Lessons learned from the NeurIPS 2021 MetaDL challenge: Backbone fine-tuning without episodic meta-learning dominates for few-shot learning image classification
June 15, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Adrian El Baz, Ihsan Ullah, Edesio Alcobaรงa, Andrรฉ C. P. L. F. Carvalho, Hong Chen, Fabio Ferreira, Henry Gouk, Chaoyu Guan, Isabelle Guyon, Timothy Hospedales, Shell Hu, Mike Huisman, Frank Hutter, Zhengying Liu, Felix Mohr, Ekrem รztรผrk, Jan N. van Rijn, Haozhe Sun, Xin Wang, Wenwu Zhu
arXiv ID
2206.08138
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.CV,
cs.NE
Citations
13
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Although deep neural networks are capable of achieving performance superior to humans on various tasks, they are notorious for requiring large amounts of data and computing resources, restricting their success to domains where such resources are available. Metalearning methods can address this problem by transferring knowledge from related tasks, thus reducing the amount of data and computing resources needed to learn new tasks. We organize the MetaDL competition series, which provide opportunities for research groups all over the world to create and experimentally assess new meta-(deep)learning solutions for real problems. In this paper, authored collaboratively between the competition organizers and the top-ranked participants, we describe the design of the competition, the datasets, the best experimental results, as well as the top-ranked methods in the NeurIPS 2021 challenge, which attracted 15 active teams who made it to the final phase (by outperforming the baseline), making over 100 code submissions during the feedback phase. The solutions of the top participants have been open-sourced. The lessons learned include that learning good representations is essential for effective transfer learning.
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