A Machine Learning System for Assisting Neophyte Researchers in Digital Libraries

Bissan Audeh, M. Beigbeder, C. Largeron
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引用次数: 3

Abstract

Although existing digital libraries such as Google Scholar and CiteSeerX propose advanced search functionalities, they do not take into consideration whether the user is new or specialized in the research domain of his query. As a result, neophytes can spend a lot of time checking documents that are not adapted to their initial information need. In this paper, we propose NeoTex, a machine learning based approach that combines content-based retrieval and citation graph measures to propose documents adapted to new researchers. The contributions of our work are: designing a model for scientific retrieval suited to neophytes, defining an evaluation protocol with realistic ground truths, and testing the model on a large real collection from a national digital library.
协助数位图书馆新手研究人员的机器学习系统
虽然现有的数字图书馆,如b谷歌Scholar和CiteSeerX提出了先进的搜索功能,但它们并不考虑用户是新用户还是其查询研究领域的专业人士。因此,新手可能会花费大量时间检查与他们最初的信息需求不相适应的文档。在本文中,我们提出了NeoTex,这是一种基于机器学习的方法,结合了基于内容的检索和引文图度量来提出适合新研究人员的文档。我们工作的贡献是:设计适合新手的科学检索模型,定义具有现实基础事实的评估协议,并在国家数字图书馆的大型真实馆藏上测试该模型。
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