Machine Learning Based Framework for Cryptocurrency Price Prediction

Mrityunjay Singh, Amit Kumar Jakhar, Aashima Juneja, S. Pandey
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Abstract

Cryptocurrency, a digital currency, acts as a medium of exchange through the Internet. The main agenda behind cryptocurrency being so popular these days is the desire for reliable, long-term value without the involvement of any central authority like banks. The power lies in the hands of the currency holders which resolve the problems of the traditional currencies by adopting a decentralized system. Predicting the future price of different cryptocurrencies is a prominent area of interest for individuals or investors. In this work, we use a dataset collected from the coinmarketcap website for the duration of September 2014 to March 2022. The outcome of this work is compared to the existing algorithms for time series data analysis namely the Auto Regressive Moving Average Model (ARIMA), FbProphet, and several ensemble models on the basis of their accuracy in predicting the future price. We also create different ensemble frameworks for the prediction of the cryptocurrency price. To form the ensemble models, we initially select the three best-performing regression models on the dataset, namely Extra Trees, Random Forest, and Decision Trees Regressors. Our findings indicate that the ARIMA model performs better than the ensemble model with the lowest RMSE MAE and MSE.
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基于机器学习的加密货币价格预测框架
加密货币是一种数字货币,通过互联网充当交换媒介。如今,加密货币如此受欢迎背后的主要议程是渴望在没有任何中央机构(如银行)参与的情况下获得可靠的长期价值。权力掌握在货币持有者手中,他们通过采用去中心化的体系来解决传统货币的问题。预测不同加密货币的未来价格是个人或投资者感兴趣的一个突出领域。在这项工作中,我们使用了2014年9月至2022年3月期间从coinmarketcap网站收集的数据集。这项工作的结果与现有的时间序列数据分析算法进行了比较,即自动回归移动平均模型(ARIMA)、FbProphet和几个集成模型,基于它们预测未来价格的准确性。我们还创建了不同的集成框架来预测加密货币的价格。为了形成集成模型,我们首先在数据集上选择了三种表现最好的回归模型,即Extra Trees, Random Forest和Decision Trees Regressors。我们的研究结果表明,ARIMA模型表现优于集合模型,具有最低的RMSE MAE和MSE。
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