电子货币流通预测:采用遗传算法的反向传播

Elvia Budianita, O. Okfalisa, Muhammad Rizki Assiddiki
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引用次数: 0

摘要

数字化转型推动了电子货币在经济交易中的应用。在其优势的背后,电子货币受到通货膨胀率的影响,从而加速了国家的货币流通。此外,脆弱的新冠肺炎经济促使各国需要预测电子货币的流通,以遏制未来的通货膨胀。因此,本文采用结合遗传算法的反向传播方法,利用2009年1月至2019年12月印度尼西亚银行(BI)的时间序列数据,预测印度尼西亚电子货币的传播。这里考虑了120个数据和12个变量,以前12个月为重点,彻底预测了2020年的环流。该研究表明,2020年印尼的电子货币流通每月都在增加。测试结果表明,在90%:10%、学习率参数为0.8、交叉概率与突变组合为0.4:0.6、总代数和总体数分别为350和200时,数据训练分割的均方误差(MSE)最小值为0.000035。简而言之,与实际数据和原始BPNN相比,遗传算法的反向传播被期望是电子货币流通的成功结果,并且提供了更大的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Prediction of E-Money Circulation: Backpropagation with Genetic Algorithm Adoption
Digital transformation forces the utilization of e-money during the economic transaction. Behind its advantages, e-money has been influenced by the inflation rate, thus accelerating the country’s money circulation. Moreover, the fragile Covid-19 economy triggers each country’s need to anticipate the circulation of e-money to deter future inflation. Therefore, this paper deployed the Backpropagation approach integrated with the Genetic Algorithm to forecast the dissemination of e-money in Indonesia by exploiting time-series Bank Indonesia (BI) data from January 2009 to December 2019. Here, 120 data with 12 variables are considered to thoroughly predict the Year 2020 circulation focusing on the previous 12 months. This study reveals that e-money circulation in Indonesia is increasing monthly in 2020. The testing result shows that the lowest mean square error (MSE) is found at 0.000035 for data training division at 90%:10%, learning rate parameter at 0.8, the combination of crossover probability and mutation at 0.4:0.6, and the total generation and population at 350 and 200, respectively. In a nutshell, Backpropagation with a Genetic Algorithm has been expected to a successful outcome for e-money circulation and provides large values compared with actual data and original BPNN.
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