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Using an Exponential Random Graph Model to Recommend Academic Collaborators

机译:使用指数随机图模型来推荐学术合作者

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Academic collaboration networks can be formed by grouping different faculty members into a single group. Grouping these faculty members together is a complex process that involves searching multiple web pages in order to collect and analyze information, and establishing new connections among prospective collaborators. A recommender system (RS) for academic collaborations can help reduce the time and effort required to establish a new collaboration. Content-based recommendation system make recommendations based on similarity without taking social context into consideration. Hybrid recommender systems can be used to combine similarity and social context. In this paper, we propose a weighting method that can be used to combine two or more social context factors in a recommendation engine that leverages an exponential random graph model (ERGM) based on historical network data. We demonstrate our approach using real data from collaborations with faculty members at the College of Computer and Information Sciences (CCIS) in Saudi Arabia. Our results demonstrate that weighting social context factors helps increase recommendation accuracy for new users.
机译:学术协作网络可以通过将不同的教职人员分组到一个小组中来形成。将这些教职员工分组在一起是一个复杂的过程,其中涉及搜索多个网页以收集和分析信息,并在潜在合作者之间建立新的联系。学术合作的推荐系统(RS)可以帮助减少建立新合作所需的时间和精力。基于内容的推荐系统基于相似性进行推荐,而不考虑社会背景。混合推荐系统可用于组合相似性和社交环境。在本文中,我们提出了一种加权方法,该方法可用于在基于历史网络数据的指数随机图模型(ERGM)的推荐引擎中组合两个或多个社会上下文因素。我们使用与沙特阿拉伯计算机与信息科学学院(CCIS)教职员工合作的真实数据演示了我们的方法。我们的结果表明,权衡社会背景因素有助于提高新用户的推荐准确性。

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