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Predicting the Demand in Bitcoin Using Data Charts: A Convolutional Neural Networks Prediction Model

机译:使用数据图表预测比特币的需求:卷积神经网络预测模型

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Traditional time series modeling techniques emphasize on predicting cryptocurrencies using classically structured data representation as numerical features to present the time-series datasets. In this paper, a novel approach to analyze time-series data charts using a modified Convolutional Neural Networks (CNNs) is proposed. The CNNs have been adopted to recognize subtle and undetectable patterns within images of time-series data charts. Our approach has been proven to achieve significant results, suggesting a need for further research into this new method for time series modeling, especially for Bitcoin.
机译:传统的时间序列建模技术强调使用经典结构化的数据表示作为数字特征来预测时间序列数据集来预测加密货币。本文提出了一种使用改进的卷积神经网络(CNN)分析时序数据图的新方法。 CNN已被采用来识别时间序列数据图表图像中的细微和不可检测的模式。我们的方法已被证明可以取得显著成果,这表明需要进一步研究这种用于时间序列建模的新方法,尤其是对于比特币。

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