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Economic Management Data Envelopes Based on the Clustering of Incomplete Data

机译:基于不完全数据聚类的经济管理数据包络

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In this paper, the economic management data envelope is analyzed by an algorithm for clustering incomplete data, a local search method based on reference vectors is designed in the algorithm to improve the accuracy of the algorithm, and a final solution selection method based on integrated clustering is proposed to obtain the final clustering results from the last generation of the solution set. The proposed algorithm and various aspects of it are tested in comparison using benchmark datasets and other comparison algorithms. A time-series domain partitioning method based on fuzzy mean clustering and information granulation is proposed, and a time series prediction method is proposed based on the domain partitioning results. Firstly, the fuzzy mean clustering method is applied to initially divide the theoretical domain of the time series, and then, the optimization algorithm of the theoretical domain division based on information granulation is proposed. It combines the clustering algorithm and the information granulation method to divide the theoretical domain and improves the accuracy and interpretability of sample data division. This article builds an overview of data warehouse, data integration, and rule engine. It introduces the business data integration of the economic management information system data warehouse and the data warehouse model design, taking tax as an example. The fuzzy prediction method of time series is given for the results of the theoretical domain division after the granulation of time-series information, which transforms the precise time-series data into a time series composed of semantic values conforming to human cognitive forms. It describes the dynamic evolution process of time series by constructing the fuzzy logical relations to these semantic values to obtain their fuzzy change rules and make predictions, which improves the comprehensibility of prediction results. Finally, the prediction experiments are conducted on the weighted stock price index dataset, and the experimental results show that applying the proposed time-series information granulation method for time series prediction can improve the accuracy of the prediction results.
机译:该文利用一种对不完全数据进行聚类的算法对经济管理数据包络进行分析,在算法中设计了一种基于参考向量的局部搜索方法,以提高算法的精度,并提出了一种基于集成聚类的最终解选择方法,从上一代解集中得到最终的聚类结果。使用基准数据集和其他比较算法对所提出的算法及其各个方面进行了比较测试。该文提出一种基于模糊均值聚类和信息粒化的时序域划分方法,并提出一种基于域划分结果的时间序列预测方法。首先,应用模糊均值聚类方法对时间序列的理论域进行初步划分,然后提出基于信息粒化的理论域划分优化算法。它结合聚类算法和信息粒化方法对理论领域进行划分,提高了样本数据划分的准确性和可解释性。本文概述了数据仓库、数据集成和规则引擎。以税务为例,介绍了经济管理信息系统数据仓库的业务数据集成和数据仓库模型设计。针对时间序列信息颗粒化后的理论域划分结果,给出了时间序列模糊预测方法,将精确的时间序列数据转化为符合人类认知形态的语义值组成的时间序列。通过构造与这些语义值的模糊逻辑关系,得到这些语义值的模糊变化规律并进行预测,描述了时间序列的动态演化过程,提高了预测结果的可理解性。最后,在加权股价指数数据集上进行预测实验,实验结果表明,应用所提出的时间序列信息粒化方法进行时间序列预测可以提高预测结果的准确性。

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