More about HKUST
Efficient SimRank Computation over Graphs
PhD Qualifying Examination Title: "Efficient SimRank Computation over Graphs" by Mr. Yue WANG Abstract: Currently many real information systems can be modeled as graphs. Measuring similarity among nodes over graphs plays a key role in graph mining and analysis, and has many applications such as recommendation system, spam detection, graph clustering and link prediction. Among different node similarity measurements, SimRank is one of the most promising and popular ones. It can produce high quality results due to its recursive definition. However, the computational cost for SimRank is high, thus it has received a lot of research attention since introduced. Furthermore, real-world graphs evolve over time typically, which requires computing similarity scores efficiently over dynamic graphs. In this survey, we study current works for computing SimRank over both static and dynamic graphs, and compare the techniques used in different algorithms. The strengths and weaknesses of different methods are also discussed. Date: Thursday, 3 May 2018 Time: 1:00pm - 3:00pm Venue: Room 2304 Lifts 17/18 Committee Members: Prof. Lei Chen (Supervisor) Dr. Yangqiu Song (Chairperson) Dr. Raymond Wong Dr. Ke Yi **** ALL are Welcome ****