Computational Linguistic and SNA to Classify and Prevent Systemic Risk in the Colombian Banking Industry

L. G. Moreno-Sandoval, L. Rojas, A. P. Quimbaya, Luis Antonio Orozco
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Abstract

The banking sector has been one of the first to identify the importance of social media analysis to understand customers' needs to offer new services, segment the market, build customer loyalty, or understand their requests. Users of Social Networking Sites (SNS) have interactions that can be analyzed to understand the relationships between people and organizations in terms of structural positions and sentiment analysis according to their expectations, opinions, evaluations, or judgments, what can be called collective subjectivity. To understand this dynamic, this study performs a social network analysis combined with computational linguistics through opinion mining to detect communities, understand structural relationships, and manage a Colombian case study's reputation and systemic risk in the banking industry. Finagro and BancoAgrario are the network leaders in both centralities, most of the main actors have a negative polarity, and MinHacienda and cutcolombia with totally different orientations appear in all methods.
计算语言和SNA对哥伦比亚银行业系统性风险的分类和预防
银行业是最早认识到社交媒体分析在了解客户需求、提供新服务、细分市场、建立客户忠诚度或了解客户需求方面的重要性的行业之一。社交网站(SNS)的用户根据他们的期望、意见、评价或判断,进行互动分析,从结构立场和情感分析的角度来理解人和组织之间的关系,这可以称为集体主观性。为了了解这种动态,本研究通过意见挖掘进行社会网络分析,结合计算语言学来检测社区,了解结构关系,并管理哥伦比亚案例研究的银行业声誉和系统性风险。Finagro和banrario在两个中心性上都是网络的领导者,大部分的主要角色都是负极性的,MinHacienda和cutcolombia在所有的方法中都出现了完全不同的取向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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