Accurate Retrieval of Corporate Reputation from Online Media Using Machine Learning

Achim Klein, Martin Riekert, Velizar Dinev
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引用次数: 2

Abstract

Corporate reputation is an economic asset and its accurate measurement is of increasing interest in practice and science. This measurement task is difficult because reputation depends on numerous factors and stakeholders. Traditional measurement approaches have focused on human ratings and surveys, which are costly, can be conducted only infrequently and emphasize financial aspects of a corporation. Nowadays, online media with comments related to products, services, and corporations provides an abundant source for measuring reputation more comprehensively. Against this backdrop, we propose an information retrieval approach to automatically collect reputation-related text content from online media and analyze this content by machine learning-based sentiment analysis. We contribute an ontology for identifying corporations and a unique dataset of online media texts labelled by corporations’ reputation. Our approach achieves an overall accuracy of 84.4%. Our results help corporations to quickly identify their reputation from online media at low cost.
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利用机器学习从在线媒体中准确检索企业声誉
企业声誉是一种经济资产,它的准确测量在实践和科学上越来越受到关注。这个测量任务很困难,因为声誉取决于许多因素和利益相关者。传统的衡量方法侧重于人力评价和调查,这是昂贵的,只能很少进行,并强调公司的财务方面。如今,与产品、服务和企业相关的网络媒体评论为更全面地衡量声誉提供了丰富的来源。在此背景下,我们提出了一种信息检索方法,自动从网络媒体中收集与声誉相关的文本内容,并通过基于机器学习的情感分析对这些内容进行分析。我们提供了一个用于识别企业的本体和一个由企业声誉标记的在线媒体文本的独特数据集。我们的方法达到了84.4%的总体准确率。我们的研究结果帮助企业以较低的成本从网络媒体中快速识别自己的声誉。
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