A C4.5 Fuzzy Decision Tree Method for Multivariate Time Series Forecasting

Rafael R. C. Silva, W. Caminhas, P. C. de Lima e Silva, F. Guimarães
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引用次数: 2

Abstract

In the present work we extend the traditional C4.5 decision tree method for regression and forecasting of multivariate time series. In the proposed method, time series data is first fuzzified leading to a fuzzy time series (FTS) representation of the data. A fuzzy decision tree (FDT) based on C4.5 is employed to form the knowledge base of the FTS model. The method can deal with high-order and multivariate fuzzy time series, offering an explainable model. The FDT-FTS method is tested with data from IBOVESPA stock market index, which tracks the performance of around 50 most liquid stocks traded on the Sao Paulo Stock Exchange in Brazil. The method is applied to the IBOVESPA mini future contract time series in order to forecast future values using a mix of historical values and technical analysis indicators. This method is compared with Support Vector Regression (SVR) and Random Forest Regression (RFR), both methods implemented in the Scikit-Learn open-source library. The FDT-FTS model was implemented in Python programming language in the open-source pyFTS library. Although all three methods have similar performance, according to the MAPE, SMAPE, RMSE, NRMSE and MAE metrics, the proposed method is computationally faster and explainable.
多元时间序列预测的C4.5模糊决策树方法
本文将传统的C4.5决策树方法推广到多元时间序列的回归和预测中。在该方法中,首先对时间序列数据进行模糊化,得到数据的模糊时间序列(FTS)表示。采用基于C4.5的模糊决策树(FDT)构成了该模型的知识库。该方法可以处理高阶和多变量模糊时间序列,提供了一个可解释的模型。FDT-FTS方法用IBOVESPA股票市场指数的数据进行了测试,该指数追踪了在巴西圣保罗证券交易所交易的约50只流动性最强的股票的表现。该方法应用于IBOVESPA迷你期货合约时间序列,以便使用历史价值和技术分析指标的组合来预测未来价值。该方法与Scikit-Learn开源库中实现的支持向量回归(SVR)和随机森林回归(RFR)方法进行了比较。FDT-FTS模型在开源的pyFTS库中用Python编程语言实现。虽然这三种方法的性能相似,但根据MAPE、SMAPE、RMSE、NRMSE和MAE指标,本文提出的方法计算速度更快,而且可解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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