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.

[1]  Sumit Agarwal,et al.  The Information Value of Credit Rating Action Reports: A Textual Analysis , 2016 .

[2]  Catalina Stefanescu,et al.  The credit rating process and estimation of transition probabilities: A Bayesian approach , 2009 .

[3]  Ching-Chiang Yeh,et al.  A hybrid KMV model, random forests and rough set theory approach for credit rating , 2012, Knowl. Based Syst..

[4]  Mei Cheng,et al.  An empirical analysis of changes in credit rating properties: Timeliness, accuracy and volatility , 2009 .

[5]  Jens Hilscher,et al.  Credit Ratings and Credit Risk: Is One Measure Enough? , 2015 .

[6]  Hsin-Min Lu,et al.  The Impact of News Articles and Corporate Disclosure on Credit Risk Valuation , 2014 .

[7]  Hollis Ashbaugh-Skaife,et al.  The Effects of Corporate Governance on Firms' Credit Ratings , 2004 .

[8]  Tony T. Tang,et al.  Information Asymmetry and Firms' Credit Market Access: Evidence from Moody's Credit Rating Format Refinement , 2006 .

[9]  Paul M. Vaaler,et al.  Crisis and Competition in Expert Organizational Decision Making: Credit-Rating Agencies and Their Response to Turbulence in Emerging Economies , 2004 .

[10]  Krzysztof Michalak,et al.  Feature selection in corporate credit rating prediction , 2013, Knowl. Based Syst..

[11]  S. Dutta,et al.  Bond rating: a nonconservative application of neural networks , 1988, IEEE 1988 International Conference on Neural Networks.

[12]  Yang Yu,et al.  The impact of social and conventional media on firm equity value: A sentiment analysis approach , 2013, Decis. Support Syst..

[13]  You-Shyang Chen,et al.  Hybrid models based on rough set classifiers for setting credit rating decision rules in the global banking industry , 2013, Knowl. Based Syst..

[14]  Soushan Wu,et al.  Credit rating analysis with support vector machines and neural networks: a market comparative study , 2004, Decis. Support Syst..

[15]  Mark S. Carey,et al.  Credit risk rating systems at large US banks , 2000 .

[16]  Michael I. Jordan,et al.  Latent Dirichlet Allocation , 2001, J. Mach. Learn. Res..

[17]  Saif Mohammad,et al.  CROWDSOURCING A WORD–EMOTION ASSOCIATION LEXICON , 2013, Comput. Intell..

[18]  Lawrence J. White,et al.  Markets: The Credit Rating Agencies , 2010 .

[19]  Young-Chan Lee,et al.  Application of support vector machines to corporate credit rating prediction , 2007, Expert Syst. Appl..

[20]  John R. Nofsinger Social Mood and Financial Economics , 2005 .

[21]  Gianluca Mattarocci The Independence of Credit Rating Agencies: How Business Models and Regulators Interact , 2013 .

[22]  Hsinchun Chen,et al.  Affect Analysis of Web Forums and Blogs Using Correlation Ensembles , 2008, IEEE Transactions on Knowledge and Data Engineering.

[23]  Edward I. Altman,et al.  FINANCIAL RATIOS, DISCRIMINANT ANALYSIS AND THE PREDICTION OF CORPORATE BANKRUPTCY , 1968 .

[24]  Kenneth R. Olson,et al.  A Literature Review of Social Mood , 2006 .

[25]  Alvin J. Surkan,et al.  Neural networks for bond rating improved by multiple hidden layers , 1990, 1990 IJCNN International Joint Conference on Neural Networks.

[26]  Kee S. Kim,et al.  Predicting bond ratings using publicly available information , 2005, Expert Syst. Appl..

[27]  Aysun Alp Paukowits Structural Shifts in Credit Rating Standards , 2010 .

[28]  Jie Jennifer Zhang,et al.  Social Media and Firm Equity Value , 2013, Inf. Syst. Res..

[29]  Kuldeep Kumar,et al.  Artificial neural network vs linear discriminant analysis in credit ratings forecast: A comparative study of prediction performances , 2006 .

[30]  Mohan Venkatachalam,et al.  The Power of Voice: Managerial Affective States and Future Firm Performance , 2011 .

[31]  Peter D. Turney,et al.  Emotions Evoked by Common Words and Phrases: Using Mechanical Turk to Create an Emotion Lexicon , 2010, HLT-NAACL 2010.

[32]  Clifford S. Ang Can Investor-Paid Credit Rating Agencies Improve the Information Quality of Issuer-Paid Rating Agencies? , 2014 .

[33]  R. C. Merton,et al.  On the Pricing of Corporate Debt: The Risk Structure of Interest Rates , 1974, World Scientific Reference on Contingent Claims Analysis in Corporate Finance.