Deep Learning Models for Bitcoin Prediction Using Hybrid Approaches with Gradient-Specific Optimization

Amina Ladhari, Heni Boubaker
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Abstract

Since cryptocurrencies are among the most extensively traded financial instruments globally, predicting their price has become a crucial topic for investors. Our dataset, which includes fluctuations in Bitcoin’s hourly prices from 15 May 2018 to 19 January 2024, was gathered from Crypto Data Download. It is made up of over 50,000 hourly data points that provide a detailed view of the price behavior of Bitcoin over a five-year period. In this study, we used potent algorithms, including gradient descent, attention mechanisms, long short-term memory (LSTM), and artificial neural networks (ANNs). Furthermore, to estimate the price of Bitcoin, we first merged two deep learning algorithms, LSTM and attention mechanisms, and then combined LSTM-Attention with gradient-specific optimization to increase our model’s performance. Then we integrated ANN-LSTM and included gradient-specific optimization for the same reason. Our results show that the hybrid model with gradient-specific optimization can be used to anticipate Bitcoin values with better accuracy. Indeed, the hybrid model combines the best features of both approaches, and gradient-specific optimization improves predictive performance through frequent analysis of pricing data changes.
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使用梯度特定优化混合方法的比特币预测深度学习模型
由于加密货币是全球交易最广泛的金融工具之一,预测其价格已成为投资者的一个重要课题。我们的数据集包括 2018 年 5 月 15 日至 2024 年 1 月 19 日期间比特币每小时价格的波动,数据集来自 Crypto Data Download。它由 5 万多个每小时的数据点组成,提供了五年内比特币价格行为的详细视图。在这项研究中,我们使用了梯度下降、注意力机制、长短期记忆(LSTM)和人工神经网络(ANN)等强效算法。此外,为了估算比特币的价格,我们首先合并了两种深度学习算法--LSTM 和注意力机制,然后将 LSTM-Attention 与梯度特定优化相结合,以提高模型的性能。然后,我们出于同样的原因整合了 ANN-LSTM,并加入了梯度特定优化。我们的结果表明,带有梯度特定优化的混合模型可以更准确地预测比特币值。事实上,混合模型结合了两种方法的最佳特点,而梯度特定优化则通过频繁分析价格数据变化提高了预测性能。
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