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Academic Influence Aware and Multidimensional Network Analysis for Research Collaboration Navigation Based on Scholarly Big Data

机译:基于学术大数据的研究协作导航学术影响和多维网络分析

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Scholarly big data, which is a large-scale collection of academic information, technical data, and collaboration relationships, has attracted increasing attentions, ranging from industries to academic communities. The widespread adoption of social computing paradigm has made it easier for researchers to join collaborative research activities and share academic data more extensively than ever before across the highly interlaced academic networks. In this study, we focus on the academic influence aware and multidimensional network analysis based on the integration of multi-source scholarly big data. Following three basic relations: Researcher-Researcher, Researcher-Article, and Article-Article, a set of measures is introduced and defined to quantify correlations in terms of activity-based collaboration relationship, specialty-aware connection, and topic-aware citation fitness among a series of academic entities (e.g., researchers and articles) within a constructed multidimensional network model. An improved Random Walk with Restart (RWR) based algorithm is developed, in which the time-varying academic influence is newly defined and measured in a certain social context, to provide researchers with research collaboration navigation for their future works. Experiments and evaluations are conducted to demonstrate the practicability and usefulness of our proposed method in scholarly big data analysis using DBLP and ResearchGate data.
机译:学术大数据,这是一系列大规模的学术信息,技术数据和协作关系,引起了越来越多的关注,从业到学术界。社会计算范式的广泛采用使研究人员更容易加入合作研究活动并比以往任何时候都更广泛地分享学术数据。在这项研究中,我们专注于基于多源学术大数据集成的学术影响知识和多维网络分析。在三个基本关系:研究员 - 研究员,研究员 - 文章和文章 - 介绍了一系列措施并定义为量化基于活动的协作关系,专业感知连接和主题感知的相关性的相关性在构造的多维网络模型中,一系列学术实体(例如,研究人员和文章)。开发了一种改进的随机散步(RWR)基于RATART(RWR)的算法,其中在某种社交背景下新定义和测量了时变的学术影响,为他们未来的作品提供了研究人员。进行实验和评估,以展示我们使用DBLP和研究数据在学术大数据分析中提出的方法的实用性和有用性。

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