Few-Shot Learning via Learning the Representation, Provably
Simon S. Du, Wei Hu, Sham M. Kakade, Jason D. Lee, Qi Lei

TL;DR
This paper provides theoretical insights into how representation learning in few-shot settings can significantly reduce sample complexity, especially when leveraging multiple source tasks and shared representations.
Contribution
It offers provable rates showing the benefits of representation learning in low- and high-dimensional few-shot tasks, surpassing traditional methods.
Findings
Representation learning reduces sample complexity in few-shot learning.
Pooling source task data enhances representation quality and learning efficiency.
Theoretical bounds demonstrate the advantage over classical approaches.
Abstract
This paper studies few-shot learning via representation learning, where one uses source tasks with data per task to learn a representation in order to reduce the sample complexity of a target task for which there is only data. Specifically, we focus on the setting where there exists a good \emph{common representation} between source and target, and our goal is to understand how much of a sample size reduction is possible. First, we study the setting where this common representation is low-dimensional and provide a fast rate of ; here, is the representation function class, is its complexity measure, and is the dimension of the representation. When specialized to linear representation functions, this rate becomes $O\left(\frac{dk}{n_1T} +…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and ELM · Sparse and Compressive Sensing Techniques
MethodsLinear Regression
