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Expert profiling for collaborative innovation: big data perspective

机译:协作创新的专家分析:大数据视角

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PurposenExpert profiling plays an important role in expert finding for collaborative innovation in research social networking platforms. Dynamic changes in scientific knowledge have posed significant challenges on expert profiling. Current approaches mostly rely on knowledge of other experts, contents of static web pages or their behavior and thus overlook the insight of big social data generated through crowdsourcing in research social networks and scientific data sources. In light of this deficiency, this research proposes a big data-based approach that harnesses collective intelligence of crowd in (research) social networking platforms and scientific databases for expert profiling.nDesign/methodology/approachnA big data analytics approach which uses crowdsourcing is designed and developed for expert profiling. The proposed approach interconnects big data sources covering publication data, project data and data from social networks (i.e. posts, updates and endorsements collected through the crowdsourcing). Large volume of structured data representing scientific knowledge is available in Web of Science, Scopus, CNKI and ACM digital library; they are considered as publication data in this research context. Project data are located at the databases hosted by funding agencies. The authors follow the Map-Reduce strategy to extract real-time data from all these sources. Two main steps, features mining and profile consolidation (the details of which are outlined in the manuscript), are followed to generate comprehensive user profiles. The major tasks included in features mining are processing of big data sources to extract representational features of profiles, entity-profile generation and social-profile generation through crowd-opinion mining. At the profile consolidation, two profiles, namely, entity-profile and social-profile, are conflated.nFindingsn(1) The integration of crowdsourcing techniques with big research data analytics has improved high graded relevance of the constructed profiles. (2) A system to construct experts profiles based on proposed methods has been incorporated into an operational system called ScholarMate (www.scholarmate.com).nResearch limitationsnOne shortcoming is currently we have conducted experiments using sampling strategy. In the future we will perform controlled experiments of large scale and field tests to validate and comprehensively evaluate our design artifacts.nPractical implicationsnThe business implication of this research work is that the developed methods and the system can be applied to streamline human capital management in organizations.nOriginality/valuenThe proposed approach interconnects opinions of crowds on ones expertise with corresponding expertise demonstrated in scientific knowledge bases to construct comprehensive profiles. This is a novel approach which alleviates problems associated with existing methods. The authors team has developed an expert profiling system operational in ScholarMate research social network (www.scholarmate.com), which is a professional research social network that connects people to research with the aim of innovating smarter and was launched in 2007.
机译:PurposenExpert分析在研究社交网络平台中的协作创新的专家发现中起着重要作用。科学知识的动态变化对专家配置提出了重大挑战。当前的方法主要依赖于其他专家的知识,静态网页的内容或其行为,因此忽略了通过在研究社交网络和科学数据源中进行众包而产生的大型社交数据的洞察力。鉴于这种不足,本研究提出了一种基于大数据的方法,该方法利用(研究)社交网络平台和科学数据库中人群的集体智慧来进行专家配置.nDesign /方法论/方法设计并使用了众包的大数据分析方法专为专家分析而开发。提议的方法将涵盖出版物数据,项目数据和来自社交网络的数据(即通过众包收集的帖子,更新和认可)的大数据源互连。 Web of Science,Scopus,CNKI和ACM数字图书馆提供了大量代表科学知识的结构化数据;在此研究背景下,它们被视为出版物数据。项目数据位于供资机构托管的数据库中。作者遵循Map-Reduce策略从所有这些来源中提取实时数据。遵循两个主要步骤,即特征挖掘和配置文件合并(在文档中概述了其详细信息),以生成全面的用户配置文件。特征挖掘中包括的主要任务是处理大数据源以提取个人档案的代表性特征,通过人群意见挖掘来生成实体档案和社会档案。在配置文件合并中,将两个配置文件,即实体配置文件和社会配置文件进行了合并。nFindingsn(1)众包技术与大型研究数据分析的集成提高了所构建配置文件的高度相关性。 (2)一个基于拟议方法构建专家档案的系统已被整合到一个名为ScholarMate(www.scholarmate.com)的操作系统中。n研究局限性n一个缺点是我们目前使用采样策略进行了实验。将来,我们将进行大规模和现场测试的对照实验,以验证和全面评估我们的设计工件。n实际意义n这项研究工作的业务意义在于,可以将开发的方法和系统应用于简化组织中的人力资本管理。 n原创性/价值n拟议的方法将人群对某项专业知识的意见与科学知识库中展示的相应专业知识相互联系,以构建综合概况。这是一种新颖的方法,可以减轻与现有方法相关的问题。作者团队已开发了可在ScholarMate研究社交网络(www.scholarmate.com)上运行的专家配置文件系统,该系统是一个专业研究社交网络,旨在将人们与研究联系起来,旨在更智能地进行创新,并于2007年启动。

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