A General Class of Transfer Learning Regression without Implementation Cost
Minami, Shunya, Liu, Song, Wu, Stephen, Fukumizu, Kenji, Yoshida, Ryo
We propose a novel framework that unifies and extends existing methods of transfer learning (TL) for regression. To bridge a pretrained source model to the model on a target task, we introduce a density-ratio reweighting function, which is estimated through the Bayesian framework with a specific prior distribution. By changing two intrinsic hyperparameters and the choice of the density-ratio model, the proposed method can integrate three popular methods of TL: TL based on cross-domain similarity regularization, a probabilistic TL using the density-ratio estimation, and fine-tuning of pretrained neural networks. Moreover, the proposed method can benefit from its simple implementation without any additional cost; the model can be fully trained using off-the-shelf libraries for supervised learning in which the original output variable is simply transformed to a new output. We demonstrate its simplicity, generality, and applicability using various real data applications.
Jun-23-2020
- Country:
- Asia > Japan (0.04)
- North America > United States
- Connecticut > New Haven County > Wallingford (0.04)
- Europe > United Kingdom
- England > Cambridgeshire > Cambridge (0.04)
- Genre:
- Research Report (0.63)