使用 ARIMA 模型全面分析 Googles 股票

Yijie Zhang
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摘要

由于其财务影响和内在复杂性,股票价格预测长期以来一直是一个备受关注的课题。对现有文献的研究表明,有必要对特定行业内的各种股票进行重点研究。在本研究中,作者评估了自回归整合移动平均(ARIMA)模型在预测谷歌股票表现方面的功效。本文使用的数据来自 2018 年至 2023 年 10 月的中国玉米市场价格。选择ARIMA模型是基于其被广泛接受和简单明了的特点。本文还探讨了预测的准确性如何受到各种历史数据点的影响。同时,预测结果表明,Googles 的股票在未来几周内有望继续增长。这项调查旨在利用 ARIMA 模型的功能,为股票市场行为,尤其是谷歌的股票市场行为提供有价值的见解。
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The comprehensive analysis of Googles stock using ARIMA model
Predicting stock prices has long been a subject of keen interest due to its financial implications and inherent complexity. The examination of existing literature suggests the need for a focused study encompassing a diverse spectrum of stocks within a specific sector. In this research, the author evaluates the efficacy of the AutoRegressive Integrated Moving Average (ARIMA) model in forecasting Googles stock performance. The data used in this paper comes from the Chinese corn market price of 2018 to October 2023. The selection of the ARIMA model is based on its widespread acceptance and straightforward nature. This paper also explores how the accuracy of predictions is influenced by various historical data points. Simultaneously, the projections indicate that Googles stock is poised for continued growth in the upcoming weeks. This investigation aims to provide valuable insights into the stock markets behaviour, particularly within the context of Google, by leveraging the ARIMA models capabilities.
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