Interdisciplinary collaboration has become a driving force for scientific breakthroughs, and evaluating scholars' performance in interdisciplinary researches is essential for promoting such collaborations.However, traditional scholar evaluation methods based solely on individual achievements do not consider interdisciplinary cooperation, creating a challenge for interdisciplinary scholar evaluation and recommendation. To address this issue, we propose a scholar embedding model that quantifies and represents scholars based on global semantic information and social influence, enabling real-time tracking of scholars' research trends. Our model incorporates semantic information and social influence for interdisciplinary scholar evaluation, laying the foundation for future interdisciplinary collaboration discovery and recommendation projects. We demonstrate the effectiveness of our model on a sample of scholars from the Beijing University of Posts and Telecommunications.
翻译:跨学科合作已成为科学突破的驱动力,评估学者在跨学科研究中的表现对于促进这样的合作至关重要。然而,仅基于个人成就的传统学者评估方法并未考虑跨学科合作,为跨学科学者评估和推荐带来了挑战。为了解决这个问题,我们提出了一种学者嵌入模型,根据全局语义信息和社交影响量量化和表征学者,实时跟踪学者的研究趋势。我们的模型将语义信息和社交影响结合起来,为跨学科学者评估奠定了基础,为未来的跨学科合作发现和推荐项目铺平了道路。我们在北京邮电大学的一组学者样本上展示了我们模型的有效性。