Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Recasting Gradient-Based Meta-Learning as Hierarchical Bayes

About

Meta-learning allows an intelligent agent to leverage prior learning episodes as a basis for quickly improving performance on a novel task. Bayesian hierarchical modeling provides a theoretical framework for formalizing meta-learning as inference for a set of parameters that are shared across tasks. Here, we reformulate the model-agnostic meta-learning algorithm (MAML) of Finn et al. (2017) as a method for probabilistic inference in a hierarchical Bayesian model. In contrast to prior methods for meta-learning via hierarchical Bayes, MAML is naturally applicable to complex function approximators through its use of a scalable gradient descent procedure for posterior inference. Furthermore, the identification of MAML as hierarchical Bayes provides a way to understand the algorithm's operation as a meta-learning procedure, as well as an opportunity to make use of computational strategies for efficient inference. We use this opportunity to propose an improvement to the MAML algorithm that makes use of techniques from approximate inference and curvature estimation.

Erin Grant, Chelsea Finn, Sergey Levine, Trevor Darrell, Thomas Griffiths• 2018

Related benchmarks

TaskDatasetResultRank
Few-shot Image ClassificationMini-Imagenet (test)
Accuracy49.4
235
5-way ClassificationminiImageNet (test)
Accuracy49.4
231
Few-shot classificationminiImageNet standard (test)
5-way 1-shot Acc49.4
138
5-way Few-shot ClassificationminiImageNet standard (test)
Accuracy49.4
91
5-way Image ClassificationMiniImagenet
One-shot Accuracy49.4
67
5-way ClassificationminiImageNet 5-way (test)--
47
5-way Few-shot ClassificationminiImageNet 5-way (test)
1-shot Acc49.4
39
Showing 7 of 7 rows

Other info

Follow for update