Title
Transferring Knowledge across Learning Processes.
Abstract
In complex transfer learning scenarios new tasks might not be tightly linked to previous tasks. Approaches that transfer information contained only in the final parameters of a source model will therefore struggle. Instead, transfer learning at a higher level of abstraction is needed. We propose Leap, a framework that achieves this by transferring knowledge across learning processes. We associate each task with a manifold on which the training process travels from initialization to final parameters and construct a meta learning objective that minimizes the expected length of this path. Our framework leverages only information obtained during training and can be computed on the fly at negligible cost. We demonstrate that our framework outperforms competing methods, both in meta learning and transfer learning, on a set of computer vision tasks. Finally, we demonstrate that Leap can transfer knowledge across learning processes in demanding Reinforcement Learning environments (Atari) that involve millions of gradient steps.
Year
Venue
Field
2018
ICLR
Computer science,Human–computer interaction,Artificial intelligence,Machine learning
DocType
Volume
Citations 
Journal
abs/1812.01054
5
PageRank 
References 
Authors
0.39
28
4
Name
Order
Citations
PageRank
Sebastian Flennerhag151.06
Pablo Moreno272.92
Neil D. Lawrence33411268.51
andreas damianou415117.68