Domain adaptation (DA) benefits from the rigorous theoretical works that...
Layer-wise model fusion via optimal transport, named OTFusion, applies s...
High-dimensional observations are a major challenge in the application o...
Approximate inference in deep Bayesian networks exhibits a dilemma of ho...
Mini-batch optimal transport (m-OT) has been successfully used in practi...
Choosing a proper set of kernel functions is an important problem in lea...
Relational regularized autoencoder (RAE) is a framework to learn the
dis...
Unveiling face images of a subject given his/her high-level representati...
Sliced-Wasserstein distance (SWD) and its variation, Max Sliced-Wasserst...
We provide a computational complexity analysis for the Sinkhorn algorith...
We propose a novel approach to the problem of multilevel clustering, whi...
Many real-world sequential decision-making problems can be formulated as...
This paper studies how to efficiently learn an optimal latent variable m...
Structured high-cardinality data arises in many domains, and poses a maj...
We explore a framework called boosted Markov networks to combine the lea...
Learning and understanding the typical patterns in the daily activities ...
Using the theory of group action, we first introduce the concept of the
...