arima驱动的内存市场洞察:预测DRAM现货价格

IF 5.5 Q1 MANAGEMENT
Ming-Lung Hsu , Hsiao Hsien Li , Sheng Tun Li
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引用次数: 0

摘要

半导体行业是台湾经济的重要基石,对提升台湾的全球科技实力至关重要。动态随机存取存储器(DRAM)在其各种输出中脱颖而出。然而,DRAM的价格表现出显著的波动性,导致半导体行业制造商的财务大幅波动。这种不可预测性构成了相当大的挑战,给它们的金融稳定带来了过度的压力。因此,本研究旨在脱离传统的行业启发式方法,建立定量预测模型。实证结果表明,DRAM现货价格表现出非平稳的时间序列特征,促使ARIMA模型的发展来捕捉其价格动态。此外,我们通过纳入四个额外变量来丰富原始的ARIMA模型:Hynix DSI, Micron DSI,欧洲PMI和美国PMI,从而使ARIMA模型更加稳健,对预测DRAM价格具有更强的解释力。我们的分析证明了ARIMAX模型在解释和预测DRAM价格方面的有效性。与滚动预测方法相结合,最终预测值与实际结果接近。我们的预测模型有望为公司未来的DRAM采购决策提供信息,从而潜在地节省成本并减轻库存压力。在随后的情景分析中,可以观察到使用该预测模型实施采购策略有效地降低了成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ARIMA-driven memory market insights: Forecasting DRAM spot price
The semiconductor sector is a vital cornerstone of Taiwan's economy, pivotal in bolstering the nation's global technology prowess. Dynamic Random Access Memory (DRAM) stands out among its various outputs. However, the price of DRAM exhibits significant volatility, leading to substantial financial fluctuations for manufacturers in the semiconductor sector. This unpredictability poses a considerable challenge, placing undue strain on their financial stability.
Hence, this study aims to establish a quantitatively-based prediction model departing from conventional industry heuristics. Empirical findings reveal that DRAM spot prices exhibit non-stationary time series characteristics, prompting the development of an ARIMA model to capture their price dynamics. Furthermore, we enriched the original ARIMA model by incorporating four additional variables: Hynix DSI, Micron DSI, European PMI, and US PMI, resulting in a more robust ARIMAX model with enhanced explanatory power for predicting DRAM prices.
Our analysis demonstrates the ARIMAX model's effectiveness in explaining and predicting DRAM prices. When combined with the Rolling prediction method, the final predicted values closely align with actual outcomes. Our prediction model promises to inform future DRAM purchasing decisions within the company, potentially yielding cost savings and alleviating inventory pressures. In the subsequent scenario analysis, it was observed that implementing procurement strategies using this prediction model effectively reduced costs.
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来源期刊
CiteScore
8.00
自引率
4.50%
发文量
47
期刊介绍: Asia Pacific Management Review (APMR), peer-reviewed and published quarterly, pursues to publish original and high quality research articles and notes that contribute to build empirical and theoretical understanding for concerning strategy and management aspects in business and activities. Meanwhile, we also seek to publish short communications and opinions addressing issues of current concern to managers in regards to within and between the Asia-Pacific region. The covered domains but not limited to, such as accounting, finance, marketing, decision analysis and operation management, human resource management, information management, international business management, logistic and supply chain management, quantitative and research methods, strategic and business management, and tourism management, are suitable for publication in the APMR.
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