Trustworthy deployment of deep learning medical imaging models into
real...
Although deep learning (DL) models have shown great success in many medi...
We propose a hierarchically structured variational inference model for
a...
We propose an analysis in fair learning that preserves the utility of th...
Large, annotated datasets are not widely available in medical image anal...
We consider a fair representation learning perspective, where optimal
pr...
We derive a novel information-theoretic analysis of the generalization
p...
A crucial aspect in reliable machine learning is to design a deployable
...
Multi-source domain adaptation aims at leveraging the knowledge from mul...
Domain adaptation (DA) aims to transfer discriminative features learned ...
We reveal the incoherence between the widely-adopted empirical domain
ad...
Generalizing knowledge to unseen domains, where data and labels are
unav...
Domain Adaptation aiming to learn a transferable feature between differe...
In this paper, we proposed a unified and principled method for both quer...
Vanilla CNNs, as uncalibrated classifiers, suffer from classifying
out-o...
Multitask learning aims at solving a set of related tasks simultaneously...
Lifelong learning can be viewed as a continuous transfer learning proced...
Calibrating the confidence of supervised learning models is important fo...