基于动态加权集成学习的股票指数预测方法

Datao You, Xiangyu Yao, Xudong Geng, Xuyang Fang, Shenming Qu
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引用次数: 2

摘要

结果表明,该预测模型对股票指数的表现有较大的影响。传统的集成学习模型在股票指数回归预测中存在高性能基本分类器使用受限等问题。本文发现,基本分类器之间存在一定程度的互补性。为了利用不同模型的互补性,本文提出了一种动态加权集成学习模型用于股指预测。实验结果表明,动态加权集成学习模型比单一的基本分类器更准确,适用于不同股票指数的回归预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stock Index Prediction Method Based on Dynamic Weighted Ensemble Learning
It is found that the prediction model has great influence on the performance of stock index. The traditional ensemble learning model has some problems such as limited use of high performance basic classifiers in stock index regression prediction. In this paper, it is found that there is a certain degree of complementarity between basic classifiers. In order to make use of the complementarity of different models, this paper proposes a dynamic weighted ensemble learning model for stock index prediction. The experimental results show that the dynamic weighted ensemble learning model is more accurate than the single basic classifier and is suitable for the regression prediction of different stock indexes.
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