时变图信号的增量数据驱动拓扑学习

Zefeng Qi, Guobing Li, Shiyu Zhai, Guomei Zhang
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引用次数: 1

摘要

研究了具有增量数据的时变图信号的拓扑学习问题。为了学习数据收集过程中时变缓慢的拓扑结构,我们将观测数据按时间划分为多组,并将每组的拓扑学习建模为稀疏优化问题,其中惩罚函数设计为考虑增量数据和先前拓扑信息进行图学习。在此基础上,建立了考虑拓扑变化先验信息的动态拓扑修正函数。在此基础上,通过求解优化问题,提出一种动态拓扑学习与跟踪算法,对变化的图拓扑进行学习与跟踪。在合成数据集和真实数据集上进行了仿真,以揭示该算法的性能增益。
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Incremental Data-Driven Topology Learning for Time-Varying Graph Signals
In this paper the topology learning for time-varying graph signals with incremental data is studied. In order to learn the topology which is slowly time-varying during data collection, we separate the data of observation into multiple groups by time, and for each group we model the topology learning as a sparse optimization problem, in which the penalty function is designed to consider both the incremental data and previous topology information for graph learning. Moreover, a correction function for dynamic topology is developed by considering a priori information of topology changes. Based on that, by solving the optimization problem we then propose a dynamic topology learning and tracking algorithm to learn as well as track the varying graph topology. Simulations on synthetic and real-world dataset are performed to reveal the performance gain of the proposed algorithm.
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