Tutorial
The Role of Meta-learning for Few-shot Learning
Eleni Triantafillou
Moderator : Salomey Osei
Virtual
While deep learning has driven impressive progress, one of the toughest remaining challenges is generalization beyond the training distribution. Few-shot learning is an area of research that aims to address this, by striving to build models that can learn new concepts rapidly in a more "human-like" way. While many influential few-shot learning methods were based on meta-learning, recent progress has been made by simpler transfer learning algorithms, and it has been suggested in fact that few-shot learning might be an emergent property of large-scale models. In this talk, I will give an overview of the evolution of few-shot learning methods and benchmarks from my point of view, and discuss the evolving role of meta-learning for this problem. I will discuss lessons learned from using larger and more diverse benchmarks for evaluation and trade-offs between different approaches, closing with a discussion about open questions.
Link to slides: https://drive.google.com/file/d/1ZIULjhFjyNqjSS10p-5CDaqgzlrZcaGD/view?usp=sharing
Schedule
Mon 2:00 a.m. - 3:45 a.m.
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Tutorial
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tutorial
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SlidesLive Video |
Eleni Triantafillou 🔗 |
Mon 3:45 a.m. - 3:55 a.m.
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Q & A
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questions
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Eleni Triantafillou 🔗 |
Mon 3:55 a.m. - 4:00 a.m.
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Break to welcome panellists
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Mon 4:05 a.m. - 4:30 a.m.
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Panel
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Panel
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SlidesLive Video |
Erin Grant · Richard Turner · Neil Houlsby · Priyanka Agrawal · Abhijeet Awasthi · Salomey Osei 🔗 |