KEYNOTE: Towards More Robust and Reliable Machine Learning
Masashi Sugiyama, Riken, The University of Tokyo, JAPAN
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IEEE Members: Free
Non-members: FreeLength: 01:03:17
Masashi Sugiyama, Riken, The University of Tokyo, JAPAN.
ABSTRACT: In statistical machine learning, training data is often full of uncertainties due to insufficient information, label noise, and bias. In this talk, I will give an overview of our research on reliable machine learning, including weakly supervised learning, noise-robust learning, and transfer learning. Then, I will discuss our recent challenges to integrate these approaches and develop a generic machine learning methodology with fewer modeling assumptions.