NeurIPS2020

What is being transferred in transfer learning?

Behnam Neyshabur, Hanie Sedghi, Chiyuan Zhang

被引用 611 次

摘要

One desired capability for machines is the ability to transfer their knowledge of one domain to another where data is (usually) scarce. Despite ample adaptation of transfer learning in various deep learning applications, we yet do not understand what enables a successful transfer and which part of the network is responsible for that. In this paper, we provide new tools and analyses to address these fundamental questions. Through a series of analyses on transferring to block-shuffled images, we separate the effect of feature reuse from learning low-level statistics of data and show that some benefit of transfer learning comes from the latter. We present that when training from pre-trained weights, the model stays in the same basin in the loss landscape and different instances of such model are similar in feature space and close in parameter space. 2 * Equal contribution. Authors ordered randomly. 2 Code is available at https://github.com/goog e-research/understanding-transfer-earning 34th Conference on Neural Information Processing Systems (NeurIPS 2020),