JSAI2023

Presentation information

Organized Session

Organized Session » OS-1

[4I2-OS-1a] AutoML(自動機械学習)

Fri. Jun 9, 2023 12:00 PM - 1:40 PM Room I (B2)

オーガナイザ:大西 正輝、日野 英逸

12:20 PM - 12:40 PM

[4I2-OS-1a-02] Evolutionary Designing CNN Architectures Using The Thermodynamical Genetic Algorithm

〇Naoki Koizumi1, Ryoma Okamoto2, Naoki Mori1, Makoto Okada1 (1. Osaka Metropolitan University, 2. Osaka Prefecture University)

Keywords:Convolutional Neural Network, Neural Architecture Search , Genetic Algorithm, Thermodynamical Genetic Algorithm, ambiguous figures

Convolutional Neural Network (CNN) is one of useful methods for image recognition.
For the task of setting hyperparameters becoming huge and complex with the development of CNN, the evolutionary acquisition approach to CNN architecture using Genetic Algorithm (GA), a method to efficiently optimize the problem based on evolutionary dynamics, has attracted much attention.
In this study, we propose Thermodynamical Genetic Algorithmic Convolutional Neural Networks (tdgaCNN), which is a CNN architectural search method based on Thermodynamic Genetic Algorithm (TDGA), one of the methods for GA.
This method achieves better CNN architecture acquisition by emphasizing the importance of maintaining population diversity during the GA search phase.
The effectiveness of the proposed method is confirmed by an image benchmark dataset.
We also apply the proposed method to classification tasks among trompe l'oeil as typical images giving multiple views, landscapes and portraits.

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