Linear scalarization, i.e., combining all loss functions by a weighted s...
This paper introduces the Fair Fairness Benchmark (), a
benchmarking fra...
Large language models (LLMs) have initiated a paradigm shift in transfer...
How can we learn effective node representations on textual graphs? Graph...
Contrastive loss has been increasingly used in learning representations ...
Despite recent advances in data-independent and deep-learning algorithms...
Domain adaptation aims to transfer the knowledge acquired by models trai...
Fairness in automated decision-making systems has gained increasing atte...
Multimodal learning considers learning from multi-modality data, aiming ...
Accurate vehicle type classification serves a significant role in the
in...
We introduce a new paradigm for immersed finite element and isogeometric...
Generative Adversarial Networks (GANs) have been widely applied in model...
Recently, with the continuous development of deep learning, the performa...
Federated learning (FL) provides an effective paradigm to train machine
...
Contrastive representation learning has gained much attention due to its...
The phenomenon of data distribution evolving over time has been observed...
The vast majority of existing algorithms for unsupervised domain adaptat...
Despite achieving state-of-the-art zero-shot performance, existing
visio...
Conditional contrastive learning frameworks consider the conditional sam...
Domain generalization asks for models trained on a set of training
envir...
Algorithmic decisions made by machine learning models in high-stakes dom...
Multi-task learning (MTL) aims to improve the generalization of several
...
Real-world applications of machine learning tools in high-stakes domains...
Models trained with offline data often suffer from continual distributio...
The main challenge for domain generalization (DG) is to overcome the
pot...
Out-of-distribution generalization is one of the key challenges when
tra...
Self-supervised learning is a form of unsupervised learning that leverag...
This paper introduces Relative Predictive Coding (RPC), a new contrastiv...
With the widespread deployment of large-scale prediction systems in
high...
From ancient to modern times, acoustic structures have been used to cont...
Many machine learning applications involve learning representations that...
Model-based reinforcement learning methods learn a dynamics model with r...
The success of supervised learning hinges on the assumption that the tra...
We study the problem of protecting information when learning with graph
...
Large-scale labeled training datasets have enabled deep neural networks ...
The goal of universal machine translation is to learn to translate betwe...
Since its inception, the neural estimation of mutual information (MI) ha...
Adversarial learning has demonstrated good performance in the unsupervis...
Approaches to continual learning aim to successfully learn a set of rela...
We propose a novel algorithm for learning fair representations that can
...
Feed-forward neural networks can be understood as a combination of an
in...
With the prevalence of machine learning in high-stakes applications,
esp...
With the prevalence of machine learning services, crowdsourced data
cont...
Due to the ability of deep neural nets to learn rich representations, re...
We consider peer review in a conference setting where there is typically...
We propose an end-to-end model based on convolutional and recurrent neur...
Strict partial order is a mathematical structure commonly seen in relati...
We propose a Frank-Wolfe (FW) solver to optimize the symmetric nonnegati...
While domain adaptation has been actively researched in recent years, mo...
We propose a probabilistic framework for domain adaptation that blends b...