Robust machine learning for multimodal multitask learning
Title: |
Robust machine learning for multimodal multitask learning |
DNr: |
Berzelius-2024-303 |
Project Type: |
LiU Berzelius |
Principal Investigator: |
Xuan-Son Vu <sonvx@cs.umu.se> |
Affiliation: |
Umeå universitet |
Duration: |
2024-08-28 – 2025-03-01 |
Classification: |
10201 |
Keywords: |
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Abstract
This project aims to design and implement robust learning and data-centric optimization techniques for advancing state-of-the-art machine learning algorithms where data is geographically distributed, sensitive, and large. Robust machine learning and data-centric optimization algorithms empower models through multi-level (local, global and hybrid) training, learning, and inference with data-centric optimization for scarce data and non-standard model settings. By creating unique features (e.g., decentralized training, learning and inference, fault-tolerant against failures and attacks, data-centric optimization, robustness), this project addresses the challenges in the following areas: robust learning; learning with large-data and multimodal settings; lack of theoretical knowledge to build manual models; computation efficient learning and optimization for obtaining more accurate and robust models with applications to constraint environments (i.e., legal search, healthcare systems) and edge infrastructures.