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Business Stakeholder Analyzer: An Experiment Of Classifying Stakeholders On The Web

机译:业务涉众分析器:对Web涉众进行分类的实验

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摘要

As the Web is used increasingly to share and disseminate information, business analysts and managers are challenged to understand stakeholder relationships. Traditional stakeholder theories and frameworks employ a manual approach to analysis and do not scale up to accommodate the rapid growth of the Web. Unfortunately, existing business intelligence (BI) tools lack analysis capability, and research on BI systems is sparse. This research proposes a framework for designing BI systems to identify and to classify stakeholders on the Web, incorporating human knowledge and machine-learned information from Web pages. Based on the framework, we have developed a prototype called Business Stakeholder Analyzer (BSA) that helps managers and analysts to identify and to classify their stakeholders on the Web. Results from our experiment involving algorithm comparison, feature comparison, and a user study showed that the system achieved better within-class accuracies in widespread stakeholder types such as partner/sponsor/supplier and media/reviewer, and was more efficient than human classification. The student and practitioner subjects in our user study strongly agreed that such a system would save analysts' time and help to identify and classify stakeholders. This research contributes to a better understanding of how to integrate information technology with stakeholder theory, and enriches the knowledge base of BI system design.
机译:随着越来越多地使用Web来共享和传播信息,业务分析师和经理面临着理解利益相关者关系的挑战。传统的利益相关者理论和框架采用手动方法进行分析,因此无法扩展以适应Web的快速发展。不幸的是,现有的商业智能(BI)工具缺乏分析能力,并且对BI系统的研究很少。这项研究提出了一个框架,用于设计BI系统,以识别和分类Web上的利益相关者,并结合人类知识和Web页面中机器学习的信息。基于该框架,我们开发了一个名为“业务涉众分析器(BSA)”的原型,该模型可以帮助管理人员和分析人员在Web上识别和分类其涉众。我们的实验结果涉及算法比较,功能比较和用户研究,结果表明,该系统在广泛的利益相关者类型(例如合作伙伴/赞助者/供应商和媒体/审阅者)中实现了更好的类内准确性,并且比人工分类更有效。我们的用户研究中的学生和从业人员强烈同意,这样的系统将节省分析师的时间,并有助于识别和分类利益相关者。这项研究有助于更好地了解如何将信息技术与利益相关者理论相集成,并丰富了BI系统设计的知识库。

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