A Hybrid Approach Combining the Lie Method and Long Short-Term Memory (LSTM) Network for Predicting the Bitcoin Return

M. Bildirici, Y. Uçan, Ramazan Tekercioglu
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Abstract

This paper introduces hybrid models designed to analyze daily and weekly bitcoin return spanning the periods from 18 July 2010 to 28 December 2023 for daily data, and from 18 July 2010 to 24 December 2023 for weekly data. Firstly, the fractal and chaotic structure of the selected variables was explored. Asymmetric Cantor set, Boundary of the Dragon curve, Julia set z2 −1, Boundary of the Lévy C curve, von Koch curve, and Brownian function (Wiener process) tests were applied. The R/S and Mandelbrot–Wallis tests confirmed long-term dependence and fractionality. The largest Lyapunov test, the Rosenstein, Collins and DeLuca, and Kantz methods of Lyapunov exponents, and the HCT and Shannon entropy tests tracked by the Kolmogorov–Sinai (KS) complexity test determined the evidence of chaos, entropy, and complexity. The BDS test of independence test approved nonlinearity, and the TeraesvirtaNW and WhiteNW tests, the Tsay test for nonlinearity, the LR test for threshold nonlinearity, and White’s test and Engle test confirmed nonlinearity and heteroskedasticity, in addition to fractionality and chaos. In the second stage, the standard ARFIMA method was applied, and its results were compared to the LieNLS and LieOLS methods. The results showed that, under conditions of chaos, entropy, and complexity, the ARFIMA method did not yield successful results. Both baseline models, LieNLS and LieOLS, are enhanced by integrating them with deep learning methods. The models, LieLSTMOLS and LieLSTMNLS, leverage manifold-based approaches, opting for matrix representations over traditional differential operator representations of Lie algebras were employed. The parameters and coefficients obtained from LieNLS and LieOLS, and the LieLSTMOLS and LieLSTMNLS methods were compared. And the forecasting capabilities of these hybrid models, particularly LieLSTMOLS and LieLSTMNLS, were compared with those of the main models. The in-sample and out-of-sample analyses demonstrated that the LieLSTMOLS and LieLSTMNLS methods outperform the others in terms of MAE and RMSE, thereby offering a more reliable means of assessing the selected data. Our study underscores the importance of employing the LieLSTM method for analyzing the dynamics of bitcoin. Our findings have significant implications for investors, traders, and policymakers.
结合谎言法和长短期记忆(LSTM)网络的混合方法预测比特币回报率
本文介绍了混合模型,旨在分析 2010 年 7 月 18 日至 2023 年 12 月 28 日期间的每日和每周比特币回报率(日数据),以及 2010 年 7 月 18 日至 2023 年 12 月 24 日期间的每周数据。首先,探讨了所选变量的分形和混沌结构。应用了非对称康托尔集、龙形曲线边界、朱利亚集 z2-1、莱维 C 曲线边界、von Koch 曲线和布朗函数(维纳过程)检验。R/S 和 Mandelbrot-Wallis 检验证实了长期依赖性和分数性。最大里亚普诺夫检验、里亚普诺夫指数的罗森斯坦、柯林斯和德卢卡、康茨方法,以及由柯尔莫哥洛夫-西奈(KS)复杂性检验跟踪的 HCT 和香农熵检验确定了混沌、熵和复杂性的证据。BDS 独立性检验证实了非线性,TeraesvirtaNW 和 WhiteNW 检验、Tsay 非线性检验、阈值非线性 LR 检验、White 检验和 Engle 检验证实了非线性和异方差性,此外还有分数性和混沌性。在第二阶段,应用标准 ARFIMA 方法,并将其结果与 LieNLS 和 LieOLS 方法进行比较。结果表明,在混沌、熵和复杂性条件下,ARFIMA 方法的结果并不理想。通过将 LieNLS 和 LieOLS 这两种基线模型与深度学习方法相结合,它们都得到了增强。LieLSTMOLS和LieLSTMNLS模型利用基于流形的方法,选择矩阵表示而不是传统的列代数微分算子表示。比较了 LieNLS 和 LieOLS 以及 LieLSTMOLS 和 LieLSTMNLS 方法获得的参数和系数。并比较了这些混合模型,特别是 LieLSTMOLS 和 LieLSTMNLS,与主要模型的预测能力。样本内和样本外分析表明,LieLSTMOLS 和 LieLSTMNLS 方法在 MAE 和 RMSE 方面优于其他方法,从而为评估所选数据提供了更可靠的方法。我们的研究强调了使用 LieLSTM 方法分析比特币动态的重要性。我们的研究结果对投资者、交易者和政策制定者具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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