基于UiPath抓取数据的Transformer深度学习模型的黄金期货价格预测

IF 1.2 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES
Sirisha Charugulla, Shaiku Shahida Saheb
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引用次数: 0

摘要

黄金是世界上最有价值和交易最广泛的商品之一,特别是在印度,在经济和金融市场中发挥着重要作用。从历史上看,黄金一直是国际贸易和经济稳定的基石,各国央行通过持有黄金储备来控制通胀和外债。黄金价格是影响市场趋势和投资策略的关键经济指标。然而,由于金融市场受利率、经济衰退、油价波动和地缘政治事件等多种因素的影响,具有复杂性和非线性,因此准确预测黄金价格具有挑战性。利用UiPath对investing.com网站上通过网页抓取收集的每日黄金价格进行预测,采用研究变压器模型进行预测。它是一个机器人过程自动化(RPA)平台,用于保持数据的完整性并增强模型性能,执行了缺失数据处理和最小缩放等预处理操作。对模型进行关键性能指标的测试和训练,均方误差(MSE)为0.0224,均方根误差(RMSE)为0.1496,r平方为0.93,预测精度较高。研究结果证实,变压器模型能有效地预测短期价格走势和长期市场趋势,比传统预测方法更准确可靠。该研究为投资者、金融分析师和决策者在金条市场上做出明智的决策提供了有价值的指导。未来的研究可以通过纳入其他数据来源来改进,例如来自新闻标题和社交媒体的情绪,这可能会为市场走势提供更丰富的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gold Futures Price Prediction Using Transformer Deep Learning Models with Data Scraped via UiPath.

Gold is one of the most valuable and widely traded commodities worldwide, particularly in India, and plays a significant role in economic and financial markets. Historically, gold has been a cornerstone of international trade and economic stability, with central banks maintaining reserves to manage inflation and foreign debt. The price of gold serves as a key economic indicator that influences market trends and investment strategies. However, accurately predicting gold prices is challenging due to the complex and nonlinear nature of financial markets which are influenced by various factors including interest rates, economic recessions, oil price fluctuations, and geopolitical events. The study transformer model was used to predict the daily gold prices which were collected from investing.com through web scraping by using UiPath. It is a Robotic Process Automation (RPA) platform to preserve the integrity of the data and enhance model performance, preprocessing operations such as missing data handling and MinMax scaling were performed. The model was tested and trained on key performance metrics and achieved a Mean Squared Error (MSE) of 0.0224, Root Mean Squared Error (RMSE) of 0.1496, and R-squared of 0.93, with a high prediction accuracy. The study results confirm that the transformer model efficiently detects short-term price movements and long-term market trends offering a more accurate and dependable method than traditional forecasting methods. The study provides valuable guidance to investors, financial analysts and policymakers in making informed decisions in the gold bullion market. Future research can be improved by the inclusion of alternative data sources such as sentiment from news headlines and social media which can potentially offer richer insight into market movements.

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来源期刊
Jove-Journal of Visualized Experiments
Jove-Journal of Visualized Experiments MULTIDISCIPLINARY SCIENCES-
CiteScore
2.10
自引率
0.00%
发文量
992
期刊介绍: JoVE, the Journal of Visualized Experiments, is the world''s first peer reviewed scientific video journal. Established in 2006, JoVE is devoted to publishing scientific research in a visual format to help researchers overcome two of the biggest challenges facing the scientific research community today; poor reproducibility and the time and labor intensive nature of learning new experimental techniques.
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