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基于数据增强、多变量特征和情感分析的准确消费者物价指数预测:以韩国为例的研究

Accurate total consumer price index forecasting with data augmentation, multivariate features, and sentiment analysis: A case study in Korea.

作者信息

Seo Injae, Kim Minkyoung, Wook Kim Jong, Jang Beakcheol

机构信息

Graduate School of Information, Yonsei University, Seoul, Republic of South Korea.

Department of Computer Science, Sangmyung University, Seoul, Republic of South Korea.

出版信息

PLoS One. 2025 May 13;20(5):e0321530. doi: 10.1371/journal.pone.0321530. eCollection 2025.

DOI:10.1371/journal.pone.0321530
PMID:40359407
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12074598/
Abstract

The Consumer Price Index (CPI) is a key economic indicator used by policymakers worldwide to monitor inflation and guide monetary policy decisions. In Korea, the CPI significantly impacts decisions on interest rates, fiscal policy frameworks, and the Bank of Korea's strategies for economic stability. Given its importance, accurately forecasting the Total CPI is crucial for informed decision-making. Achieving accurate estimation, however, presents several challenges. First, the Korean Total CPI is calculated as a weighted sum of 462 items grouped into 12 categories of goods and services. This heterogeneity makes it difficult to account for all variations in consumer behavior and price dynamics. Second, the monthly frequency of CPI data results in a relatively sparse time series, limiting the performance of the analysis. Furthermore, external factors such as policy changes and pandemics add further volatility to the CPI. To address these challenges, we propose a novel framework consisting of four key components: (1) a hybrid Convolutional Neural Network-Long Short-Term Memory mechanism designed to capture complex patterns in CPI data, enhancing estimation accuracy; (2) multivariate inputs that incorporate CPI component indices alongside auxiliary variables for richer contextual information; (3) data augmentation through linear interpolation to convert monthly data into daily data, optimizing it for highly parametrized deep learning models; and (4) sentiment index derived from Korean CPI-related news articles, providing insights into external factors influencing CPI fluctuations. Experimental results demonstrate that the proposed model outperforms existing approaches in CPI prediction, as evidenced by lower RMSE values. This improved accuracy has the potential to support the development of more timely and effective economic policies.

摘要

消费者物价指数(CPI)是全球政策制定者用于监测通货膨胀和指导货币政策决策的关键经济指标。在韩国,消费者物价指数对利率决策、财政政策框架以及韩国银行的经济稳定策略有着重大影响。鉴于其重要性,准确预测总消费者物价指数对于做出明智决策至关重要。然而,要实现准确估计存在诸多挑战。首先,韩国总消费者物价指数是通过将462项商品和服务分为12类后进行加权求和计算得出的。这种异质性使得难以考虑到消费者行为和价格动态的所有变化。其次,消费者物价指数数据的月度频率导致时间序列相对稀疏,限制了分析的效果。此外,政策变化和疫情等外部因素进一步加剧了消费者物价指数的波动。为应对这些挑战,我们提出了一个由四个关键部分组成的新颖框架:(1)一种混合卷积神经网络-长短期记忆机制,旨在捕捉消费者物价指数数据中的复杂模式,提高估计准确性;(2)多变量输入,将消费者物价指数成分指数与辅助变量相结合,以获取更丰富的背景信息;(3)通过线性插值进行数据增强,将月度数据转换为每日数据,为高度参数化的深度学习模型进行优化;(4)从韩国与消费者物价指数相关的新闻文章中得出的情绪指数,为影响消费者物价指数波动的外部因素提供见解。实验结果表明,所提出的模型在消费者物价指数预测方面优于现有方法,较低的均方根误差值证明了这一点。这种提高的准确性有可能支持制定更及时有效的经济政策。

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