个人信息
Personal information
教授 博士生导师 硕士生导师
性别:男
在职信息:在职
所在单位:计算机科学与技术学院
学历:研究生(博士)毕业
学位:工学博士学位
毕业院校:浙江大学
学科:计算机系统结构曾获荣誉:
2015 湖北省优秀硕士论文指导老师
2013 湖北省优秀硕士论文指导老师
2009 湖北省优秀学士论文指导老师
论文类型:期刊论文
第一作者:朱春雪
通讯作者:Pingpeng Yuan
合写作者:林隆龙,Hai Jin
发表刊物:Journal of Computer Science and Technology
所属单位:计算机科学与技术学院
项目来源:自然科学基金
关键字:Temporal Networks, Temporal Feature Distribution, Cohesive Subgraphs, Convex Property
摘要:Real-world networks, such as social networks, cryptocurrency networks and e-commerce networks, often have
occurrence time of interactions between nodes. Such networks are typically modeled as temporal graphs. Mining cohesive
subgraphs from temporal graph is practical and essential in numerous data mining applications since it can get insights into
the time-varying nature of temporal graphs. However, existing studies on mining cohesive subgraphs are mainly tailored
for static graphs, where there is no temporal information on each edge. So, those cohesive subgraph models cannot indicate
both temporal and structural characteristics of subgraphs. Here, we explore the model of cohesive temporal subgraphs by
incorporating both evolving and structural characteristics of temporal subgraphs. Unfortunately, the volume of time intervals
in a temporal network is quadratic. So, the time complexity of mining temporal cohesive subgraphs is high. To efficiently
address the problem, we first mine the temporal density distribution of temporal graphs. Guided by the distribution, we can safely prune many unqualified time intervals with the linear time cost. Then, the remaining time intervals where cohesive
temporal subgraphs fall in are examined using the greedy search. The experiments on nine real-world temporal graphs
indicate that our proposed solutions are indeed efficient, effective, and scalable