深度学习在时间限制内预测汇率

Ruly Sumargo, Ito Wasito
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摘要

印度尼西亚自1969年开始实行开放经济体系,对国家经济增长产生了重大影响。参与国际贸易的国内商品供求量大,这表明进出口活动与印尼盾汇率密切相关。经济稳定性是通过印尼盾对外币汇率的稳定性来衡量的。全球市场的供需平衡被认为是创造稳定经济的关键。历史记录显示,1998 年印尼发生了经济危机,印尼盾兑美元的汇率急剧上升,给国内生产成本带来了挑战。本研究旨在利用基于历史(时间序列)数据的数据科学方法进行预测。对 GRU、LSTM 和 RNN 算法进行了评估,以执行预测。结果表明,RNN 算法在预测方面普遍优于 GRU 和 LSTM,尤其是在有限的时间序列数据中。虽然 RNN 算法通常更胜一筹,但在一个实例中,GRU 算法在五年内对人民币兑美元的预测准确率略高(差值为 0.047%)。此外,考虑到利率等外部因素,研究还强调了批量大小对算法准确性的重大影响。这些发现为经济决策和政策制定提供了宝贵的见解。
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Deep Learning for Exchange Rate Prediction Within Time Constrain
The implementation of an open economic system in Indonesia since 1969 has significant impact to the national economic growth. The high demand and supply of goods from within the country involved in international trade demonstrate a close correlation between export and import activities with the exchange rate of the rupiah. Economic stability is measured through the stability of the rupiah exchange rate against foreign currencies. The balance between demand and supply in the global market is considered crucial for creating a stable economy. History has recorded the Indonesian economic crisis in 1998, where the exchange rate of the rupiah against the US dollar drastically raises and causing challenges to the domestic production cost. This research aiming to make predictions using data science approach based on historical (time series) data. GRU, LSTM, and RNN algorithm being assess to perform the prediction. Results show that RNN algorithms generally outperform GRU and LSTM in making the prediction, particularly with limited time series data. Although RNN is typically superior, in one instance, GRU achieved slightly higher accuracy (0.047% difference) for the CNY to IDR pair over five years. Furthermore, the research highlights the substantial impact of batch size on algorithm accuracy, considering external factors such as interest rates. These findings offer valuable insights for economic decision-making and policy formulation.
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发文量
204
审稿时长
4 weeks
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