Social business intelligence: Review and research directions

Helena Gioti, S. Ponis, N. Panayiotou
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引用次数: 7

Abstract

Social business intelligence (SBI) is a rather novel discipline, emerged in theacademic and business literature as a result of the convergence of two distinct researchdomains: business intelligence (BI) and social media. Traditional BI scientists and practitioners,after an inevitable initial shock, are currently discovering and acknowledge the potential of usergenerated content (UGD) published in social media as an invaluable and inexhaustible sourceof information capable of supporting a wide range of business activities. The confluence of thesetwo emerging domains is already producing new added value organizational processes andenhanced business capabilities utilized by companies all over the world to effectively harnesssocial media data and analyze them in order to produce added value information such ascustomer profiles and demographics, search habits, and social behaviors. Currently the SBIdomain is largely uncharted, characterized by controversial definitions of terms and concepts,fragmented and isolated research efforts, obstacles created by proprietary data, systems andtechnologies that are not mature yet. This paper aspires to be one of the few -to our knowledge contemporaryefforts to explore the SBI scientific field, clarify definitions and concepts,structure the documented research efforts in the area and finally formulate an agenda of futureresearch based on the identification of current research shortcomings and limitations.
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社会商业智能:回顾与研究方向
社会商业智能(SBI)是一门相当新颖的学科,出现在学术和商业文献中,是商业智能(BI)和社交媒体这两个不同研究领域融合的结果。传统的BI科学家和从业者在经历了不可避免的最初冲击后,目前正在发现并认识到社交媒体上发布的用户生成内容(UGD)的潜力,它是一种宝贵且取之不尽的信息来源,能够支持广泛的商业活动。这两个新兴领域的融合已经产生了新的附加值组织流程和增强的业务能力,世界各地的公司都利用这些流程和能力来有效地利用社交媒体数据并对其进行分析,以产生附加值信息,如客户档案和人口统计、搜索习惯和社交行为。目前,SBI领域在很大程度上是未知的,其特点是术语和概念的定义有争议,研究工作分散和孤立,专有数据、系统和技术尚未成熟造成的障碍。据我们所知,本文希望成为当代探索SBI科学领域、澄清定义和概念、构建该领域的文献研究工作并最终在确定当前研究缺陷和局限性的基础上制定未来研究议程的少数努力之一。
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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来源期刊
CiteScore
2.00
自引率
11.10%
发文量
0
审稿时长
8 weeks
期刊介绍: The Journal of Intelligence Studies in Business (JISIB) is a double blinded peer reviewed open access journal published by Halmstad University, Sweden. Its mission is to help facilitate and publish original research, conference proceedings and book reviews. The journal includes articles within areas such as Competitive Intelligence, Business Intelligence, Market Intelligence, Scientific and Technical Intelligence, Collective Intelligence and Geo-economics. This means that the journal has a managerial as well as an applied technical side (Information Systems), as these are now well integrated in real life Business Intelligence solutions. By focusing on business applications the journal do not compete directly with journals of Library Sciences or State or Military Intelligence Studies. Topics within the selected study areas should show clear practical implications.
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