SS-SIPTM-1: Signal Processing and Machine Learning over Graphs
Thu, 16 Dec, 14:00 - 16:00 Japan Standard Time (UTC +9)
Thu, 16 Dec, 05:00 - 07:00 Coordinated Universal Time
Thu, 16 Dec, 00:00 - 02:00 Eastern Standard Time (UTC -5)
Wed, 15 Dec, 21:00 - 23:00 Pacific Standard Time (UTC -8)
Track: Signal and Information Processing Theory and Methods (SIPTM)

SS-SIPTM-1.1: NODE CLUSTERING OF TIME-VARYING GRAPHS BASED ON TEMPORAL LABEL SMOOTHNESS

Katsuki Fukumoto, Koki Yamada, Yuichi Tanaka, Tokyo University of Agriculture and Technology, Japan

SS-SIPTM-1.2: Recovery of Time Series of Graph Signals Over Dynamic Topology

Eisuke Yamagata, Shunsuke Ono, Tokyo Institute of Technology, Japan

SS-SIPTM-1.4: Model Selection-inspired Coefficients Optimization for Polynomial-Kernel Graph Learning

Cheng Yang, Shanghai Jiao Tong University, China; Fen Wang, Xidian University, China; Minxiang Ye, Zhejiang Lab, China; Guangtao Zhai, Shanghai Jiao Tong University, China; Xiao-Ping Zhang, Ryerson University, Canada; Vladimir Stankovic, Lina Stankovic, University of Strathclyde, United Kingdom of Great Britain and Northern Ireland

SS-SIPTM-1.5: CHANNEL-WISE EARLY STOPPING WITHOUT A VALIDATION SET VIA NNK POLYTOPE INTERPOLATION

David Bonet, Universitat Polit├Ęcnica de Catalunya, Spain; Antonio Ortega, University of Southern California, United States of America; Javier Ruiz-Hidalgo, Universitat Polit├Ęcnica de Catalunya, Spain; Sarath Shekkizhar, University of Southern California, United States of America