...
首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >A Unified Framework for Community Detection and Network Representation Learning
【24h】

A Unified Framework for Community Detection and Network Representation Learning

机译:社区检测和网络代表学习的统一框架

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Network representation learning (NRL) aims to learn low-dimensional vectors for vertices in a network. Most existing NRL methods focus on learning representations from local context of vertices (such as their neighbors). Nevertheless, vertices in many complex networks also exhibit significant global patterns widely known as communities. It's intuitive that vertices in the same community tend to connect densely and share common attributes. These patterns are expected to improve NRL and benefit relevant evaluation tasks, such as link prediction and vertex classification. Inspired by the analogy between network representation learning and text modeling, we propose a unified NRL framework by introducing community information of vertices, named as Community-enhanced Network Representation Learning (CNRL). CNRL simultaneously detects community distribution of each vertex and learns embeddings of both vertices and communities. Moreover, the proposed community enhancement mechanism can be applied to various existing NRL models. In experiments, we evaluate our model on vertex classification, link prediction, and community detection using several real-world datasets. The results demonstrate that CNRL significantly and consistently outperforms other state-of-the-art methods while verifying our assumptions on the correlations between vertices and communities.
机译:网络表示学习(NRL)旨在学习网络中的顶点的低维矢量。大多数现有的NRL方法专注于从顶点的本地背景(例如邻居)的学习表示。然而,许多复杂网络中的顶点也表现出广泛称为社区的显着全球模式。它直观地,同一社区的顶点倾向于密集地连接并分享常见属性。这些模式预计将改善NRL并有益于相关的评估任务,例如链路预测和顶点分类。灵感来自于网络表示学习和文本建模之间的类比,我们通过引入顶点的社区信息来提出统一的NRL框架,命名为社区增强的网络表示学习(CNRL)。 CNRL同时检测每个顶点的社区分布,并学习顶点和社区的嵌入。此外,所提出的社区增强机制可以应用于各种现有的NRL模型。在实验中,我们使用几个现实世界数据集评估我们的顶点分类,链路预测和社区检测模型。结果表明,CNRL显着且始终如一地优于其他最先进的方法,同时验证我们对顶点和社区之间的相关性的假设。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号