Design and Study of Zombie Enterprise Classification and Recognition Systems Based on Ensemble Learning

Shutong Pang, Zi Yang, Chengyou Cai, Zhimin Li
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Abstract

The existence of a large number of zombie enterprises will affect the economic development and hinder the transformation and upgrading of economic industries. To improve the accuracy of zombie enterprise identification, this paper takes multidimensional enterprise data as the original data set, divides it into training set and validation set, and gives the corresponding data pre-processing methods. Combined with 14 standardized features, an integrated learning model for zombie enterprise classification and recognition is constructed and studied based on three pattern recognition algorithms. By using the idea of integration and the cross-validation method to determine the optimal parameters, the Gradient Boosting Decision Tree (GBDT), linear kernel Support Vector Machine (SVM) and Deep Neural Network (DNN) algorithms with classification accuracies of 95%, 96% and 96%, respectively, are used as sub-models, and a more comprehensive strong supervision model with a classification accuracy of 98% is obtained by the stacking method in combination with the advantages of multiple sub-models to analyze the fundamental information of 30885 enterprises. The study improves the accuracy of zombie enterprise identification to 98%, builds enterprise portraits based on this, and finally visualizes the classification results through the platform, which provides an auxiliary means for zombie enterprise classification and identification.
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基于集成学习的僵尸企业分类识别系统设计与研究
大量僵尸企业的存在会影响经济发展,阻碍经济产业的转型升级。为了提高僵尸企业识别的准确率,本文以多维企业数据为原始数据集,将其分为训练集和验证集,并给出相应的数据预处理方法。结合14个标准化特征,构建并研究了基于三种模式识别算法的僵尸企业分类识别集成学习模型。采用积分思想和交叉验证方法确定最优参数,以分类准确率分别为95%、96%和96%的梯度增强决策树(GBDT)、线性核支持向量机(SVM)和深度神经网络(DNN)算法为子模型,通过叠加法结合多个子模型的优势,对30885家企业的基础信息进行分析,得到了分类准确率达到98%的更全面的强监督模型。本研究将僵尸企业识别的准确率提高到98%,并以此为基础构建企业画像,最后通过平台将分类结果可视化,为僵尸企业分类识别提供了一种辅助手段。
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