{"title":"基于粒度分解的新型加密货币价格预测模型框架","authors":"Indranil Ghosh, Rabin K. Jana, Dinesh K. Sharma","doi":"10.1108/cfri-03-2023-0072","DOIUrl":null,"url":null,"abstract":"<h3>Purpose</h3>\n<p>Owing to highly volatile and chaotic external events, predicting future movements of cryptocurrencies is a challenging task. This paper advances a granular hybrid predictive modeling framework for predicting the future figures of Bitcoin (BTC), Litecoin (LTC), Ethereum (ETH), Stellar (XLM) and Tether (USDT) during normal and pandemic regimes.</p><!--/ Abstract__block -->\n<h3>Design/methodology/approach</h3>\n<p>Initially, the major temporal characteristics of the price series are examined. In the second stage, ensemble empirical mode decomposition (EEMD) and maximal overlap discrete wavelet transformation (MODWT) are used to decompose the original time series into two distinct sets of granular subseries. 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引用次数: 0
摘要
目的由于外部事件的高度不稳定性和混乱性,预测加密货币的未来走势是一项具有挑战性的任务。本文提出了一个颗粒混合预测建模框架,用于预测比特币(BTC)、莱特币(LTC)、以太坊(ETH)、恒星币(XLM)和Tether(USDT)在正常和大流行时期的未来数字。第二阶段,使用集合经验模式分解(EEMD)和最大重叠离散小波变换(MODWT)将原始时间序列分解为两组不同的粒度子序列。第三阶段,对分解后的子序列应用长短期记忆网络(LSTM)和极梯度提升(XGB)来估计初始预测。研究结果严格的性能评估和 Diebold-Mariano 配对统计测试结果表明了所建议的预测框架的功效。该框架在明确 COVID-19 大流行时间线期间也取得了值得称赞的预测性能。BTC 和 ETH 的未来趋势相对更容易预测,而 USDT 则相对较难预测。所选加密货币时间动态的经验属性提供了更深刻的见解。
A novel granular decomposition based predictive modeling framework for cryptocurrencies' prices forecasting
Purpose
Owing to highly volatile and chaotic external events, predicting future movements of cryptocurrencies is a challenging task. This paper advances a granular hybrid predictive modeling framework for predicting the future figures of Bitcoin (BTC), Litecoin (LTC), Ethereum (ETH), Stellar (XLM) and Tether (USDT) during normal and pandemic regimes.
Design/methodology/approach
Initially, the major temporal characteristics of the price series are examined. In the second stage, ensemble empirical mode decomposition (EEMD) and maximal overlap discrete wavelet transformation (MODWT) are used to decompose the original time series into two distinct sets of granular subseries. In the third stage, long- and short-term memory network (LSTM) and extreme gradient boosting (XGB) are applied to the decomposed subseries to estimate the initial forecasts. Lastly, sequential quadratic programming (SQP) is used to fetch the forecast by combining the initial forecasts.
Findings
Rigorous performance assessment and the outcome of the Diebold-Mariano’s pairwise statistical test demonstrate the efficacy of the suggested predictive framework. The framework yields commendable predictive performance during the COVID-19 pandemic timeline explicitly as well. Future trends of BTC and ETH are found to be relatively easier to predict, while USDT is relatively difficult to predict.
Originality/value
The robustness of the proposed framework can be leveraged for practical trading and managing investment in crypto market. Empirical properties of the temporal dynamics of chosen cryptocurrencies provide deeper insights.
期刊介绍:
China Finance Review International publishes original and high-quality theoretical and empirical articles focusing on financial and economic issues arising from China's reform, opening-up, economic development, and system transformation. The journal serves as a platform for exchange between Chinese finance scholars and international financial economists, covering a wide range of topics including monetary policy, banking, international trade and finance, corporate finance, asset pricing, market microstructure, corporate governance, incentive studies, fiscal policy, public management, and state-owned enterprise reform.