Unleashing the Power of Multi-Task Learning: A Comprehensive Survey Spanning Traditional, Deep, and Pretrained Foundation Model Eras
Jun Yu, Yutong Dai, Xiaokang Liu, Jin Huang, Yishan Shen, Ke Zhang,, Rong Zhou, Eashan Adhikarla, Wenxuan Ye, Yixin Liu, Zhaoming Kong, Kai Zhang,, Yilong Yin, Vinod Namboodiri, Brian D. Davison, Jason H. Moore, Yong Chen

TL;DR
This survey comprehensively reviews the evolution of multi-task learning (MTL) from traditional methods to modern pretrained foundation models, highlighting its benefits, technical developments, and future research directions across various fields.
Contribution
It categorizes MTL techniques into five key areas, discusses recent advances like task-promptable training, and provides a broad overview from 1997 to 2023, addressing challenges and future opportunities.
Findings
MTL enhances performance and generalizability across domains.
Recent trends include task-promptable and task-agnostic training.
The survey identifies future research directions in MTL.
Abstract
MTL is a learning paradigm that effectively leverages both task-specific and shared information to address multiple related tasks simultaneously. In contrast to STL, MTL offers a suite of benefits that enhance both the training process and the inference efficiency. MTL's key advantages encompass streamlined model architecture, performance enhancement, and cross-domain generalizability. Over the past twenty years, MTL has become widely recognized as a flexible and effective approach in various fields, including CV, NLP, recommendation systems, disease prognosis and diagnosis, and robotics. This survey provides a comprehensive overview of the evolution of MTL, encompassing the technical aspects of cutting-edge methods from traditional approaches to deep learning and the latest trend of pretrained foundation models. Our survey methodically categorizes MTL techniques into five key areas:…
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Taxonomy
TopicsMachine Learning in Healthcare · Domain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications
MethodsSparse Evolutionary Training
