A Unified Perspective on Multi-Domain and Multi-Task Learning
About
In this paper, we provide a new neural-network based perspective on multi-task learning (MTL) and multi-domain learning (MDL). By introducing the concept of a semantic descriptor, this framework unifies MDL and MTL as well as encompassing various classic and recent MTL/MDL algorithms by interpreting them as different ways of constructing semantic descriptors. Our interpretation provides an alternative pipeline for zero-shot learning (ZSL), where a model for a novel class can be constructed without training data. Moreover, it leads to a new and practically relevant problem setting of zero-shot domain adaptation (ZSDA), which is the analogous to ZSL but for novel domains: A model for an unseen domain can be generated by its semantic descriptor. Experiments across this range of problems demonstrate that our framework outperforms a variety of alternatives.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | Animals with Attributes (AwA) (Standard Split) | Hit@1 Accuracy63.7 | 21 | |
| Zero-shot Classification | AwA 10-way 0-shot conventional setting | Hit@1 Accuracy63.7 | 18 | |
| Image Classification | Caltech-UCSD Birds-200-2011 (CUB) Standard | Hit@1 Accuracy32.3 | 16 | |
| Zero-shot Classification | CUB 50-way 0-shot conventional setting | Top-1 Accuracy32.3 | 16 |