Aligning learning progress across tasks through adaptive group-based task interactions to improve overall multi-task performance while maintaining computational efficiency.
The core message of this article is to propose a novel multi-task learning method called Multi-Task Learning via Robust Regularized Clustering (MTLRRC) that can simultaneously perform robust task clustering and outlier task detection.
Joint-Task Regularization (JTR) leverages cross-task relationships to simultaneously regularize all tasks in a single joint-task latent space, improving learning when data is not fully labeled for all tasks.