论文标题
通过短期科学影响对论文进行排名
Ranking Papers by their Short-Term Scientific Impact
论文作者
论文摘要
发表科学论文的不断提高的速度使研究人员很难确定目前影响其感兴趣的研究领域的论文。因此,过去有效地识别高影响力论文的方法吸引了过去引起了极大的关注。在这项工作中,我们提出了一种方法,该方法试图根据其估计的短期影响来对论文进行划分,这是根据在不久的将来收到的引用数量来衡量的。与以前的工作类似,我们的方法在探索纸张引文网络时建模了研究人员。关键方面是,我们结合了一种基于注意力的机制,类似于时间限制的优先依恋版本,以明确捕捉研究人员对最近受到广泛关注的论文的偏爱。对跨学科的四个真实引用数据集进行了详细的实验评估,表明我们的方法比以前的工作基于其短期影响对论文进行排名更有效。
The constantly increasing rate at which scientific papers are published makes it difficult for researchers to identify papers that currently impact the research field of their interest. Hence, approaches to effectively identify papers of high impact have attracted great attention in the past. In this work, we present a method that seeks to rank papers based on their estimated short-term impact, as measured by the number of citations received in the near future. Similar to previous work, our method models a researcher as she explores the paper citation network. The key aspect is that we incorporate an attention-based mechanism, akin to a time-restricted version of preferential attachment, to explicitly capture a researcher's preference to read papers which received a lot of attention recently. A detailed experimental evaluation on four real citation datasets across disciplines, shows that our approach is more effective than previous work in ranking papers based on their short-term impact.