A Novel Feature Selection Method for Risk Management in High-Dimensional Time Series of Cryptocurrency Market

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Erfan Varedi, R. Boostani
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引用次数: 1

Abstract

In this study, a novel approach for feature selection has been presented in order to overcome the challenge of classifying positive and negative risk prediction in the cryptocurrency market, which contains high fluctuation. This approach is based on maximizing information gain with simultaneously minimizing the similarity of selected features to achieve a proper feature set for improving classification accuracy. The proposed method was compared with other feature selection techniques, such as sequential and bidirectional feature selection, univariate feature selection, and least absolute shrinkage and selection operator. To evaluate the feature selection techniques, several classifiers were employed: XGBoost, k-nearest neighbor, support vector machine, random forest, logistic regression, long short-term memory, and deep neural networks. The features were elicited from the time series of Bitcoin, Binance, and Ethereum cryptocurrencies. The results of applying the selected features to different classifiers indicated that XGBoost and random forest provided better results on the time series datasets. Furthermore, the proposed feature selection method achieved the best results on two (out of three) cryptocurrencies. The accuracy in the best state varied between 55% to 68% for different time series. It is worth mentioning that preprocessed features were used in this research, meaning that raw data (candle data) were used to derive efficient features that can explain the problem and help the classifiers in predicting the labels.
加密货币市场高维时间序列风险管理的特征选择方法
本研究提出了一种新的特征选择方法,以克服加密货币市场中存在高波动的正、负风险预测分类的挑战。该方法是基于最大化信息增益的同时最小化所选特征的相似度来获得合适的特征集,以提高分类精度。并将该方法与顺序和双向特征选择、单变量特征选择、最小绝对收缩和选择算子等特征选择技术进行了比较。为了评估特征选择技术,使用了几种分类器:XGBoost、k近邻、支持向量机、随机森林、逻辑回归、长短期记忆和深度神经网络。这些特征是从比特币、币安和以太坊加密货币的时间序列中得出的。将选择的特征应用于不同分类器的结果表明,XGBoost和随机森林在时间序列数据集上提供了更好的结果。此外,所提出的特征选择方法在两种(三种)加密货币上取得了最佳结果。对于不同的时间序列,最佳状态下的准确率在55% ~ 68%之间。值得一提的是,本研究中使用了预处理的特征,这意味着使用原始数据(蜡烛数据)来获得可以解释问题并帮助分类器预测标签的有效特征。
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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