TA6b1: Algorithms for Adaptive Systems
Tue, 31 Oct, 10:15 - 11:55 PT (UTC -8)
Location: Kiln
Session Type: Poster
Session Chair: Gonzalo Mateos Buckstein, University of Rochester
Track: Adaptive Systems, Machine Learning, Data Analytics

TA6b1.1: Online Network Source Localization from Streaming Graph Signals

Chang Ye, Gonzalo Mateos, University of Rochester, United States

TA6b1.2: Tensor Least Mean Fourth Algorithm

Muhammad Moinuddin, King Abdulaziz University, Saudi Arabia; Azzedine Zerguine, King Fahd University of Petroleum & Minerals, Saudi Arabia

TA6b1.3: Low-Complexity and Model-Free Parameter Tracking Algorithms

Daniel C. Vidal, Vítor H. Nascimento, University of São Paulo, Brazil

TA6b1.4: Advanced Results Verifying that Adaptive Fault Tolerance is Inherently Contained in Bio-Inspired Adaptive Optimization

William Jenkins, Pennsylvania State University, United States; Chandra Radhakrishnan, University of Illinois, United States

TA6b1.5: Teacher-Student Knowledge Distillation for Radar Perception on Embedded Accelerators

Steven Shaw, Kanishka Tyagi, Shan Zhang, Aptiv Technical Center, United States

TA6b1.6: On the Asymptotic Linear Convergence of Gradient Descent for Non-Symmetric Matrix Completion

Trung Vu, University of Maryland, Baltimore County, United States; Raviv Raich, Oregon State University, United States

TA6b1.7: Rayleigh-Ritz based updates of the Multilinear Singular Value Decomposition

Vasileios Kalantzis, IBM Research, United States; Panagiotis Traganitis, Michigan State University, United States