Abstract
This paper introduces a new framework for data efficient and versatile learning. Specifically: 1) We develop ML-PIP, a general framework for Meta-Learning approximate Probabilistic Inference for Prediction. ML-PIP extends existing probabilistic interpretations of meta-learning to cover a broad class of methods. 2) We introduce VERSA, an instance of the framework employing a flexible and versatile amortization network that takes few-shot learning datasets as inputs, with arbitrary numbers of shots, and outputs a distribution over task-specific parameters in a single forward pass. VERSA substitutes optimization at test time with forward passes through inference networks, amortizing the cost of inference and relieving the need for second derivatives during training. 3) We evaluate VERSA on benchmark datasets where the method sets new state-of-the-art results, handles arbitrary numbers of shots, and for classification, arbitrary numbers of classes at train and test time. The power of the approach is then demonstrated through a challenging few-shot ShapeNet view reconstruction task.
Original language | English |
---|---|
State | Published - 1 Jan 2019 |
Externally published | Yes |
Event | 7th International Conference on Learning Representations, ICLR 2019 - New Orleans, United States Duration: 6 May 2019 → 9 May 2019 |
Conference
Conference | 7th International Conference on Learning Representations, ICLR 2019 |
---|---|
Country/Territory | United States |
City | New Orleans |
Period | 6/05/19 → 9/05/19 |
ASJC Scopus subject areas
- Education
- Computer Science Applications
- Linguistics and Language
- Language and Linguistics