Facebook Prophet Model with Bayesian Optimization for USD Index Prediction

Ahmad Fitra Hamdani, Daniel Swanjaya, Risa Helilintar
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Abstract

Accuracy is the primary focus in prediction research. Optimization is conducted to improve the performance of prediction models, thereby enhancing prediction accuracy. This study aims to optimize the Facebook Prophet model by performing hyperparameter tuning using Bayesian Optimization to improve the accuracy of USD Index Value prediction. Evaluation is conducted through multiple prediction experiments using different ranges of historical data. The results of the study demonstrate that performing hyperparameter tuning on the Facebook Prophet model yields better prediction results. Prior to parameter tuning, the MAPE indicator metric is 1.38% for the historical data range of 2014-2023, and it decreases to 1.33% after parameter tuning. Further evaluation shows improved prediction performance using different ranges of historical data. For the historical data range of 2015-2023, the MAPE value decreases from 1.39% to 1.20%. Similarly, for the data range of 2016-2023, the MAPE decreases from 1.12% to 0.80%. Furthermore, for the data range of 2017-2023, there is a decrease from 0.80% to 0.76%. This is followed by the data range of 2018-2023, with a decrease from 0.75% to 0.70%. Lastly, for the data range of 2019-2023, there is a decrease from 0.63% to 0.55%. These results demonstrate that performing Hyperparameter Optimization using Bayesian Optimization consistently improves prediction accuracy in the Facebook Prophet model.
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利用贝叶斯优化法预测美元指数的 Facebook 先知模型
准确性是预测研究的首要重点。进行优化是为了改善预测模型的性能,从而提高预测准确性。本研究旨在通过使用贝叶斯优化法进行超参数调整来优化 Facebook Prophet 模型,从而提高美元指数值预测的准确性。通过使用不同范围的历史数据进行多次预测实验来进行评估。研究结果表明,对 Facebook Prophet 模型进行超参数调整可获得更好的预测结果。参数调整前,2014-2023 年历史数据范围内的 MAPE 指标为 1.38%,参数调整后降至 1.33%。进一步的评估显示,使用不同范围的历史数据,预测性能有所提高。对于 2015-2023 年的历史数据范围,MAPE 值从 1.39% 降至 1.20%。同样,对于 2016-2023 年的数据范围,MAPE 值从 1.12% 降至 0.80%。此外,2017-2023 年的数据范围也从 0.80% 降至 0.76%。其次是 2018-2023 年的数据范围,从 0.75% 下降到 0.70%。最后是 2019-2023 年的数据范围,从 0.63% 下降到 0.55%。这些结果表明,使用贝叶斯优化技术进行超参数优化可以持续提高 Facebook Prophet 模型的预测准确性。
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