The effects of negative adaptation in Model-Agnostic Meta-Learning

12/05/2018
by   Tristan Deleu, et al.
0

The capacity of meta-learning algorithms to quickly adapt to a variety of tasks, including ones they did not experience during meta-training, has been a key factor in the recent success of these methods on few-shot learning problems. This particular advantage of using meta-learning over standard supervised or reinforcement learning is only well founded under the assumption that the adaptation phase does improve the performance of our model on the task of interest. However, in the classical framework of meta-learning, this constraint is only mildly enforced, if not at all, and we only see an improvement on average over a distribution of tasks. In this paper, we show that the adaptation in an algorithm like MAML can significantly decrease the performance of an agent in a meta-reinforcement learning setting, even on a range of meta-training tasks.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/12/2018

Unsupervised Meta-Learning for Reinforcement Learning

Meta-learning is a powerful tool that builds on multi-task learning to l...
research
06/13/2022

Faster Optimization-Based Meta-Learning Adaptation Phase

Neural networks require a large amount of annotated data to learn. Meta-...
research
12/14/2020

Variable-Shot Adaptation for Online Meta-Learning

Few-shot meta-learning methods consider the problem of learning new task...
research
10/30/2019

Decoupling Adaptation from Modeling with Meta-Optimizers for Meta Learning

Meta-learning methods, most notably Model-Agnostic Meta-Learning or MAML...
research
10/07/2022

Robotic Control Using Model Based Meta Adaption

In machine learning, meta-learning methods aim for fast adaptability to ...
research
10/10/2017

Continuous Adaptation via Meta-Learning in Nonstationary and Competitive Environments

Ability to continuously learn and adapt from limited experience in nonst...
research
10/16/2019

Model-Agnostic Meta-Learning using Runge-Kutta Methods

Meta-learning has emerged as an important framework for learning new tas...

Please sign up or login with your details

Forgot password? Click here to reset