论文标题

社交搜索:在线社交平台中检索信息 - 调查

Social Search: retrieving information in Online Social Platforms -- A Survey

论文作者

Amendola, Maddalena, Passarella, Andrea, Perego, Raffaele

论文摘要

社会搜索研究涉及研究方法论,利用社交信息,以更好地满足在线社交媒体中的用户信息需求,同时简化搜索工作,从而减少所花费的时间和所使用的计算资源。从以前的研究开始,在这项工作中,我们分析了社会搜索领域的当前艺术状况,提出了新的分类法并突出了当前的局限性和开放研究方向。我们将社会搜索领域分为三个子类别,在这里,社会方面起着关键作用:社会问题与回答,社交内容搜索和社交协作搜索。对于每个子类别,我们更详细地介绍了文献中的关键概念和精选的代表性方法。我们发现,到目前为止,大量的研究通过简单地结合社交平台提供的社交特征来模拟用户的偏好及其关系。它为大量研究铺平了道路,以利用有关用户的社交概况和行为的更多结构化信息(可以从社交平台上可用的数据中推断出来),以进一步优化其信息需求。

Social Search research deals with studying methodologies exploiting social information to better satisfy user information needs in Online Social Media while simplifying the search effort and consequently reducing the time spent and the computational resources utilized. Starting from previous studies, in this work, we analyze the current state of the art of the Social Search area, proposing a new taxonomy and highlighting current limitations and open research directions. We divide the Social Search area into three subcategories, where the social aspect plays a pivotal role: Social Question&Answering, Social Content Search, and Social Collaborative Search. For each subcategory, we present the key concepts and selected representative approaches in the literature in greater detail. We found that, up to now, a large body of studies model users' preferences and their relations by simply combining social features made available by social platforms. It paves the way for significant research to exploit more structured information about users' social profiles and behaviors (as they can be inferred from data available on social platforms) to optimize their information needs further.

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