利用推特情绪分析预测比特币短期价格

IF 3.4 3区 经济学 Q1 BUSINESS, FINANCE Financial Analysts Journal Pub Date : 2023-08-01 DOI:10.31107/2075-1990-2023-4-123-137
A. Mikhaylov, V. Khare, S. Uhunamure, Ts. Chang, D. Stepanova
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引用次数: 0

摘要

本文的目标是开发一种基于随机森林和模糊逻辑模型的创新预测方法,用于预测加密资产价格(ifs, pfs, q- rofs)。基线预测范围为90天(额外范围为30、60、120和150天),这允许估计所选特征的重要性以及时间对预测准确性的影响。本文利用在线社交网络活动、交易参数、技术指标和其他加密货币的数据,提出了随机森林和模糊逻辑模型的最优数据选择方法,以改进对比特币每日收盘价的预测。本文利用基于树的机器学习预测和模糊逻辑模型对比特币进行预测。这篇文章试图证明,使用机器学习算法的自动比特币预测对加密货币市场非常有效。然而,后者的特点是高波动性,流动性最强的加密货币(主要是比特币)大幅加息。因此,投资加密货币,特别是长期投资,涉及重大风险。这就定义了这篇论文对投资者和监管机构的重要性。数据选择方法的仿真研究表明,将随机森林和模糊逻辑模型的精度性能推广到预测的真实偏好,即使在显著噪声测量下,所提出的选择方法也能导致估计的快速收敛。在90天的时间范围内,模型结果的准确率超过85.21。
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Bitcoin Price Short-term Forecast Using Twitter Sentiment Analysis
The goal of the article is to develop an innovative forecasting approach based on the Random Forest and fuzzy logic models for predicting crypto-asset prices (IFSs, PFSs, q-ROFSs). The baseline forecast horizon is 90 days (additional horizons are 30, 60, 120 and 150 days), which allows to estimate the significance of the chosen features and the impact of time on the forecast accuracy. The paper proposes an optimal data selection approach for the Random Forest and fuzzy logic models to improve the prediction of the daily closing price of Bitcoin, using online social network activity, trading parameters, technical indicators, and data on other cryptocurrencies. This paper utilizes a tree-based machine learning prediction and a fuzzy logic model for Bitcoin. The article attempts to prove that automated Bitcoin forecasting using machine learning algorithms is very effective for the cryptocurrency market. Nevertheless, the latter is characterized by high volatility, significant rate hikes of the most liquid cryptocurrencies (mainly Bitcoin). Therefore, investments in cryptocurrencies, especially long-term ones, involve significant risks. This defines the paper’s significance for investors and regulators. As shown by simulation studies of data selection approaches generalizing the accuracy performance of the Random Forest and fuzzy logic models to real preferences of forecasting, even under significant noise measurements, the proposed selection approach leads to fast convergence of estimates. The accuracy of the model’s results exceed 85.21 on a 90-day time horizon.
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来源期刊
Financial Analysts Journal
Financial Analysts Journal BUSINESS, FINANCE-
CiteScore
5.40
自引率
7.10%
发文量
31
期刊介绍: The Financial Analysts Journal aims to be the leading practitioner journal in the investment management community by advancing the knowledge and understanding of the practice of investment management through the publication of rigorous, peer-reviewed, practitioner-relevant research from leading academics and practitioners.
期刊最新文献
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