Arif Erman, Herlinawati Elin, Devianto Dodi, Yollanda Mutia, Permana Dony
Information system study program, Universitas Terbuka, Tangerang Selatan, Indonesia.
Mathematics study program, Universitas Terbuka, Tangerang Selatan, Indonesia.
Front Big Data. 2024 Jan 4;6:1282541. doi: 10.3389/fdata.2023.1282541. eCollection 2023.
Inflation is capable of significantly impacting monetary policy, thereby emphasizing the need for accurate forecasts to guide decisions aimed at stabilizing inflation rates. Given the significant relationship between inflation and monetary, it becomes feasible to detect long-memory patterns within the data. To capture these long-memory patterns, Autoregressive Fractionally Moving Average (ARFIMA) was developed as a valuable tool in data mining. Due to the challenges posed in residual assumptions, time series model has to be developed to address heteroscedasticity. Consequently, the implementation of a suitable model was imperative to rectify this effect within the residual ARFIMA. In this context, a novel hybrid model was proposed, with Generalized Autoregressive Conditional Heteroscedasticity (GARCH) being replaced by Long Short-Term Memory (LSTM) neural network. The network was used as iterative model to address this issue and achieve optimal parameters. Through a sensitivity analysis using mean absolute percentage error (MAPE), mean squared error (MSE), and mean absolute error (MAE), the performance of ARFIMA, ARFIMA-GARCH, and ARFIMA-LSTM models was assessed. The results showed that ARFIMA-LSTM excelled in simulating the inflation rate. This provided further evidence that inflation data showed characteristics of long memory, and the accuracy of the model was improved by integrating LSTM neural network.
通货膨胀能够对货币政策产生重大影响,从而凸显了准确预测以指导旨在稳定通货膨胀率的决策的必要性。鉴于通货膨胀与货币之间的显著关系,在数据中检测长期记忆模式变得可行。为了捕捉这些长期记忆模式,自回归分数阶移动平均(ARFIMA)作为数据挖掘中的一种有价值的工具而被开发出来。由于在残差假设方面存在挑战,必须开发时间序列模型来解决异方差性。因此,实施合适的模型对于纠正残差ARFIMA中的这种影响至关重要。在此背景下,提出了一种新颖的混合模型,用长短期记忆(LSTM)神经网络取代广义自回归条件异方差(GARCH)。该网络被用作迭代模型来解决此问题并实现最优参数。通过使用平均绝对百分比误差(MAPE)、均方误差(MSE)和平均绝对误差(MAE)进行敏感性分析,评估了ARFIMA、ARFIMA - GARCH和ARFIMA - LSTM模型的性能。结果表明,ARFIMA - LSTM在模拟通货膨胀率方面表现出色。这进一步证明了通货膨胀数据呈现出长期记忆的特征,并且通过整合LSTM神经网络提高了模型的准确性。