Prominent voices and prevalent discourses: A corporate social responsibility application

Carlos M. Parra, M. Tremblay, A. Castellanos
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引用次数: 1

Abstract

In this study we develop a simplified technique for identifying prominent voices (and characterizing prevalent discourses) using Text Data Mining around Corporate Social Responsibility (CSR) issues or topics. We do this by analyzing a corpus of CSR reports produced by 7 US firms (Citi, Coca-Cola, Exxon-Mobil, General Motors, Intel, McDonald's and Microsoft) in 2004, 2008 and 2012, and focusing on a reduced set of vectors — or Singular Vector Decompositions (SVDs)-derived from these CSR reports while exploring term associations (Text Topics or Term Clusters). Specifically, we use centroid clustering on these SVDs to identify centroid-guiding-CSR-report-components (or firms with prominent voices and prevalent discourses around a CSR topic). The analysis is performed by year in order to discern the way in which prominent voices and prevalent discourses (around CSR topics) have evolved through time. Results indicate that it is difficult for firms to maintain a prominent voice around CSR issues through time, and that when they manage to do so it is because the prevalent discourse has direct business implications.
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突出的声音和流行的话语:企业社会责任的应用
在这项研究中,我们开发了一种简化的技术,用于围绕企业社会责任(CSR)问题或主题使用文本数据挖掘来识别突出的声音(并描述流行的话语)。我们通过分析7家美国公司(花旗、可口可乐、埃克森美孚、通用汽车、英特尔、麦当劳和微软)在2004年、2008年和2012年制作的社会责任报告语料库来做到这一点,并在探索术语关联(文本主题或术语聚类)的同时,专注于从这些社会责任报告中提取的简化向量集-或奇异向量分解(SVDs)。具体来说,我们在这些svd上使用质心聚类来识别质心导向的CSR-报告成分(或围绕CSR主题有突出声音和流行话语的公司)。该分析是按年进行的,目的是辨别(围绕企业社会责任主题)的突出声音和流行话语是如何随着时间的推移而演变的。结果表明,随着时间的推移,企业很难在企业社会责任问题上保持突出的声音,而当他们设法做到这一点时,这是因为流行的话语具有直接的商业含义。
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