CVLGMLMay 21, 2018

Meta-learning with differentiable closed-form solvers

arXiv:1805.08136v31062 citations
AI Analysis

This addresses the problem of few-shot learning for AI systems by enabling efficient adaptation without heavy fine-tuning, though it is incremental in leveraging existing machine learning tools.

The paper tackles the challenge of adapting deep networks to new concepts from few examples by integrating fast convergent methods like ridge regression as internal adaptation mechanisms, achieving performance competitive with or superior to state-of-the-art on three benchmarks.

Adapting deep networks to new concepts from a few examples is challenging, due to the high computational requirements of standard fine-tuning procedures. Most work on few-shot learning has thus focused on simple learning techniques for adaptation, such as nearest neighbours or gradient descent. Nonetheless, the machine learning literature contains a wealth of methods that learn non-deep models very efficiently. In this paper, we propose to use these fast convergent methods as the main adaptation mechanism for few-shot learning. The main idea is to teach a deep network to use standard machine learning tools, such as ridge regression, as part of its own internal model, enabling it to quickly adapt to novel data. This requires back-propagating errors through the solver steps. While normally the cost of the matrix operations involved in such a process would be significant, by using the Woodbury identity we can make the small number of examples work to our advantage. We propose both closed-form and iterative solvers, based on ridge regression and logistic regression components. Our methods constitute a simple and novel approach to the problem of few-shot learning and achieve performance competitive with or superior to the state of the art on three benchmarks.

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