SS-MLDA-1: Online and Distributed Kernel Learning Algorithms
Thu, 16 Dec, 09:00 - 11:00 Japan Standard Time (UTC +9)
Thu, 16 Dec, 00:00 - 02:00 Coordinated Universal Time
Wed, 15 Dec, 19:00 - 21:00 Eastern Standard Time (UTC -5)
Wed, 15 Dec, 16:00 - 18:00 Pacific Standard Time (UTC -8)
Track: Machine Learning and Data Analytics (MLDA)

SS-MLDA-1.1: Graph Kernel Recursive Least-Squares Algorithms

Vinay Chakravarthi gogineni, Valeriya Naumova, Simula Metropolitan Center for Digital Engineering, Norway; Stefan Werner, Norwegian University of Science and Technology, Norway; Yih-Fang Huang, University of Notre Dame, United States of America

SS-MLDA-1.2: A Hilbertian Projection Approach with Dictionary Dividing Strategy: Accelerating Nonlinear Estimation Algorithm with Multiscale Gaussians

Masaaki Takizawa, National Institute of Technology, Toyama College, Japan; Masahiro Yukawa, Keio University, Japan

SS-MLDA-1.3: PERSONALIZED LEARNING USING MULTIPLE KERNEL MODELS

Anthony Kuh, University of Hawaii, United States of America; Shuai Huang, Cynthia Chen, University of Washington, United States of America