficient

std. Error

t-Statistics

Prob.

 

 

 

 

 

 

 

 

 

 

C

3.717302

0.880400

4.222289

0.0000

X1(-1)

4.642096

1.680238

2.762761

0.0065

X2(-1)

1.161307

0.082644

14.05188

0.0000

X3(-1)

-0.923787

0.335560

-2.752976

0.0067

X4(-1)

0.500322

0.175632

2.848693

0.0051

X5(-1)

-0.348490

0.132550

-2.629109

0.0096

 

 

 

 

 

 

 

 

 

 

R-squared

0.776886

Mean dependent var

2.824688

Adjusted R-squared

0.764491

SD dependent var

2.843289

SE of regression

1.379827

Akaike info criterion

3.542255

Sum squared residue

171.3531

Schwarz criterion

3.702527

Likelihood logs

-164.0283

Hannan-Quinn criter.

3.607040

F-statistics

62.67635

Durbin-Watson stat

1.945181

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

Table 10
Long Term F Test Results

Cross-section fixed (dummy variables)

 

 

 

 

 

 

 

 

 

 

 

 

 

 

R-squared

0.914523

Mean dependent var

2.808583

 

Adjusted R-squared

0.888222

SD dependent var

2.796962

 

SE of regression

0.935115

Akaike info criterion

2.910406

 

Sum squared residue

79.57396

Schwarz criterion

3.584049

 

Likelihood logs

-145.6243

Hannan-Quinn criter.

3.183975

 

F-statistics

34.77178

Durbin-Watson stat

1.988605

 

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

As seen from table 10, the probability value is 0.0000 <alpha level = 0.05. Conclusion Ha means that the existing multiple regression function is feasible as a predictor for Y. Significant results support this F test model so that the existing multiple regression function is feasible to be used as a predictor for estimating the magnitude of Y in the long run.

Table 11
Short Term F Test Results

R-squared

0.776886

Mean dependent var

2.824688

Adjusted R-squared

0.764491

SD dependent var

2.843289

SE of regression

1.379827

Akaike info criterion

3.542255

Sum squared residue

171.3531

Schwarz criterion

3.702527

Likelihood logs

-164.0283

Hannan-Quinn criter.

3.607040

F-statistics

62.67635

Durbin-Watson stat

1.945181

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

As seen from Table 11, the probability value is 0.0000 <alpha level = 0.05. Conclusion Ha means that the existing multiple regression function is feasible as a predictor for Y. Significant results support this F test model so that the existing multiple regression function is feasible to be used as a predictor for estimating the magnitude of Y in the short run

The following is the result of data processing using the coefficient of determination model to find the Adjusted R Square value.

Table 12

�Long Term Adjusted R Square Results

Cross-section fixed (dummy variables)

 

 

 

 

 

 

 

 

 

 

 

 

 

 

R-squared

0.914523

Mean dependent var

2.808583

 

Adjusted R-squared

0.888222

SD dependent var

2.796962

 

SE of regression

0.935115

Akaike info criterion

2.910406

 

Sum squared residue

79.57396

Schwarz criterion

3.584049

 

Likelihood logs

-145.6243

Hannan-Quinn criter.

3.183975

 

F-statistics

34.77178

Durbin-Watson stat

1.988605

 

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

The output of the regression in Table 12 can be described as an Adjusted R Square value of 0.88, meaning that the independent variables, namely X1, X2, X3, X4, and X5, are able to explain 88% of the variance of the dependent variable, namely Y in the long run, and this others are explained by things that are not present in the model. In accordance with the provisions byHair et al. (2019)that the category coefficient of determination is strong with a percentage of 75% and above so that the prediction of the regression model is sufficient to be used as a reliable prediction medium.

Table 13
Short Term Adjusted R Square Results

R-squared

0.776886

Mean dependent var

2.824688

Adjusted R-squared

0.764491

SD dependent var

2.843289

SE of regression

1.379827

Akaike info criterion

3.542255

Sum squared residue

171.3531

Schwarz criterion

3.702527

Likelihood logs

-164.0283

Hannan-Quinn criter.

3.607040

F-statistics

62.67635

Durbin-Watson stat

1.945181

Prob(F-statistic)

0.000000

 

 

 

 

 

 

 

 

 

 

 

 

 

source: (Researcher Processed, 2022)

The output of the regression in Table 13 can be described as an Adjusted R Square value of 0.76, meaning that the independent variables, namely X1, X2, X3, X4, and X5, are able to explain 76% of the variance of the dependent variable, namely Y in the long run, and this others are explained by things that are not present in the model. In accordance with the provisions byHair et al. (2019)that the category coefficient of determination is strong with a percentage of 75% and above so that the prediction of the regression model is sufficient to be used as a reliable prediction medium.


BIBLIOGRAPHY

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