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Using Social Elements to Recommend Sessions in Academic Events

机译:使用社交元素推荐学术活动中的课程

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Academic events bring together a large number of researchers and are composed of different types of sessions, which can cause overload of attention and difficulty deciding which sessions to participate. To deal with such problems, Recommender Systems can assist users by offering options that are appropriate for each user. This paper aims to present a recommender approach for sessions of academic events making use of social elements. We propose a recommendation using the academic event's co-authoring network to improve the quality of session recommendation based on the users' previous publications. For authors/participants who do not have publications in previous editions of the event, the recommendations will be generated through the Collaborative Filtering approach. In order to evaluate the viability of our approach, it was included in an Academic Event Application called AppIHC and participants were invited to answer a questionnaire about its use. The results indicate the approach is promising and other social elements could be included future versions.
机译:学术活动将大量研究人员聚集在一起,并且由不同类型的会议组成,这可能会引起过多的关注和决定参加哪个会议的困难。为了解决此类问题,推荐系统可以通过提供适合每个用户的选项来为用户提供帮助。本文旨在为利用社交元素的学术活动提供一种推荐方法。我们根据用户以前的出版物,使用学术活动的合作网络提出建议,以提高会议建议的质量。对于在活动的先前版本中没有出版物的作者/参与者,将通过“协作过滤”方法生成建议。为了评估该方法的可行性,该方法已包含在名为AppIHC的学术活动申请中,并邀请参与者回答有关其使用的调查表。结果表明该方法是有前途的,其他社会元素也可以包含在将来的版本中。

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