MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets

Liao P, Wang X, Jin Y, Du W (2025)
In: Computer Vision – ECCV 2024. Leonardis A, Ricci E, Roth S, Russakovsky O, Sattler T, Varol G (Eds); Lecture Notes in Computer Science. Cham: Springer Nature Switzerland: 18-35.

Sammelwerksbeitrag | Veröffentlicht | Englisch
 
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Herausgeber*in
Leonardis, Aleš; Ricci, Elisa; Roth, Stefan; Russakovsky, Olga; Sattler, Torsten; Varol, Gül
Abstract / Bemerkung
Deploying models across diverse devices demands tradeoffs among multiple objectives due to different resource constraints. Arguably, due to the small model trap problem in multi-objective neural architecture search (MO-NAS) based on a supernet, existing approaches may fail to maintain large models. Moreover, multi-tasking neural architecture search (MT-NAS) excels in handling multiple tasks simultaneously, but most existing efforts focus on tasks from the same dataset, limiting their practicality in real-world scenarios where multiple tasks may come from distinct datasets. To tackle the above challenges, we propose a Multi-Objective Evolutionary Multi-Tasking framework for NAS (MO-EMT-NAS) to achieve architectural knowledge transfer across tasks from different datasets while finding Pareto optimal architectures for multi-objectives, model accuracy and computational efficiency. To alleviate the small model trap issue, we introduce an auxiliary objective that helps maintain multiple larger models of similar accuracy. Moreover, the computational efficiency is further enhanced by parallelizing the training and validation of the weight-sharing-based supernet. Experimental results on seven datasets with two, three, and four task combinations show that MO-EMT-NAS achieves a better minimum classification error while being able to offer flexible trade-offs between model performance and complexity, compared to the state-of-the-art single-objective MT-NAS algorithms. The runtime of MO-EMT-NAS is reduced by 59.7% to 77.7%, compared to the corresponding multi-objective single-task approaches.
Erscheinungsjahr
2025
Buchtitel
Computer Vision – ECCV 2024
Serientitel
Lecture Notes in Computer Science
Seite(n)
18-35
Konferenz
Computer Vision – ECCV 2024, 18th European Conference
Konferenzort
Milan, Italy
Konferenzdatum
2024-09-29 – 2024-10-04
ISBN
978-3-031-72896-9
eISBN
978-3-031-72897-6
ISSN
0302-9743
eISSN
1611-3349
Page URI
https://pub.uni-bielefeld.de/record/2999349

Zitieren

Liao P, Wang X, Jin Y, Du W. MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets. In: Leonardis A, Ricci E, Roth S, Russakovsky O, Sattler T, Varol G, eds. Computer Vision – ECCV 2024. Lecture Notes in Computer Science. Cham: Springer Nature Switzerland; 2025: 18-35.
Liao, P., Wang, X., Jin, Y., & Du, W. (2025). MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets. In A. Leonardis, E. Ricci, S. Roth, O. Russakovsky, T. Sattler, & G. Varol (Eds.), Lecture Notes in Computer Science. Computer Vision – ECCV 2024 (pp. 18-35). Cham: Springer Nature Switzerland. https://doi.org/10.1007/978-3-031-72897-6_2
Liao, Peng, Wang, Xilu, Jin, Yaochu, and Du, Wenli. 2025. “MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets”. In Computer Vision – ECCV 2024, ed. Aleš Leonardis, Elisa Ricci, Stefan Roth, Olga Russakovsky, Torsten Sattler, and Gül Varol, 18-35. Lecture Notes in Computer Science. Cham: Springer Nature Switzerland.
Liao, P., Wang, X., Jin, Y., and Du, W. (2025). “MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets” in Computer Vision – ECCV 2024, Leonardis, A., Ricci, E., Roth, S., Russakovsky, O., Sattler, T., and Varol, G. eds. Lecture Notes in Computer Science (Cham: Springer Nature Switzerland), 18-35.
Liao, P., et al., 2025. MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets. In A. Leonardis, et al., eds. Computer Vision – ECCV 2024. Lecture Notes in Computer Science. Cham: Springer Nature Switzerland, pp. 18-35.
P. Liao, et al., “MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets”, Computer Vision – ECCV 2024, A. Leonardis, et al., eds., Lecture Notes in Computer Science, Cham: Springer Nature Switzerland, 2025, pp.18-35.
Liao, P., Wang, X., Jin, Y., Du, W.: MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets. In: Leonardis, A., Ricci, E., Roth, S., Russakovsky, O., Sattler, T., and Varol, G. (eds.) Computer Vision – ECCV 2024. Lecture Notes in Computer Science. p. 18-35. Springer Nature Switzerland, Cham (2025).
Liao, Peng, Wang, Xilu, Jin, Yaochu, and Du, Wenli. “MO-EMT-NAS: Multi-objective Continuous Transfer of Architectural Knowledge Between Tasks from Different Datasets”. Computer Vision – ECCV 2024. Ed. Aleš Leonardis, Elisa Ricci, Stefan Roth, Olga Russakovsky, Torsten Sattler, and Gül Varol. Cham: Springer Nature Switzerland, 2025. Lecture Notes in Computer Science. 18-35.
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