Learning to Learn
- 👤 Speaker: Siddharth Swaroop; Will Tebbutt
- 📅 Date & Time: Thursday 23 November 2017, 13:30 - 15:00
- 📍 Venue: Engineering Department, CBL Seminar Room 4-38
Abstract
Abstract
Learning to Learn methods, or Meta-Learning, involve replacing hand-crafted aspects of conventional learning algorithms with more flexible features that can be learnt from data. We introduce and review recent work on learning to learn in the contexts of optimisation and few-shot learning.
Recommended Reading
There is no particular recommended reading, but the following papers will be discussed among others:- “Learning to learn without gradient descent by gradient descent”, Chen et al., ICML 2017
- “Matching Networks for One Shot Learning”, Vinyals et al., NIPS 2016
Series This talk is part of the Machine Learning Reading Group @ CUED series.
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Siddharth Swaroop; Will Tebbutt
Thursday 23 November 2017, 13:30-15:00