论文标题
Graphyp:具有社区流动子网的科学知识图。在对抗信息路线中检测学术争议
GRAPHYP: A Scientific Knowledge Graph with Manifold Subnetworks of Communities. Detection of Scholarly Disputes in Adversarial Information Routes
论文作者
论文摘要
目前,已发表内容的认知歧管在科学的所有领域都在扩展。但是,科学知识图(SKGS)仅提供了对抗性方向和科学争议的糟糕图片,这些方向和科学争议可以养活知识的产生。在本文中,我们在将结构化对象映射到图表中的研究活动的认知表现以及影响搜索界面的相关瓶颈的信息空间的设计理解。我们使用SKG Graphyp提出了一个新颖的图形设计的几何架构,该图既优化了“认知群落”的知识歧管的检测,又要在学术纠纷中对研究问题的对抗性答案的替代途径表示。借助设计“认知群落的流形子网”的方法,GraphYp提供了研究领域中不同搜索路径的分类。从他们的搜索实践中检测到用户,并根据对科学文档日志的搜索历史分析在“认知社区”中进行了分类。实践的歧管是从分化用途的指标表达的,该差异用途的节点的三胞胎形成了对称的图形子网,具有以下三个参数:质量,强度和多样性。
The cognitive manifold of published content is currently expanding in all areas of science. However, Scientific Knowledge Graphs (SKGs) only provide poor pictures of the adversarial directions and scientific controversies that feed the production of knowledge. In this Article, we tackle the understanding of the design of the information space of a cognitive representation of research activities, and of related bottlenecks that affect search interfaces, in the mapping of structured objects into graphs. We propose, with SKG GRAPHYP, a novel graph designed geometric architecture which optimizes both the detection of the knowledge manifold of "cognitive communities", and the representation of alternative paths to adversarial answers to a research question, for instance in the context of academic disputes. With a methodology for designing "Manifold Subnetworks of Cognitive Communities", GRAPHYP provides a classification of distinct search paths in a research field. Users are detected from the variety of their search practices and classified in "Cognitive communities" from the analysis of the search history of their logs of scientific documentation. The manifold of practices is expressed from metrics of differentiated uses by triplets of nodes shaped into symmetrical graph subnetworks, with the following three parameters: Mass, Intensity, and Variety.