Hong Ren Wu

1paper

1 Paper

LGNov 29, 2018
On the Transferability of Representations in Neural Networks Between Datasets and Tasks

Haytham M. Fayek, Lawrence Cavedon, Hong Ren Wu

Deep networks, composed of multiple layers of hierarchical distributed representations, tend to learn low-level features in initial layers and transition to high-level features towards final layers. Paradigms such as transfer learning, multi-task learning, and continual learning leverage this notion of generic hierarchical distributed representations to share knowledge across datasets and tasks. Herein, we study the layer-wise transferability of representations in deep networks across a few datasets and tasks and note some interesting empirical observations.