比特币价格预测比较研究

Ali Mohammadjafari
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摘要

股票价格预测一直是一项至关重要且极具挑战性的任务,尤其是对于像比特币这样波动性极大的数字货币而言。我们采用五倍交叉验证来增强泛化,并利用 L2 正则化来减少过拟合和噪声。我们的研究表明,在预测比特币价格方面,GRUs 模型比 LSTMs 模型具有更高的准确性。具体来说,与测试集数据中的实际价格相比,GRU 模型的 MSE 为 4.67,而 LSTM 模型的 MSE 为 6.25。这一发现表明,GRU 模型更适合处理具有长期依赖性的连续数据,而这正是比特币价格等金融时间序列数据的特点。总之,我们的结果为神经网络模型准确预测比特币价格的潜力提供了有价值的见解,并强调了采用适当的正则化技术提高模型性能的重要性。
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Comparative Study of Bitcoin Price Prediction
Prediction of stock prices has been a crucial and challenging task, especially in the case of highly volatile digital currencies such as Bitcoin. This research examineS the potential of using neural network models, namely LSTMs and GRUs, to forecast Bitcoin's price movements. We employ five-fold cross-validation to enhance generalization and utilize L2 regularization to reduce overfitting and noise. Our study demonstrates that the GRUs models offer better accuracy than LSTMs model for predicting Bitcoin's price. Specifically, the GRU model has an MSE of 4.67, while the LSTM model has an MSE of 6.25 when compared to the actual prices in the test set data. This finding indicates that GRU models are better equipped to process sequential data with long-term dependencies, a characteristic of financial time series data such as Bitcoin prices. In summary, our results provide valuable insights into the potential of neural network models for accurate Bitcoin price prediction and emphasize the importance of employing appropriate regularization techniques to enhance model performance.
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