The seasonal model of chili price movement with the effect of long memory and exogenous variables for improving time series model accuracy

D. Devianto, Elsa Wahyuni, M. Maiyastri, Mutia Yollanda
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Abstract

This study aimed to explore big-time series data on agricultural commodities with an autocorrelation model comprising long-term processes, seasonality, and the impact of exogenous variables. Among the agricultural commodities with a large amount of data, chili prices exemplified criteria for long-term memory, seasonality, and the impact of various factors on production as an exogenous variable. These factors included the month preceding the new year and the week before the Eid al-Fitr celebration in Indonesia. To address the factors affecting price fluctuations, the Seasonal Autoregressive Fractionally Integrated Moving Average (SARFIMA) model was used to manage seasonality and long-term memory effects in the big data analysis. It improved with the addition of exogenous variables called SARFIMAX (SARFIMA with exogenous variables is known as SARFIMAX). After comparing the accuracy of both models, it was discovered that the SARFIMAX performed better, indicating the influence of seasonality and previous chili prices for an extended period in conjunction with exogenous variables. The SARFIMAX model gives an improvement in model accuracy by adding the effect of exogenous variables. Consequently, this observation concerning price dynamics established the cornerstone for maintaining the sustainability of chili supply even with the big data case.
具有长记忆和外生变量效应的辣椒价格变动季节模型,用于提高时间序列模型的准确性
本研究旨在利用一个包含长期过程、季节性和外生变量影响的自相关模型来探索农产品的大时间序列数据。在拥有大量数据的农产品中,辣椒价格体现了长期记忆、季节性以及作为外生变量的各种因素对生产的影响等标准。这些因素包括印度尼西亚新年前一个月和开斋节前一周。为了解决影响价格波动的因素,在大数据分析中使用了季节自回归分数综合移动平均(SARFIMA)模型来管理季节性和长期记忆效应。在加入外生变量 SARFIMAX 后,该模型得到了改进(带有外生变量的 SARFIMA 被称为 SARFIMAX)。在比较了两个模型的准确性后,发现 SARFIMAX 的表现更好,这表明季节性和以前的辣椒价格与外生变量结合在一起会产生更长时间的影响。SARFIMAX 模型增加了外生变量的影响,从而提高了模型的准确性。因此,有关价格动态的这一观察结果为在大数据情况下保持辣椒供应的可持续性奠定了基石。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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