挖掘社交媒体公众情绪提升企业信用评级

Hui Yuan, Raymond Y. K. Lau, Michael C. S. Wong, Chunping Li
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引用次数: 6

摘要

在线社交媒体的激增已经改变了个人与企业互动的方式。之前的研究考察了如何提取社交媒体上捕捉到的投资者情绪,以增强股票预测。然而,利用社交媒体上捕捉到的公众情绪来预测企业信用风险的工作却很少。我们的研究填补了目前的研究空白,开发了一种新的计算方法来提取嵌入在社交帖子中的公众情绪,以补充常用的财务指标(如资产回报率)来预测企业信用评级。基于普鲁契克的“情绪之轮”,该计算框架可以自动从在线社交媒体上的文本帖子中提取八种基本情绪的分布。特别是,我们工作的一个主要贡献是开发了用于文本情感分析的新的情感潜在狄利克雷分配(ELDA)模型。此外,我们开发了一个以随机森林(RF)作为基础分类器的集成学习模型,以提高企业信用评级的性能。基于从Twitter抓取的真实数据,我们的实验结果证实了所提出的ELDA模型可以有效地从社交帖子中提取公众情绪,以增强对企业信用评级的预测。据我们所知,这是第一次成功开发一种新的计算模型,从社交帖子中提取公众情绪,以增强企业信用风险预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Emotions of the Public from Social Media for Enhancing Corporate Credit Rating
The proliferation of online social media has been changing the ways how individuals interact with corporations. Previous studies have examined how to extract investors' sentiments captured on social media to enhance stock prediction. However, little work was done to leverage public's emotions captured on social media to predict corporate credit risks. Our research fills the current research gap by developing a new computational method to extract public's emotions embedded in social postings to supplement common financial indicators (e.g., return-on-assets) for predicting corporate credit ratings. Grounded in Plutchik's Wheel of Emotions, the proposed computational framework can automatically extract the distribution of eight basic emotions from textual postings on online social media. In particular, one main contribution of our work is the development of the new emotion latent dirichlet allocation (ELDA) model for textual emotion analysis. In addition, we develop an ensemble learning model with random forest (RF) as the basis classifier to improve the performance of corporate credit rating. Based on the real-world data crawled from Twitter, our experimental results confirm that the proposed ELDA model can effectively and efficiently extract public's emotions from social postings to enhance the prediction of corporate credit ratings. To our best knowledge, this is the first successful research of developing a new computational model of extracting public's emotions from social postings to enhance corporate credit risk prediction.
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