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融合LGBM和SHAP的企业负面事件下微博用户极端情感可解释模型
蒋建洪;李梦欣
(桂林电子科技大学商学院 桂林 541004)
An Explanatory Model for Weibo Users' Extreme Emotions under Negative Events of Enterprises Integrating LGBM and SHAP
Jiang Jianhong;Li Mengxin
(Commercial College, Guilin University of Electronic Technology, Guilin 541004)
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摘要 

[目的]提取用户外部刺激和认知评价指标,构建企业负面事件下微博用户极端情感影响因素模型,利用SHAP解释各特征变量的影响。[方法]本研究基于认知情感理论、社会影响理论、情绪评价模型、LDA模型、扎根理论确定外部刺激和认知评价指标,并将两指标包含的特征变量作为输入,极端情感变量作为输出,构建极端情感影响因素模型。通过四个分类模型性能对比,并利用SHAP模型对最优模型可视化。[结果]结果发现,认知评价维度提取了7个特征变量;LGBM模型的Accuracy达到0.88、Precision达到0.90、F1-score达到0.93优于其他对比模型;特征变量对微博用户极端情绪产生的影响程度来看,认知评价维度普遍高于外部刺激维度,且各特征变量的影响方式有所不同。[局限]需要探索更多影响因素及更广泛的企业负面事件类型,算法复杂度有待提高。[结论]本研究提出的模型优化了扎根编码过程,可视化各特征变量对极端情感的影响程度、影响方向、影响大小、影响方式,为企业解决网络口碑负面化的问题提供理论依据。

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关键词 企业负面事件LGBMSHAP扎根理论认知情感理论     
Abstract

[Objective] Extract external stimuli and cognitive evaluation indicators from users, construct a model of extreme emotional influencing factors for Weibo users under negative corporate events, and use SHAP to explain the impact of each characteristic variable. [Methods] Based on the cognitive affective theory, social impact theory, emotional evaluation model, LDA model, and Grounded theory, this study determines the external stimulus and cognitive evaluation indicators, and uses the characteristic variables contained in the two indicators as inputs and extreme affective variables as outputs to build an extreme affective impact factor model. Compare the performance of four classification models and visualize the optimal model using the SHAP model. [Results] The results showed that the cognitive evaluation dimension extracted 7 feature variables; The accuracy of the LGBM model reaches 0.88, Precision reaches 0.90, and F1 score reaches 0.93, which is superior to other comparative models; From the perspective of the impact of characteristic variables on the extreme emotions of Weibo users, the cognitive evaluation dimension is generally higher than the external stimulus dimension, and the impact of each characteristic variable varies. [Limitations] It is necessary to explore more influencing factors and a wider range of negative event types in enterprises, and the algorithm complexity needs to be improved. [Conclusions] The model proposed in this study optimized the rooting encoding process, visualizing the degree, direction, magnitude, and mode of influence of each feature variable on extreme emotions, providing a theoretical basis for enterprises to solve the problem of negative online word-of-mouth.

Key words Negative events of enterprises    LGBM    SHAP    Grounded theory    Cognitive Emotional Theory
     出版日期: 2024-03-15
ZTFLH:  G206  
引用本文:   
蒋建洪, 李梦欣. 融合LGBM和SHAP的企业负面事件下微博用户极端情感可解释模型 [J]. 数据分析与知识发现, 10.11925/infotech.2096-3467.2023.0378.
Jiang Jianhong, Li Mengxin. An Explanatory Model for Weibo Users' Extreme Emotions under Negative Events of Enterprises Integrating LGBM and SHAP . Data Analysis and Knowledge Discovery, 0, (): 1-.
链接本文:  
https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/10.11925/infotech.2096-3467.2023.0378      或      https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/Y0/V/I/1
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