基于XGBoost模型的以太坊短期收益预测

Wipawee Nayam, Y. Limpiyakorn
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引用次数: 0

摘要

与依赖银行或政府等中心化的传统货币不同,加密货币因其去中心化交易而受到欢迎。去中心化利用了不需要中介的优势,从而减少了交易费用和处理时间。然而,由于价格波动和快速变化,投资加密货币会带来风险和不确定性。由于多种因素对价格变动的影响,资产价格的预测是复杂的。本文研究了技术因素来分析以太坊(ETH)在1-10天期间的短期回报。包含ETH收盘价的历史数据来自CoinGecko。从动量、波动性和情绪因素中选择22个指标作为候选指标,为市场趋势提供有价值的见解。通过计算基于过去收盘价的各种指标,本研究利用XGBoost,一个强大的增强决策树集合,发现以前的交易模式。使用多类别AUC-ROC指标评估模型性能,该指标衡量预测三种ETH回报类型的准确性:下行趋势,横向趋势和上行趋势。结果表明,模型的准确率得分在0.65 ~ 0.67之间。此外,该研究强调了在对以太坊进行投资决策时考虑动量指标的重要性。关键词:加密货币投资,技术因素,以太坊,XGBoost,机器学习
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Prediction of Ethereum Short-term Returns Using XGBoost Model
Unlike traditional currencies that rely on centralized such as banks or governments, cryptocurrencies have become popular due to its decentralized transactions. Decentralization takes advantage of no requirement for intermediaries, thus reducing transaction fees and processing times. However, investing in cryptocurrencies incurs risks and uncertainties due to price volatility and rapid changes. The fact that prediction of asset prices is complex due to the influence of multiple factors on price movements. This paper studied the technical factor to analyse the short-term returns of Ethereum (ETH) in the periods of 1-10 days. The historical data containing ETH closing price are collected from CoinGecko. The twenty-two indicators are chosen from Momentum, Volatility, and Sentiment factors as candidates to provide valuable insights in market trends. By calculating various indicators based on past closing prices, this study utilizes XGBoost, a powerful boosted decision trees ensemble, to discover patterns in previous trading. The model performance is evaluated using the multi-class AUC-ROC metric, which measures the accuracy of predicting three types of ETH returns: Downtrend, Sideway, and Uptrend. The results show that the models achieve accuracy scores ranging from 0.65 to 0.67. Moreover, the study emphasizes the importance of considering momentum indicators when making investment decisions in Ethereum. Keywords—cryptocurrency investment, technical factor, Ethereum, XGBoost, machine learning
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