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Confluence of social network, social question and answering community, and user reputation model for information seeking and experts generation

机译:社交网络,社交问答社区和用户声誉模型的融合,以寻求信息和产生专家

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Social question and answering (Q&A) is one of the most effective approaches to knowledge acquisition using information seeking and collaboration. Most modern social Q&A systems use a static points-based user reputation model, which has the effect of diminishing the value of experts. In order to overcome this issue, we have developed a dynamic points-based user reputation model that takes user rating and social network analysis as input. The impact weight of each relation and user ratings are not static but are dependent on the current level of asker and answerer and on the difficulty level of the question. We propose a novel social Q&A platform that is the confluence of different features of social network, social Q&A, and the dynamic points-based user reputation model. The beta version of the system was evaluated by conducting a clinical study for 4 months in different academic environments. The results show that the proposed social Q&A outperforms the available static points-based social Q&A systems in representing the actual user reputation with an increased user satisfaction.
机译:社交问答(Q&A)是使用信息搜索和协作进行知识获取的最有效方法之一。大多数现代社会问答系统使用基于静态点的用户信誉模型,这会降低专家的价值。为了解决此问题,我们开发了一个基于动态积分的用户信誉模型,该模型将用户评分和社交网络分析作为输入。每个关系的影响权重和用户评分不是一成不变的,而是取决于提问者和回答者的当前级别以及问题的难度级别。我们提出了一个新颖的社交问答平台,该平台融合了社交网络的各种功能,社交问答和基于动态积分的用户信誉模型。通过在不同学术环境中进行4个月的临床研究,评估了该系统的beta版本。结果表明,所提出的社交问答在以提高的用户满意度表示实际用户信誉方面,优于基于静态点的社交问答系统。

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