论文标题

在嵌入的Veridical网络中的下一个波浪

Next Waves in Veridical Network Embedding

论文作者

Ward, Owen G., Huang, Zhen, Davison, Andrew, Zheng, Tian

论文摘要

将大网络的节点嵌入度量标准(例如欧几里得)空间已成为统计机器学习中积极研究的领域,该领域已在自然和社会科学中找到了应用。通常,在欧几里得几何形状中学习了网络对象的表示形式,然后用于有关网络节点和/或边缘的后续任务,例如社区检测,节点分类和链接预测。网络嵌入算法已在多个学科中提出,通常具有特定于领域的符号和细节。此外,已经采用了不同的措施和工具来评估和比较不同设置下提出的方法,通常取决于下游任务。结果,有系统地研究这些算法是一项挑战。由最近提出的Veridical数据科学(VDS)框架的动机,我们提出了一个用于网络嵌入算法的框架,并讨论了在这种情况下如何适用可预测性,可计算性和稳定性的原则。该框架在网络嵌入中的利用具有激励并指向未来研究的新方向。

Embedding nodes of a large network into a metric (e.g., Euclidean) space has become an area of active research in statistical machine learning, which has found applications in natural and social sciences. Generally, a representation of a network object is learned in a Euclidean geometry and is then used for subsequent tasks regarding the nodes and/or edges of the network, such as community detection, node classification and link prediction. Network embedding algorithms have been proposed in multiple disciplines, often with domain-specific notations and details. In addition, different measures and tools have been adopted to evaluate and compare the methods proposed under different settings, often dependent of the downstream tasks. As a result, it is challenging to study these algorithms in the literature systematically. Motivated by the recently proposed Veridical Data Science (VDS) framework, we propose a framework for network embedding algorithms and discuss how the principles of predictability, computability and stability apply in this context. The utilization of this framework in network embedding holds the potential to motivate and point to new directions for future research.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源