Adapted Deep Embeddings: A Synthesis of Methods for k-Shot Inductive Transfer Learning
Scott, Tyler, Ridgeway, Karl, Mozer, Michael C.
–Neural Information Processing Systems
The focus in machine learning has branched beyond training classifiers on a single task to investigating how previously acquired knowledge in a source domain can be leveraged to facilitate learning in a related target domain, known as inductive transfer learning. Three active lines of research have independently explored transfer learning using neural networks. In weight transfer, a model trained on the source domain is used as an initialization point for a network to be trained on the target domain. In deep metric learning, the source domain is used to construct an embedding that captures class structure in both the source and target domains. In few-shot learning, the focus is on generalizing well in the target domain based on a limited number of labeled examples.
Neural Information Processing Systems
Feb-14-2020, 04:55:46 GMT