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Publication Venue Recommendation Using Author Network's Publication History

机译:使用作者网络的出版历史推荐出版场地

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Selecting a good conference or journal in which to publish a new article is very important to many researchers and scholars. The choice of publication venue is usually based on the author's existing knowledge of publication venues in their research domain or the match of the conference topics with their paper content. They may not be aware of new or other more appropriate conference venues to which their paper could be submitted. A traditional way to recommend a conference to a researcher is by analyzing her paper and comparing it to the topics of different conferences using content-based analysis. However, this approach can make errors due to mismatches caused by ambiguity in text comparisons. In this paper, we present a new approach allowing researchers to automatically find appropriate publication venues for their research paper by exploring author's network of related co-authors and other researchers in the same domain. This work is a part of our social network based recommendation research for research publications venues and interesting hot-topic researches. Experiments with a set of ACM SIG conferences show that our new approach outperforms the content-based approach and provides accurate recommendation. This works also demonstrates the feasibility of our ongoing approach aimed at using social network analysis of researchers and experts in the relevant research domains for a variety of recommendation tasks.
机译:对于许多研究人员和学者来说,选择一个好的会议或期刊来发表新文章非常重要。出版地点的选择通常基于作者在研究领域对出版地点的现有知识或会议主题与其论文内容的匹配。他们可能不知道可以向其提交论文的新的或其他更合适的会议场所。向研究人员推荐会议的传统方式是分析其论文,并使用基于内容的分析将其与不同会议的主题进行比较。但是,由于文本比较中的歧义导致不匹配,因此此方法可能会导致错误。在本文中,我们提出了一种新方法,允许研究人员通过探索相关领域共同作者的作者网络以及同一领域的其他研究人员,自动为他们的研究论文找到合适的发表场所。这项工作是我们基于社会网络的推荐研究的一部分,该研究针对研究出版物的场所和有趣的热点研究。通过一系列ACM SIG会议的实验表明,我们的新方法优于基于内容的方法,并提供了准确的建议。这项工作还证明了我们正在进行的方法的可行性,该方法旨在将相关研究领域的研究人员和专家的社交网络分析用于各种推荐任务。

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