Over the past decades, researchers had put lots of effort investigating ranking techniques used to rank query results retrieved during information retrieval, or to rank the recommended products in recommender systems. In this project, we aim to investigate searching, ranking, as well as recommendation techniques to help to realize a university academia searching platform. Unlike the usual information retrieval scenarios where lots of ground truth ranking data is present, in our case, we have only limited ground truth knowledge regarding the academia ranking. For instance, given some search queries, we only know a few researchers who are highly relevant and thus should be ranked at the top, and for some other search queries, we have no knowledge about which researcher should be ranked at the top at all. The limited amount of ground truth data makes some of the conventional ranking techniques and evaluation metrics become infeasible, and this is a huge challenge we faced during this project. This project enhances the user's academia searching experience to a large extent, it helps to achieve an academic searching platform which includes researchers, publications and fields of study information, which will be beneficial not only to the university faculties but also to students' research experiences.
翻译:在过去几十年里,研究人员进行了大量努力,调查用于对信息检索过程中检索的查询结果进行排名的排序技术,或将推荐的产品排在推荐人系统中。在这个项目中,我们的目标是调查搜索、排行以及建议技术,以帮助实现大学学术界搜索平台。与通常存在大量地面真相排名数据的信息检索方案不同,我们的情况是,在学术界排名方面,我们只有有限的实地真相知识。例如,由于一些搜索查询,我们只知道少数具有高度相关性的研究人员,因此应该排在顶端,而对于其他一些搜索查询,我们不知道哪些研究人员应该排在顶端。由于地面真相数据数量有限,使得一些传统的排名技术和评估指标变得不可行,这是我们在这个项目中面临的一个巨大挑战。这个项目在很大程度上加强了用户的学术界搜索经验,有助于建立一个学术搜索平台,其中包括研究人员、出版物和研究信息领域,这不仅对大学各系有利,而且对学生的研究经验也有利。