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An improved mix framework for opinion leader identification in online learning communities

机译:用于在线学习社区中的意见领袖识别的改进混合框架

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With the widespread adoption of social media, online learning communities are perceived as a network of knowledge comprised of interconnected individuals with varying roles. Opinion leaders are important in social networks because of their ability to influence the attitudes and behaviours of others via their superior status, education, and social prestige. Many theories have been put forward to explain the formation, characteristics, and durability of social networks, but few address the issue of opinion leader identification. This paper proposes an improved mix framework for opinion leader identification in online learning communities. The framework is validated by an experimental study. By analysing textual content, user behaviour and time, this study ranked opinion leaders based on four distinguishing features: expertise, novelty, influence, and activity. Furthermore, the performances of opinion leaders were further investigated in terms of longevity and centrality. Experimental study on real datasets has shown that our framework effectively identifies opinion leaders in online learning communities.
机译:随着社交媒体的广泛采用,在线学习社区被视为由互不相同的角色相互联系的个人组成的知识网络。意见领袖在社交网络中很重要,因为他们有能力通过其优越的地位,教育程度和社会声望来影响他人的态度和行为。提出了许多理论来解释社交网络的形成,特征和持久性,但很少涉及到解决意见领袖身份的问题。本文提出了一种改进的混合框架,用于在线学习社区中的意见领袖识别。该框架已通过实验研究验证。通过分析文本内容,用户行为和时间,本研究根据四个显着特征对意见领袖进行了排名:专业知识,新颖性,影响力和活动性。此外,从长寿和集中性角度进一步研究了意见领袖的表现。对真实数据集的实验研究表明,我们的框架可以有效地识别在线学习社区中的意见领袖。

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