Cryptocurrency Price Analysis with Artificial Intelligence

Yiying Wang, Zang Yeze
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引用次数: 30

Abstract

Cryptocurrency is playing an increasingly important role in reshaping the financial system due to its growing popular appeal and mechant acceptance. While many people are making investments in Cryptocurrency, the dynamical features, uncertainty, the predictability of Cryptocurrency are still mostly unknown, which dramatically risk the investments. It is a matter to try to understand the factors that infiuence the value formation. In this study, we use advanced artificial intelligence frameworks of fully connected Artificial Neural Network (ANN) and Long Short-Term Memory (LSTM) Recurrent Neural Network to analyse the price dynamics of Bitcoin, Etherum, and Ripple. We find that ANN tends to rely more on long-term history while LSTM tends to rely more on short-term dynamics, which indicate the efficiency of LSTM to utilise useful information hidden in historical memory is stronger than ANN. However, given enough historical information ANN can achieve a similar accuracy, compared with LSTM. This study provides a unique demonstration that Cryptocurrency market price is predictable. However, the explanation of the predictability could vary depending on the nature of the involved machine-learning model.
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用人工智能分析加密货币价格
由于其越来越受欢迎的吸引力和机制接受度,加密货币在重塑金融体系方面发挥着越来越重要的作用。虽然很多人都在投资加密货币,但加密货币的动态特征、不确定性、可预测性仍然大多是未知的,这给投资带来了极大的风险。试图理解影响价值形成的因素是一个问题。在本研究中,我们使用全连接人工神经网络(ANN)和长短期记忆(LSTM)递归神经网络的先进人工智能框架来分析比特币、以太坊和瑞波币的价格动态。我们发现,人工神经网络更倾向于依赖长期历史,而LSTM更倾向于依赖短期动态,这表明LSTM利用隐藏在历史记忆中的有用信息的效率比人工神经网络强。然而,与LSTM相比,给定足够的历史信息,人工神经网络可以达到相似的精度。这项研究提供了一个独特的证明,即加密货币市场价格是可预测的。然而,对可预测性的解释可能会根据所涉及的机器学习模型的性质而有所不同。
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