The University of Arizona
Map Home
Adjust height of sidebar
KMap

Topic:multi-task learning

multi-task learning

Since 2021, aggregated from related topics

About

    Multi-task learning is a machine learning technique where a model is trained to perform multiple tasks simultaneously, leveraging the shared underlying structures and patterns across tasks to improve overall performance. This approach is particularly useful when there is limited data available for each individual task or when tasks are related in some way. Multi-task learning has been applied in various fields such as natural language processing, computer vision, and genomics, among others. By training on multiple tasks at once, the model can learn to generalize better and make predictions that are more accurate and robust. Overall, multi-task learning is a powerful technique that can improve the efficiency and effectiveness of machine learning models by allowing them to leverage shared information across tasks.

Related Topics

People

View more people