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Resource-Efficient Multi-Task Deep Learning Using a Multi-Path Networkopen access

Authors
Park, S.Lee, J.Kim, Eunwoo
Issue Date
2022
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
Computer architecture; Costs; Deep learning; Interference; Knowledge engineering; multi-path network; Multi-task learning; Multitasking; resource-efficient learning; Task analysis
Citation
IEEE Access, v.10, pp 32889 - 32899
Pages
11
Journal Title
IEEE Access
Volume
10
Start Page
32889
End Page
32899
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/61899
DOI
10.1109/ACCESS.2022.3161622
ISSN
2169-3536
Abstract
Multi-task learning (MTL) improves learning efficiency compared to the single-task counterpart in that it performs multiple tasks at the same time. Due to the nature, it can achieve generalized performance as well as alleviate overfitting. However, it does not efficiently perform resource-aware inference from a single trained architecture. To address the issue, we aim to build a learning framework that minimizes the cost to infer tasks under different memory budgets. To this end, we propose a multi-path network with a self-auxiliary learning strategy. The multi-path structure contains task-specific paths in a backbone network, where a lower-level path predicts earlier with a smaller number of parameters. To alleviate the performance degradation from earlier predictions, a self-auxiliary learning strategy is presented. The self-auxiliary tasks convey task-specific knowledge to the main tasks to compensate for the performance leak. We evaluate the proposed method on an extensive set of multi-task learning scenarios, including multiple tasks learning, hierarchical learning, and curriculum learning. The proposed method outperforms existing multi-task learning competitors for most scenarios about by a margin of 1% ~ 2% accuracy on average while consuming 30% ~ 60% smaller computational cost. Author
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소프트웨어대학 (소프트웨어학부)
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