Publications by authors named "You-Wei Luo"

As a crucial step toward real-world learning scenarios with changing environments, dataset shift theory and invariant representation learning algorithm have been extensively studied to relax the identical distribution assumption in classical learning setting. Among the different assumptions on the essential of shifting distributions, generalized label shift (GLS) is the latest developed one which shows great potential to deal with the complex factors within the shift. In this paper, we aim to explore the limitations of current dataset shift theory and algorithm, and further provide new insights by presenting a comprehensive understanding of GLS.

View Article and Find Full Text PDF
Article Synopsis
  • Invariant representation learning for unsupervised domain adaptation (UDA) aims to create a model that generalizes well across different domains without assuming identical distributions for training and test data.
  • Recent interest has grown in understanding the connection between transferability (how well knowledge transfers between tasks) and discriminability (how well functions distinguish between categories), but theoretical insights into these relationships are still lacking.
  • The authors analyze these concepts from a geometric viewpoint, develop optimization-friendly principles, and propose a new model that improves transferability and discriminability, supported by experimental validation.
View Article and Find Full Text PDF

As a fundamental manner for learning and cognition, transfer learning has attracted widespread attention in recent years. Typical transfer learning tasks include unsupervised domain adaptation (UDA) and few-shot learning (FSL), which both attempt to sufficiently transfer discriminative knowledge from the training environment to the test environment to improve the model's generalization performance. Previous transfer learning methods usually ignore the potential conditional distribution shift between environments.

View Article and Find Full Text PDF

Unsupervised domain adaptation is effective in leveraging rich information from a labeled source domain to an unlabeled target domain. Though deep learning and adversarial strategy made a significant breakthrough in the adaptability of features, there are two issues to be further studied. First, hard-assigned pseudo labels on the target domain are arbitrary and error-prone, and direct application of them may destroy the intrinsic data structure.

View Article and Find Full Text PDF

Image set recognition has been widely applied in many practical problems like real-time video retrieval and image caption tasks. Due to its superior performance, it has grown into a significant topic in recent years. However, images with complicated variations, e.

View Article and Find Full Text PDF