报告人:
Mahya Ghandehari 【University of Delaware】
报告人单位:
时间:
2018-12-19 10:30-11:30
地点:
卫津路校区第六教学楼111
开始时间:
2018-12-19 10:30-11:30
报告人简介:
年:
日月:
报告人简介
Assistant Professor of University of Delaware
报告内容介绍
Many real-life networks can be modelled by stochastic processes with a spatial embedding. The spatial reality can be used to represent attributes of the vertices which are inaccessible or unknown, but which are assumed to inform link formation. For example, in a social network, vertices may be considered as members of a social space, where the coordinates represent the interests and background of the users. The graph formation is modelled as a stochastic process, where the probability of a link occurring between two vertices decreases as their metric distance increases. A fundamental question is to determine whether a given network is compatible with a spatial model. That is, given a graph how can we judge whether the graph is likely generated by a spatial model, and if so what is the underlying metric space? Using the theory of graph limits, we show how to recognize graph sequences produced by random graph processes with a linear embedding (a natural embedding into real line). This talk is based on a joint work with Chuangpishit, Hurshman, Janssen, and Kalyaniwalia.