社交活动与学术活动:计算机科学家在Twitter上的案例研究

S. Pujari, Asmelash Teka Hadgu, E. Lex, R. Jäschke
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引用次数: 6

摘要

在这项工作中,我们研究了计算机科学研究人员的社会和学术网络活动。使用最近提出的框架,我们将研究人员映射到他们的Twitter账户,并将他们链接到他们的出版物。这使我们能够创建两种类型的网络:第一种是反映Twitter上社交活动的网络,即研究人员的关注、转发和提及网络;第二种是反映学术活动的网络,即合著和引用网络。基于这些数据集,我们(i)比较研究人员的社会活动与其学术活动,(ii)调查社会和学术活动网络内社区的一致性和相似性,以及(iii)调查两种类型网络中不同计算机科学领域之间的信息流。我们的研究结果表明,如果共同作者在Twitter上互动,他们的关系是互惠的,随着他们共同撰写的论文数量的增加而增加。总的来说,社交活动和学术活动是不相关的。在社区分析方面,我们发现三个社交活动网络之间的一致性最高,其中转发网络和提及网络的一致性最高。一项对信息流的研究表明,在接下来的网络中,来自数据管理、人机交互和人工智能的研究人员充当了计算机科学其他领域的信息来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social activity versus academic activity: a case study of computer scientists on Twitter
In this work, we study social and academic network activities of researchers from Computer Science. Using a recently proposed framework, we map the researchers to their Twitter accounts and link them to their publications. This enables us to create two types of networks: first, networks that reflect social activities on Twitter, namely the researchers' follow, retweet and mention networks and second, networks that reflect academic activities, that is the co-authorship and citation networks. Based on these datasets, we (i) compare the social activities of researchers with their academic activities, (ii) investigate the consistency and similarity of communities within the social and academic activity networks, and (iii) investigate the information flow between different areas of Computer Science in and between both types of networks. Our findings show that if co-authors interact on Twitter, their relationship is reciprocal, increasing with the numbers of papers they co-authored. In general, the social and the academic activities are not correlated. In terms of community analysis, we found that the three social activity networks are most consistent with each other, with the highest consistency between the retweet and mention network. A study of information flow revealed that in the follow network, researchers from Data Management, Human-Computer Interaction, and Artificial Intelligence act as a source of information for other areas in Computer Science.
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