论文标题
基于路径相似性和信用分配的网络方法来检索专业知识
A network approach to expertise retrieval based on path similarity and credit allocation
论文作者
论文摘要
随着在线学术数据库的越来越多的可用性,可以轻松提取和分析出版记录。研究人员可以立即与他人的科学生产保持同步,并可以选择新的合作者并建立新的研究团队。考虑新的潜在合作时,应该考虑的一个关键因素是明确定义其他研究人员的专业知识的可能性。尽管一些组织已经建立了数据库系统来使其成员能够手动制作个人资料,但维护此类系统既耗时又昂贵。因此,人们对通过自动化方法检索专业知识的兴趣越来越大。确实,研究人员专业知识的识别在许多应用程序中具有很大的价值,例如确定合格的专家来监督新研究人员,将手稿分配给审阅者并组成合格的团队。在这里,我们提出了一种基于网络的方法来构建作者的专业知识概况。以Medline语料库为例,我们表明我们的方法可以应用于许多广泛使用的数据集,并优于传统上用于专业知识识别的其他方法。
With the increasing availability of online scholarly databases, publication records can be easily extracted and analysed. Researchers can promptly keep abreast of others' scientific production and, in principle, can select new collaborators and build new research teams. A critical factor one should consider when contemplating new potential collaborations is the possibility of unambiguously defining the expertise of other researchers. While some organisations have established database systems to enable their members to manually produce a profile, maintaining such systems is time-consuming and costly. Therefore, there has been a growing interest in retrieving expertise through automated approaches. Indeed, the identification of researchers' expertise is of great value in many applications, such as identifying qualified experts to supervise new researchers, assigning manuscripts to reviewers, and forming a qualified team. Here, we propose a network-based approach to the construction of authors' expertise profiles. Using the MEDLINE corpus as an example, we show that our method can be applied to a number of widely used data sets and outperforms other methods traditionally used for expertise identification.