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Task Similarity Aware Meta Learning: Theory-inspired Improvement on MAML

Pan Zhou, Yingtian Zou, Xiao–Tong Yuan, Jiashi Feng, Caiming Xiong, Steven C. H. Hoi

2021Singapore Management University Institutional Knowledge (InK) (Singapore Management University)18 citationsOpen Access PDF

Abstract

Few-shot learning ability is heavily desired for machine intelligence. By meta-learning a model initialization from training tasks with fast adaptation ability to new tasks, model-agnostic meta-learning (MAML) has achieved remarkable success in a number of few-shot learning applications. However, theoretical understandings on the learning ability of MAML remain absent yet, hindering developing new and more advanced meta learning methods in a principle way. In this work, we solve this problem by theoretically justifying the fast adaptation capability of MAML when applied to new tasks. Specifically, we prove that the learnt meta-initialization can quickly adapt to new tasks with only a few steps of gradient descent. This result, for the first time, explicitly reveals the benefits of the unique designs in MAML. Then we propose a theory-inspired task similarity aware MAML which clusters tasks into multiple groups according to the estimated optimal model parameters and learns group-specific initializations. The proposed method improves upon MAML by speeding up the adaptation and giving stronger few-shot learning ability. Experimental results on the few-shot classification tasks testify its advantages. TensorFlow code will be released to reproduce our results.

Topics & Concepts

Meta learning (computer science)InitializationComputer scienceArtificial intelligenceAdaptation (eye)Task (project management)Machine learningSimilarity (geometry)Image (mathematics)EngineeringPhysicsOpticsProgramming languageSystems engineeringDomain Adaptation and Few-Shot LearningMachine Learning and Data ClassificationMultimodal Machine Learning Applications
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