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Social Network Analysis of Researchers' Communication and Collaborative Networks Using Self-reported Data.

机译:使用自我报告的数据对研究人员的沟通和协作网络进行社交网络分析。

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摘要

This research seeks an answer to the following question: what is the relationship between the structure of researchers' communication network and the structure of their collaborative output networks (e.g. co-authored publications, joint grant proposals, and joint patent applications), and the impact of these structures on their citation performance and the volume of collaborative research outputs? Three complementary studies are performed to answer this main question as discussed below.;1. Study I: A frequently used output to measure scientific (or research) collaboration is co-authorship in scholarly publications. Less frequently used are joint grant proposals and patents. Many scholars believe that co-authorship as the sole measure of research collaboration is insufficient because collaboration between researchers might not result in co-authorship. Collaborations involve informal communication (i.e., conversational exchange) between researchers. Using self-reports from 100 tenured/tenure-track faculty in the College of Engineering at the University of South Florida, researchers' networks are constructed from their communication relations and collaborations in three areas: joint publications, joint grant proposals, and joint patents. The data collection: 1) provides a rich data set of both researchers' in-progress and completed collaborative outputs, 2) yields a rating from the researchers on the importance of a tie to them 3) obtains multiple types of ties between researchers allowing for the comparison of their multiple networks. Exponential Random Graph Model (ERGM) results show that the more communication researchers have the more likely they produce collaborative outputs. Furthermore, the impact of four demographic attributes: gender, race, department affiliation, and spatial proximity on collaborative output relations is tested. The results indicate that grant proposals are submitted with mixed gender teams in the college of engineering. Besides, the same race researchers are more likely to publish together. The demographics do not have an additional leverage on joint patents.;2. Study II: Previous research shows that researchers' social network metrics obtained from a collaborative output network (e.g., joint publications or co-authorship network) impact their performance determined by g-index. This study uses a richer dataset to show that a scholar's performance should be considered with respect to position in multiple networks. Previous research using only the network of researchers' joint publications shows that a researcher's distinct connections to other researchers (i.e., degree centrality), a researcher's number of repeated collaborative outputs (i.e., average tie strength), and a researchers' redundant connections to a group of researchers who are themselves well-connected (i.e., efficiency coefficient) has a positive impact on the researchers' performance, while a researcher's tendency to connect with other researchers who are themselves well-connected (i.e., eigenvector centrality) had a negative impact on the researchers' performance. The findings of this study are similar except that eigenvector centrality has a positive impact on the performance of scholars. Moreover, the results demonstrate that a researcher's tendency towards dense local neighborhoods (as measured by the local clustering coefficient) and the researchers' demographic attributes such as gender should also be considered when investigating the impact of the social network metrics on the performance of researchers.;3. Study III: This study investigates to what extent researchers' interactions in the early stage of their collaborative network activities impact the number of collaborative outputs produced (e.g., joint publications, joint grant proposals, and joint patents). Path models using the Partial Least Squares (PLS) method are run to test the extent to which researchers' individual innovativeness, as determined by the specific indicators obtained from their interactions in the early stage of their collaborative network activities, impacts the number of collaborative outputs they produced taking into account the tie strength of a researcher to other conversational partners (TS). Within a college of engineering, it is found that researchers' individual innovativeness positively impacts the volume of their collaborative outputs. It is observed that TS positively impacts researchers' individual innovativeness, whereas TS negatively impacts researchers' volume of collaborative outputs. Furthermore, TS negatively impacts the relationship between researchers' individual innovativeness and the volume of their collaborative outputs, which is consistent with `Strength of Weak Ties' Theory. The results of this study contribute to the literature regarding the transformation of tacit knowledge into explicit knowledge in a university context.
机译:本研究寻求以下问题的答案:研究人员的交流网络的结构与其协作输出网络的结构(例如,合着出版物,联合授权提案和联合专利申请)之间的关系是什么,以及其影响是什么?这些结构对其引文表现和合作研究成果的数量有何影响?进行了三个补充研究来回答这个主要问题,如下所述:1。研究I:学术出版物中的共同作者是衡量科学(或研究)合作的常用输出。较少使用的是联合赠款提案和专利。许多学者认为,共同作者作为研究合作的唯一手段是不够的,因为研究人员之间的合作可能不会导致共同作者。合作涉及研究人员之间的非正式交流(即对话交流)。利用南佛罗里达大学工程学院的100位终身制/终身制教师的自我报告,研究人员的网络是基于他们在三个领域的交流关系和合作而建立的:联合出版物,联合赠款提案和联合专利。数据收集:1)提供研究人员正在进行和已完成的协作输出的丰富数据集,2)从研究人员中得出对与他们联系的重要性的评级3)获得研究人员之间的多种联系,从而可以他们的多个网络的比较。指数随机图模型(ERGM)的结果表明,交流研究人员越多,他们产生协作输出的可能性就越大。此外,还测试了四个人口统计属性:性别,种族,部门隶属关系和空间邻近性对协作输出关系的影响。结果表明,赠款提案是由工学院的混合性别小组提交的。此外,同一种族的研究人员更有可能一起发表。人口统计数据对联合专利没有额外的影响力; 2。研究II:以前的研究表明,研究人员从协作输出网络(例如,联合出版物或共同作者网络)获得的社交网络指标会影响他们由g-index确定的绩效。这项研究使用了更丰富的数据集,表明应该考虑学者在多个网络中的表现。以前仅使用研究者联合出版物的网络进行的研究表明,研究者与其他研究者的独特联系(即学位中心),研究者重复合作产出的数量(即平均联系强度)以及研究者与某研究者的多余联系。相互联系良好的一组研究人员(即效率系数)对研究人员的绩效产生积极影响,而研究人员与相互联系良好的其他研究人员之间的联系(即本征向量中心性)的趋势则产生负面影响研究人员的表现。除特征向量中心性对学者的表现有积极影响外,本研究的发现与之相似。此外,结果表明,在研究社交网络指标对研究人员绩效的影响时,还应考虑研究人员趋向于密集的本地社区的趋势(通过局部聚类系数衡量)和研究人员的人口统计属性(例如性别)。 ; 3。研究III:这项研究调查了研究人员在其协作网络活动的早期阶段的互动在多大程度上影响了所产生的协作输出的数量(例如,联合出版物,联合赠款提案和联合专利)。运行使用偏最小二乘(PLS)方法的路径模型来测试研究人员的个人创新能力的程度,该程度由研究人员在其协作网络活动的早期阶段的互动中获得的特定指标所确定他们的研究考虑了研究人员与其他对话伙伴(TS)的紧密联系。在工程学院内,发现研究人员的个人创新能力会积极影响其协作成果的数量。可以看出,TS对研究人员的个人创新有积极影响,而TS对研究人员的协作产出量有不利影响。此外,TS对研究人员的个人创新能力与他们的协作产出量之间的关系产生了负面影响,这与“弱关系的强度”理论是一致的。这项研究的结果为有关将隐性知识转换为大学环境中的显性知识的文献做出了贡献。

著录项

  • 作者

    Cimenler, Oguz.;

  • 作者单位

    University of South Florida.;

  • 授予单位 University of South Florida.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 145 p.
  • 总页数 145
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:55

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