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The Effect of the Different Data Aggregation Methods and their Detail Levels to the Prediction of Bitcoin's Exchange Rate

机译:不同数据聚合方法及其详细程度对比特币汇率预测的影响

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Recently a growing interest can be observed in the field of financial forecasting and especially in the field of cryptocurrency market forecasting. This proved to be an outstandingly complex problem because of the many special characteristics of these markets. Making accurate predictions requires the proper usage and fine tuning of the most modern algorithms. The goal of our research was to find the optimal data division method for the LSTM neural network-based prediction of the exchange rate of Bitcoin and fine-tune the model to achieve the lowest mean percentage error possible. To fulfill this goal, two binning methods, namely transaction time-based, and transaction quantity-based binning methods were evaluated from the viewpoint of the Bitcoin exchange rate prediction. We came to the conclusion that time-based binning method outperforms the other tested method and the granularity of the optimal time division was also established. Experimental results show, that the 20-minute and 30-minute prediction interval are the most suitable choices in case of a limited amount of training data and for making more trading decisions. In case of markets with a higher commission, or when more training data are available the 2-hour prediction is recommended. Our results show that on the proper time division-based LSTM prediction method is suitable for developing successful short term trading strategies for Bitcoin markets.
机译:最近,人们可以在金融预测领域,尤其是在加密货币市场预测领域中看到越来越多的兴趣。由于这些市场的许多特殊特性,这被证明是一个非常复杂的问题。进行准确的预测需要正确使用和微调最先进的算法。我们研究的目的是为基于LSTM神经网络的比特币汇率预测找到最佳的数据划分方法,并对模型进行微调,以实现可能的最低平均百分比误差。为了实现这一目标,从比特币汇率预测的角度评估了两种分箱方法,即基于交易时间的分箱方法和基于交易数量的分箱方法。我们得出的结论是,基于时间的分箱方法优于其他测试方法,并且还建立了最佳时分的粒度。实验结果表明,在训练数据量有限和做出更多交易决策的情况下,20分钟和30分钟的预测间隔是最合适的选择。如果市场的佣金较高,或者有更多培训数据可用,则建议使用2小时预测。我们的结果表明,基于适当的时分的LSTM预测方法适用于为比特币市场开发成功的短期交易策略。

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