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一种基于分层置信规则库的股票价格走势预测可解释模型。

An interpretable model for stock price movement prediction based on the hierarchical belief rule base.

作者信息

Yin Xiuxian, Zhang Xin, Li Hongyu, Chen Yujia, He Wei

机构信息

Harbin Normal University, Harbin, 150025, China.

Rocket Force University of Engineering, Xi'an, 710025, China.

出版信息

Heliyon. 2023 May 26;9(6):e16589. doi: 10.1016/j.heliyon.2023.e16589. eCollection 2023 Jun.

DOI:10.1016/j.heliyon.2023.e16589
PMID:37260876
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10227350/
Abstract

Stock price movement prediction is the basis for decision-making to maintain the stability and security of stock markets. It is important to generate predictions in an interpretable manner. The Belief Rule Base (BRB) has certain interpretability based on IF-THEN rule semantics. However, the interpretability of BRB in the whole process of stock prediction modeling may be weakened or lost. Therefore, this paper proposes an interpretable model for stock price movement prediction based on the hierarchical Belief Rule Base (HBRB-I). The interpretability of the model is considered, and several criteria are constructed based on the BRB expert system. First, the hierarchical structure of BRB is constructed to ensure the interpretability of the initial modeling. Second, the interpretability of the inference process is ensured by the Evidential Reasoning (ER) method as a transparent inference engine. Third, a new Projection Covariance Matrix Adaptive Evolution Strategy (P-CMA-ES) algorithm with interpretability criteria is designed to ensure the interpretability of the optimization process. The final mean squared error value of 1.69E-04 was obtained with similar accuracy to the initial BRB and enhanced in terms of interpretability. This paper is for short-term stock forecasting, and more data will be collected in the future to update the rules to enhance the forecasting capability of the rule base.

摘要

股价走势预测是维持股票市场稳定与安全的决策基础。以可解释的方式进行预测非常重要。置信规则库(BRB)基于“如果-那么”规则语义具有一定的可解释性。然而,BRB在股票预测建模的整个过程中的可解释性可能会被削弱或丧失。因此,本文提出了一种基于分层置信规则库(HBRB-I)的股价走势预测可解释模型。考虑了模型的可解释性,并基于BRB专家系统构建了几个标准。首先,构建BRB的层次结构以确保初始建模的可解释性。其次,通过作为透明推理引擎的证据推理(ER)方法确保推理过程的可解释性。第三,设计了一种具有可解释性标准的新投影协方差矩阵自适应进化策略(P-CMA-ES)算法,以确保优化过程的可解释性。最终均方误差值为1.69E-04,与初始BRB具有相似的准确性,并且在可解释性方面有所增强。本文用于短期股票预测,未来将收集更多数据以更新规则,以增强规则库的预测能力。

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