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Forecasting Cryptocurrency Prices Using Ensembles-Based Machine Learning Approach

机译:基于集合的机器学习方法预测加密货币价格

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This paper is devoted to the problems of the short-term forecasting cryptocurrencies time series using machine learning approach. We applied two the most powerful ensembles methods: Random Forests (RF) and Gradient Boosting Machine (GBM). For testing models we used the daily close prices of three the most capitalized coins: Bitcoin (BTC), Ethereum (ETH) and Ripple (XRP), and as a features were selected the past price information and technical indicators (moving average). To check the efficiency of these models we made out-of-sample forecast for three cryptocurrencies by using one step ahead technique. As the accuracy rate for our models we were selected Mean Absolute Percentage Error (MAPE) and Root Mean Square Error (RMSE) metrics. According to comparative analysis of the predictive ability of the RF and GBM both models showed the same order of accuracy for the out-of-sample dataset prediction, although boosting also was somewhat more accurate. Computer experiments have confirmed the feasibility of using the machine learning ensembles approaches considered for the short-term forecasting of cryptocurrencies time series. Built models and their ensembles can be used as the basis algorithms for automated Internet trading systems.
机译:本文采用了使用机器学习方法的短期预测加密货期时间序列的问题。我们应用了两种最强大的合奏方法:随机森林(RF)和梯度升压机(GBM)。对于测试模型,我们使用了三个最资本化硬币的日常价格:比特币(BTC),Ethereum(Eth)和Ripple(XRP),并选择了过去的价格信息和技术指标(移动平均值)。检查这些模型的效率,我们使用一步前进技术对三个加密货币进行了预测。作为我们模型的准确率,我们被选为均值为绝对百分比误差(MAPE)和根均方错误(RMSE)指标。根据RF和GBM预测能力的比较分析,两种模型都显示出相同的准确度,用于样品外数据集预测,尽管升压也有些更准确。计算机实验已经确认了使用考虑的机器学习合奏的方法,考虑了对Cryptocurrencies时间序列的短期预测。建造模型及其合奏可以用作自动互联网交易系统的基础算法。

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