Multi-Task Zipping via Layer-wise Neuron Sharing

Xiaoxi He, Zimu Zhou, Lothar Thiele

Neural Information Processing Systems 

Future mobile devices are anticipated to perceive, understand and react to the world on their own by running multiple correlated deep neural networks on-device. Yet the complexity of these neural networks needs to be trimmed down both withinmodel and cross-model to fit in mobile storage and memory. Previous studies squeeze the redundancy within a single model. In this work, we aim to reduce the redundancy across multiple models. We propose Multi-Task Zipping (MTZ), a framework to automatically merge correlated, pre-trained deep neural networks for cross-model compression.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found