ICML2020

Meta-learning for Mixed Linear Regression

Weihao Kong, Raghav Somani, Zhao Song, Sham M. Kakade, Sewoong Oh

被引用 70 次

摘要

In modern supervised learning, there are a large number of tasks, but many of them are associated with only a small amount of labeled data. These include data from medical image processing and robotic interaction. Even though each individual task cannot be meaningfully trained in isolation, one seeks to meta-learn across the tasks from past experiences by exploiting some similarities. We study a fundamental question of interest: When can abundant tasks with small data compensate for lack of tasks with big data? We focus on a canonical scenario where each task is drawn from a mixture of kk linear regressions, and identify sufficient conditions for such a graceful exchange to hold; The total number of examples necessary with only small data tasks scales similarly as when big data tasks are available. To this end, we introduce a novel spectral approach and show that we can efficiently utilize small data tasks with the help of Ω~(k3/2)\tilde\Omega(k^{3/2}) medium data tasks each with Ω~(k1/2)\tilde\Omega(k^{1/2}) examples.