Predicting the integration of newcomers in OKBCs based on existing members' involvement

L. L. Stavarache, M. Dascalu, Stefan Trausan-Matu, Nicolae Nistor
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引用次数: 1

Abstract

Profiling online knowledge communities and determining their corresponding degree of newcomer integration based on existing members' involvement, posts and comments helps us better understand what drives the social trend and how knowledge is built nowadays. In this study we differentiate participation from collaboration, thus showing how opinion leaders emerge in a community. Therefore, while analyzing 10 integrative and 10 non-integrative communities, we quantitatively measure member involvement in terms of previously validated automated indices that are used for assessing participation and collaboration. Afterwards, we build automated methods of classifying communities based on their members' online behavior, thus being able to predict how likely new members will be integrated in the online community.
基于现有成员的参与预测okbc新成员的融入
分析在线知识社区,并根据现有成员的参与、帖子和评论来确定其相应的新成员融入程度,有助于我们更好地了解推动社会趋势的因素,以及当今知识是如何构建的。在这项研究中,我们区分了参与和合作,从而展示了意见领袖是如何在社区中出现的。因此,在分析10个整合和10个非整合社区的同时,我们根据先前验证的用于评估参与和协作的自动指标,定量地测量了成员参与。之后,我们根据社区成员的在线行为建立了自动分类社区的方法,从而能够预测新成员融入在线社区的可能性。
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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