Forecasting bank Indonesia currency inflow and outflow using ARIMA, time series regression (TSR), ARIMAX, and NN approaches in lampung

Qadrini, Laila and Asrirawan, Asrirawan and Mahmudah, Nur and Sudding, Muhammad Fahmuddin and Amri, Ihsan Fathoni (2021) Forecasting bank Indonesia currency inflow and outflow using ARIMA, time series regression (TSR), ARIMAX, and NN approaches in lampung. Forecasting bank Indonesia currency inflow and outflow using ARIMA, time series regression (TSR), ARIMAX, and NN approaches in lampung, 17 (2). pp. 166-177. ISSN 2614-8811

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Abstract

There are various types of data, one of which is the time-series data. This data type is capable of predicting future data with a similar speed as the forecasting method of analysis. This method is applied by Bank Indonesia (BI) in determining currency inflows and outflows in society. Moreover, Inflows and outflows of currency are monthly time-series data which are assumed to be influenced by time. In this study, several forecasting methods were used to predict this flow of currency including ARIMA, Time Series Regression (TSR), ARIMAX, and NN. Furthermore, RMSE accuracy was used in selecting the best method for predicting the currency flow. The results showed that the ARIMAX method was the best for forecasting because this method had the smallest RMSE.

Item Type: Article
Subjects: 500 – Ilmu Pengetahuan > 510 Matematika > 510 Matematika
500 – Ilmu Pengetahuan > 510 Matematika > 511 Prinsip-prinsip umum matematika
Divisions: Fakultas Sains dan Teknologi > Statistika
Depositing User: Nur Mahmudah
Date Deposited: 27 Dec 2023 01:51
Last Modified: 27 Dec 2023 01:51
Contributors (Pembimbing / Pengarah):
Contribution
Name
NIDN
Author
Qadrini, Laila
NIDN0000000000
Author
Asrirawan, Asrirawan
NIDN0000000000
Author
Mahmudah, Nur
NIDN0715039201
Author
Sudding, Muhammad Fahmuddin
NIDN0000000000
Author
Amri, Ihsan Fathoni
NIDN0000000000
URI: https://repository.unugiri.ac.id:8443/id/eprint/4765

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