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Prediction of the price of Ethereum blockchain cryptocurrency in an industrial finance system

机译:在工业融资系统中的形象区块Chryptocurrency的价格预测

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摘要

Cryptocurrency has gained considerable popularity in the past decade. The untraceable and uncontrolled nature of cryptocurrency attracts millions of people around the world. Research in cryptocurrency is dedicated to finding the ether and predicting its price according to the cryptocurrency's past price inflations. In this study, price prediction is performed with two machine learning methods, namely linear regression (LR) and support vector machine (SVM), by using a time series consisting of daily ether cryptocurrency closing prices. Different window lengths are used in ether cryptocurrency price prediction by using filters with different weight coefficients. In the training phase, a cross-validation method is used to construct a high-performance model independent of the data set. The proposed model is implemented using two machine learning techniques. When using the proposed model, the SVM method has a higher accuracy (96.06%) than the LR method (85.46%). Furthermore, the accuracy score of the proposed model can be increased up to 99% by adding features to the SVM method. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在过去的十年里,加密电机在过去的十年中取得了相当大的普及。隐性和不可吸入的加密性质吸引了全球数百万人。加密货币的研究致力于找到以太网并根据加密货发的过去的价格通量来预测其价格。在这项研究中,通过使用由日常互联网加密性关闭价格组成的时间序列,使用两台机器学习方法,即线性回归(LR)和支持向量机(SVM)进行价格预测。通过使用具有不同权重系数的滤波器来使用不同的窗口长度以醚加密货价预测。在训练阶段,使用交叉验证方法来构造独立于数据集的高性能模型。所提出的模型是使用两种机器学习技术实现的。当使用所提出的模型时,SVM方法比LR方法更高(96.06%)(85.46%)。此外,通过向SVM方法添加特征,可以增加所提出的模型的精度得分高达99%。 (c)2019年elestvier有限公司保留所有权利。

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