Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor

Sun Y, Wang H, Xue B, Jin Y, Yen GG, Zhang M (2020)
IEEE Transactions on Evolutionary Computation 24(2): 350-364.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
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Autor*in
Sun, Yanan; Wang, Handing; Xue, Bing; Jin, YaochuUniBi ; Yen, Gary G.; Zhang, Mengjie
Abstract / Bemerkung
Convolutional neural networks (CNNs) have shown remarkable performance in various real-world applications. Unfortunately, the promising performance of CNNs can be achieved only when their architectures are optimally constructed. The architectures of state-of-the-art CNNs are typically handcrafted with extensive expertise in both CNNs and the investigated data, which consequently hampers the widespread adoption of CNNs for less experienced users. Evolutionary deep learning (EDL) is able to automatically design the best CNN architectures without much expertise. However, the existing EDL algorithms generally evaluate the fitness of a new architecture by training from scratch, resulting in the prohibitive computational cost even operated on high-performance computers. In this paper, an end-to-end offline performance predictor based on the random forest is proposed to accelerate the fitness evaluation in EDL. The proposed performance predictor shows the promising performance in term of the classification accuracy and the consumed computational resources when compared with 18 state-of-the-art peer competitors by integrating into an existing EDL algorithm as a case study. The proposed performance predictor is also compared with the other two representatives of existing performance predictors. The experimental results show the proposed performance predictor not only significantly speeds up the fitness evaluations but also achieves the best prediction among the peer performance predictors.
Erscheinungsjahr
2020
Zeitschriftentitel
IEEE Transactions on Evolutionary Computation
Band
24
Ausgabe
2
Seite(n)
350-364
ISSN
1089-778X
eISSN
1941-0026
Page URI
https://pub.uni-bielefeld.de/record/2978406

Zitieren

Sun Y, Wang H, Xue B, Jin Y, Yen GG, Zhang M. Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor. IEEE Transactions on Evolutionary Computation. 2020;24(2):350-364.
Sun, Y., Wang, H., Xue, B., Jin, Y., Yen, G. G., & Zhang, M. (2020). Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor. IEEE Transactions on Evolutionary Computation, 24(2), 350-364. https://doi.org/10.1109/TEVC.2019.2924461
Sun, Yanan, Wang, Handing, Xue, Bing, Jin, Yaochu, Yen, Gary G., and Zhang, Mengjie. 2020. “Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor”. IEEE Transactions on Evolutionary Computation 24 (2): 350-364.
Sun, Y., Wang, H., Xue, B., Jin, Y., Yen, G. G., and Zhang, M. (2020). Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor. IEEE Transactions on Evolutionary Computation 24, 350-364.
Sun, Y., et al., 2020. Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor. IEEE Transactions on Evolutionary Computation, 24(2), p 350-364.
Y. Sun, et al., “Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor”, IEEE Transactions on Evolutionary Computation, vol. 24, 2020, pp. 350-364.
Sun, Y., Wang, H., Xue, B., Jin, Y., Yen, G.G., Zhang, M.: Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor. IEEE Transactions on Evolutionary Computation. 24, 350-364 (2020).
Sun, Yanan, Wang, Handing, Xue, Bing, Jin, Yaochu, Yen, Gary G., and Zhang, Mengjie. “Surrogate-Assisted Evolutionary Deep Learning Using an End-to-End Random Forest-Based Performance Predictor”. IEEE Transactions on Evolutionary Computation 24.2 (2020): 350-364.

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