加密货币市场技术分析的有效性:来自机器学习方法的证据

Q2 Economics, Econometrics and Finance Journal of Asian Finance, Economics and Business Pub Date : 2023-09-30 DOI:10.17261/pressacademia.2023.1821
Ersin Kanat
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引用次数: 0

摘要

目的-本研究旨在评估投资者在加密货币市场中用于做出明智决策的技术分析指标的有效性。这项研究强调了准确决策方法在金融市场中的重要性,特别关注近年来受到投资者极大关注的加密货币市场。方法-该研究专门研究了技术分析,这是一种在各种金融市场中广泛使用的方法,重点是其对比特币价格预测的预测能力。该研究利用大数据分析和机器学习等先进技术,利用2017年1月1日至2022年6月30日的每日交易数据,呈现技术指标及其相关的误差范围。研究结果-该研究强调了加权移动平均(WMA)和随机振荡器(STO)指标组合使用的重要性,表明多个指标优于单个指标。这项研究强调了技术分析方法在加密货币市场中的有效性,有助于开发增强的投资策略。结论-总之,本研究深入研究了投资者在加密货币市场中使用的技术分析技术的效力。这些见解表明,将指标和技术分析方法相结合,为未来的投资策略带来了希望。需要注意的是,即使是最好的方法也会导致损失,这一点可以从误差范围的存在中得到证明,而且通过技术分析方法也不能保证绝对的盈利能力。关键词:加密货币,技术分析,机器学习,分类算法,投资。JEL代码:C38, C55, G17
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The validity of technical analysis in the cryptocurrency market: evidence from machine learning methods
Purpose- This study aims to assess the effectiveness of technical analysis indicators used by investors in the cryptocurrency market for making informed decisions. Emphasizing the importance of accurate decision-making methods in financial markets, this research particularly focuses on the cryptocurrency market, which has gained significant attention among investors in recent years. Methodology- The study specifically examines technical analysis, a widely employed method in various financial markets, with a focus on its predictive capabilities concerning Bitcoin price forecasts. Leveraging advanced technologies, such as big data analysis and machine learning, the research utilizes daily trading data from January 1, 2017, to June 30, 2022, presenting technical indicators and their associated error margins. Findings- The study highlights the significance of using Weighted Moving Average (WMA) and Stochastic Oscillator (STO) indicators in combination, demonstrating that multiple indicators outperform individual ones. This research underscores the effectiveness of technical analysis methods in the cryptocurrency market, aiding the development of enhanced investment strategies. Conclusion- In conclusion, this study delves into the potency of technical analysis techniques employed by investors in cryptocurrency markets. The insights indicate that combining indicators and technical analysis methods holds promise for future investment strategies. It is essential to note that even the best method can lead to losses, as evidenced by the presence of error margins, and absolute profitability cannot be guaranteed through technical analysis methods. Keywords: Cryptocurrency, technical analysis, machine-learning, classification algorithms, investment. JEL Codes: C38, C55, G17
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