Sequential Learning for Domain Generalization
Li, Da, Yang, Yongxin, Song, Yi-Zhe, Hospedales, Timothy
In this paper we propose a sequential learning framework for Domain Generalization (DG), the problem of training a model that is robust to domain shift by design. Various DG approaches have been proposed with different motivating intuitions, but they typically optimize for a single step of domain generalization -- training on one set of domains and generalizing to one other. Our sequential learning is inspired by the idea lifelong learning, where accumulated experience means that learning the $n^{th}$ thing becomes easier than the $1^{st}$ thing. In DG this means encountering a sequence of domains and at each step training to maximise performance on the next domain. The performance at domain $n$ then depends on the previous $n-1$ learning problems. Thus backpropagating through the sequence means optimizing performance not just for the next domain, but all following domains. Training on all such sequences of domains provides dramatically more `practice' for a base DG learner compared to existing approaches, thus improving performance on a true testing domain. This strategy can be instantiated for different base DG algorithms, but we focus on its application to the recently proposed Meta-Learning Domain generalization (MLDG). We show that for MLDG it leads to a simple to implement and fast algorithm that provides consistent performance improvement on a variety of DG benchmarks.
Apr-3-2020
- Country:
- Europe > United Kingdom
- England
- Surrey (0.04)
- Cambridgeshire > Cambridge (0.04)
- England
- Asia > Middle East
- Jordan (0.04)
- Europe > United Kingdom
- Genre:
- Research Report (0.50)
- Industry:
- Education > Educational Setting (0.35)
- Technology: