Litcius/Paper detail

Variational Metric Scaling for Metric-Based Meta-Learning

Jiaxin Chen, Li-ming Zhan, Xiao-Ming Wu, Fu-Lai Chung

2020Proceedings of the AAAI Conference on Artificial Intelligence40 citationsDOIOpen Access PDF

Abstract

Metric-based meta-learning has attracted a lot of attention due to its effectiveness and efficiency in few-shot learning. Recent studies show that metric scaling plays a crucial role in the performance of metric-based meta-learning algorithms. However, there still lacks a principled method for learning the metric scaling parameter automatically. In this paper, we recast metric-based meta-learning from a Bayesian perspective and develop a variational metric scaling framework for learning a proper metric scaling parameter. Firstly, we propose a stochastic variational method to learn a single global scaling parameter. To better fit the embedding space to a given data distribution, we extend our method to learn a dimensional scaling vector to transform the embedding space. Furthermore, to learn task-specific embeddings, we generate task-dependent dimensional scaling vectors with amortized variational inference. Our method is end-to-end without any pre-training and can be used as a simple plug-and-play module for existing metric-based meta-algorithms. Experiments on miniImageNet show that our methods can be used to consistently improve the performance of existing metric-based meta-algorithms including prototypical networks and TADAM.

Topics & Concepts

Metric (unit)Meta learning (computer science)ScalingEmbeddingComputer scienceMetric spaceEquivalence of metricsMultidimensional scalingAlgorithmIntrinsic metricArtificial intelligenceFisher information metricMathematicsMachine learningTheoretical computer scienceInjective metric spaceTask (project management)Discrete mathematicsGeometryEconomicsManagementOperations managementDomain Adaptation and Few-Shot LearningCancer-related molecular mechanisms research