Metode Fuzzy Time Series Average Based untuk Peramalan Tingkat Suku Bunga Acuan Bank Indonesia
Fuzzy Time Series Average Based Method for forecasting the Benchmark Interest Rate of Bank Indonesia

Date
2025Author
Julaita, Julaita
Advisor(s)
Gultom, Parapat
Sirait, Katrin Jenny
Metadata
Show full item recordAbstract
Forecasting the Bank Indonesia benchmark interest rate (BI Rate) is one of the essential
indicator in monetary policy and national economic, as its fluctuations directly affect
inflation, the exchange rate, the banking sector, and economic activity in general.
Therefore, forecasting the BI Rate is essential for informing decision-making among
economic stakeholders. This study aims to implement the Fuzzy Time Series Average
Based method to forecast the BI Rate, as this method has the capability to determine
the effective interval length, thereby producing forecasts with a high level of accuracy.
The data used are secondary BI Rate on a quarterly basis, January, April, July, October
during the period April 2016 to April 2025. The results show that the Fuzzy Time Series
Average Based method produce a Mean Absolute Percentage Error (MAPE) of 0.08%,
which indicates that this method has an accuracy level of 99.92%. The very small MAPE
value (<10%) indicates that this method as a highly accurate forecasting techniques.
The forecast result for the period of July 2025 is 5.61%, indicates that the model detects
a downward trend from the previous period.
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- Undergraduate Theses [1470]