2022
DOI: 10.1093/jigpal/jzac022
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PBIL for optimizing inception module in convolutional neural networks

Abstract: Inception module is one of the most used variants in convolutional neural networks. It has a large portfolio of success cases in computer vision. In the past years, diverse inception flavours, differing in the number of branches, the size and the number of the kernels, have appeared in the scientific literature. They are proposed based on the expertise of the practitioners without any optimization process. In this work, an implementation of population-based incremental learning is proposed for automatic optimi… Show more

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“…Evolutionary Neural Networks (ENN) represent an innovative approach to enhancing the performance of NN while concurrently addressing environmental concerns related to the carbon footprint, [14]. ENN applies evolutionary algorithms to optimize NN architectures.…”
Section: Innovation In Neural Networkmentioning
confidence: 99%
“…Evolutionary Neural Networks (ENN) represent an innovative approach to enhancing the performance of NN while concurrently addressing environmental concerns related to the carbon footprint, [14]. ENN applies evolutionary algorithms to optimize NN architectures.…”
Section: Innovation In Neural Networkmentioning
confidence: 99%