Guan Hongjun, Dai Zongli, Guan Shuang, Zhao Aiwu
School of Management Science and Engineering, Shandong University of Finance and Economics, Jinan 250014, China.
Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
Entropy (Basel). 2018 Sep 4;20(9):669. doi: 10.3390/e20090669.
Most existing high-order prediction models abstract logical rules that are based on historical discrete states without considering historical inconsistency and fluctuation trends. In fact, these two characteristics are important for describing historical fluctuations. This paper proposes a model based on logical rules abstracted from historical dynamic fluctuation trends and the corresponding inconsistencies. In the logical rule training stage, the dynamic trend states of up and down are mapped to the two dimensions of truth-membership and false-membership of neutrosophic sets, respectively. Meanwhile, information entropy is employed to quantify the inconsistency of a period of history, which is mapped to the indeterminercy-membership of the neutrosophic sets. In the forecasting stage, the similarities among the neutrosophic sets are employed to locate the most similar left side of the logical relationship. Therefore, the two characteristics of the fluctuation trends and inconsistency assist with the future forecasting. The proposed model extends existing high-order fuzzy logical relationships (FLRs) to neutrosophic logical relationships (NLRs). When compared with traditional discrete high-order FLRs, the proposed NLRs have higher generality and handle the problem caused by the lack of rules. The proposed method is then implemented to forecast Taiwan Stock Exchange Capitalization Weighted Stock Index and Heng Seng Index. The experimental conclusions indicate that the model has stable prediction ability for different data sets. Simultaneously, comparing the prediction error with other approaches also proves that the model has outstanding prediction accuracy and universality.
大多数现有的高阶预测模型抽象出基于历史离散状态的逻辑规则,而不考虑历史不一致性和波动趋势。事实上,这两个特征对于描述历史波动很重要。本文提出了一种基于从历史动态波动趋势和相应不一致性中抽象出的逻辑规则的模型。在逻辑规则训练阶段,上下动态趋势状态分别映射到中智集的真隶属度和假隶属度的两个维度。同时,利用信息熵来量化一段历史的不一致性,将其映射到中智集的不确定隶属度。在预测阶段,利用中智集之间的相似性来定位逻辑关系中最相似的左侧。因此,波动趋势和不一致性这两个特征有助于未来的预测。所提出的模型将现有的高阶模糊逻辑关系(FLR)扩展到中智逻辑关系(NLR)。与传统的离散高阶FLR相比,所提出的NLR具有更高的通用性,并处理了规则缺乏所导致的问题。然后将所提出的方法应用于预测台湾证券交易所加权股价指数和恒生指数。实验结论表明,该模型对不同数据集具有稳定的预测能力。同时,将预测误差与其他方法进行比较也证明了该模型具有出色的预测准确性和通用性。