Prediction Of Regional Budget Value (APBD) Using Autoregressive Integrated Moving Average (ARIMA)

by ADMIN 98 views

Prediction of Regional Budget Value (APBD) using Autoregressive Integrated Moving Average (ARIMA)

Introduction

The Regional Revenue and Expenditure Budget (APBD) is a crucial component of regional financial management, reflecting the direction of development and development policies that will be carried out by the North Sumatra Provincial Government. The availability of adequate budget is very dependent on the regional development process. In this context, it is essential to make predictions about the APBD value to optimize the planning and use of the budget. This study aims to predict the value of the APBD in five main categories, namely Regional Original Revenue (PAD), Balancing Funds, other legitimate regional income, indirect expenditure, and direct expenditure, by utilizing time series data from 2002 to 2019.

Background

The APBD is an annual financial plan regulated by regional regulations, which is essential for the development of the North Sumatra Province. The budget is allocated to various sectors, including education, healthcare, infrastructure, and social welfare. The accurate prediction of the APBD value is crucial for the effective allocation of resources and the implementation of development programs. However, the APBD value is influenced by various factors, including macroeconomic conditions, government policies, and external factors.

Methodology

The method used in this study is Autoregressive Integrated Moving Average (ARIMA), a forecasting technique that utilizes past data to predict future values. The ARIMA method is effective in identifying patterns in time series data, so that it can provide more accurate estimates. The ARIMA model consists of three components: autoregressive (AR), integrated (I), and moving average (MA). The AR component represents the relationship between the current value and past values, while the I component represents the differencing of the data to make it stationary. The MA component represents the error term.

Data Analysis

The data used in this study is time series data from 2002 to 2019, which includes the values of Regional Original Revenue (PAD), Balancing Funds, other legitimate regional income, indirect expenditure, and direct expenditure. The data was analyzed using the ARIMA method, and the results are presented in the following sections.

Results

The prediction results for 2020 show that:

  • Regional Original Revenue (PAD) is estimated to reach Rp. 10,102,217 million.
  • Balancing Funds is estimated to be worth Rp. 8,860,877 million.
  • Other legitimate regional income estimated Rp. 5,387 million.
  • Indirect expenditure is expected to reach Rp. 11,796,607 million.
  • Direct expenditure is estimated to reach Rp. 5,495,597 million.

Additional Analysis and Explanation

The use of ARIMA's method in this study provides several advantages. First, this method can handle fluctuations in data that often occurs in public accounting, such as the influence of macroeconomics or changes in government policy. Second, ARIMA is able to take into account the trend and seasonal of data, which is very important in the context of budget planning which includes an annual period.

The importance of the results of this prediction is not only limited to the accounting aspect, but also has an impact on public policy and service to the community. By knowing the projection of the APBD value, local governments can plan development programs better, allocate resources efficiently, and conduct more appropriate evaluations of the results of the policies that have been applied.

Conclusion

In conclusion, the prediction of the APBD value using the ARIMA method provides a clear picture of regional finances, and has the potential to support more strategic decision making in an effort to improve the welfare of the people in North Sumatra Province. This process, if continued and developed, can be an important part of a more transparent and accountable regional financial management system.

Future Research Directions

In addition to the ARIMA method, other forecasting techniques, such as machine learning algorithms and econometric models, can be used to improve the accuracy of the prediction. The integration of other methods or more complex analysis approaches may be needed in the future to increase prediction accuracy. Furthermore, the use of big data and data analytics can provide more insights into the regional financial management system, and help to identify areas for improvement.

Limitations of the Study

This study has several limitations. First, the data used in this study is limited to the period from 2002 to 2019, which may not be representative of the current economic conditions. Second, the ARIMA method may not be able to capture the complex relationships between the variables, and may not be able to provide accurate predictions in the long run. Third, the study assumes that the regional financial management system is stable and consistent, which may not be the case in reality.

Recommendations for Future Research

Based on the findings of this study, several recommendations for future research are proposed. First, the use of machine learning algorithms and econometric models can be explored to improve the accuracy of the prediction. Second, the integration of other methods or more complex analysis approaches may be needed in the future to increase prediction accuracy. Third, the use of big data and data analytics can provide more insights into the regional financial management system, and help to identify areas for improvement.
Q&A: Prediction of Regional Budget Value (APBD) using Autoregressive Integrated Moving Average (ARIMA)

Frequently Asked Questions

Q: What is the purpose of predicting the Regional Budget Value (APBD) using ARIMA?

A: The purpose of predicting the APBD value using ARIMA is to provide a clear picture of regional finances and support more strategic decision making in an effort to improve the welfare of the people in North Sumatra Province.

Q: What are the advantages of using ARIMA in predicting the APBD value?

A: The use of ARIMA's method in this study provides several advantages, including the ability to handle fluctuations in data, take into account the trend and seasonal of data, and provide more accurate estimates.

Q: What are the limitations of the study?

A: The study has several limitations, including the limited data period from 2002 to 2019, the potential for the ARIMA method to not capture complex relationships between variables, and the assumption of a stable and consistent regional financial management system.

Q: What are the recommendations for future research?

A: Based on the findings of this study, several recommendations for future research are proposed, including the use of machine learning algorithms and econometric models, the integration of other methods or more complex analysis approaches, and the use of big data and data analytics.

Q: How can the prediction of the APBD value using ARIMA be applied in practice?

A: The prediction of the APBD value using ARIMA can be applied in practice by providing a clear picture of regional finances and supporting more strategic decision making in an effort to improve the welfare of the people in North Sumatra Province. This can be achieved by using the predicted values to inform budget planning, resource allocation, and policy evaluation.

Q: What are the potential applications of the prediction of the APBD value using ARIMA?

A: The potential applications of the prediction of the APBD value using ARIMA include:

  • Budget planning and resource allocation
  • Policy evaluation and decision making
  • Financial forecasting and risk management
  • Economic development and growth

Q: How can the accuracy of the prediction of the APBD value using ARIMA be improved?

A: The accuracy of the prediction of the APBD value using ARIMA can be improved by:

  • Using more advanced machine learning algorithms and econometric models
  • Integrating other methods or more complex analysis approaches
  • Using big data and data analytics
  • Improving the quality and accuracy of the data used in the analysis

Q: What are the potential challenges and limitations of using ARIMA in predicting the APBD value?

A: The potential challenges and limitations of using ARIMA in predicting the APBD value include:

  • The potential for the ARIMA method to not capture complex relationships between variables
  • The assumption of a stable and consistent regional financial management system
  • The potential for the data to be influenced by external factors
  • The potential for the ARIMA method to be sensitive to the choice of parameters and model specifications.

Conclusion

The prediction of the Regional Budget Value (APBD) using Autoregressive Integrated Moving Average (ARIMA) provides a clear picture of regional finances and supports more strategic decision making in an effort to improve the welfare of the people in North Sumatra Province. However, the study has several limitations, and the accuracy of the prediction can be improved by using more advanced machine learning algorithms and econometric models, integrating other methods or more complex analysis approaches, and using big data and data analytics.