In this paper, we study the setting in which data owners train machine
l...
Retrieval-based language models (LMs) have demonstrated improved
interpr...
Data valuation is critical in machine learning, as it helps enhance mode...
Fine-tuning a language model on a new domain is standard practice for do...
Federated learning allows distributed users to collaboratively train a m...
Gradient inversion attack (or input recovery from gradient) is an emergi...
Data auditing is a process to verify whether certain data have been remo...
Missing value imputation is a challenging and well-researched topic in d...
To address the issue that deep neural networks (DNNs) are vulnerable to ...
An unsolved challenge in distributed or federated learning is to effecti...
How can multiple distributed entities collaboratively train a shared dee...
Detecting cerebral aneurysms is an important clinical task of brain comp...
This paper attempts to answer the question whether neural network prunin...
Segmentation of pancreas is important for medical image analysis, yet it...