NECVLGJul 29, 2019

Particle Swarm Optimisation for Evolving Deep Neural Networks for Image Classification by Evolving and Stacking Transferable Blocks

arXiv:1907.12659v215.459 citations
Originality Incremental advance
AI Analysis

This work addresses the efficiency problem in NAS for researchers and practitioners in image classification, offering a competitive but incremental improvement over existing methods.

The paper tackles the high computational cost of Neural Architecture Search (NAS) for designing CNN architectures by proposing EPSOCNN, a particle swarm optimization method that evolves and stacks transferable blocks, achieving state-of-the-art classification accuracy on CIFAR-10 while reducing parameters and computational cost compared to 13 competitors.

Deep Convolutional Neural Networks (CNNs) have been widely used in image classification tasks, but the process of designing CNN architectures is very complex, so Neural Architecture Search (NAS), automatically searching for optimal CNN architectures, has attracted more and more research interests. However, the computational cost of NAS is often too high to apply NAS on real-life applications. In this paper, an efficient particle swarm optimisation method named EPSOCNN is proposed to evolve CNN architectures inspired by the idea of transfer learning. EPSOCNN successfully reduces the computation cost by minimising the search space to a single block and utilising a small subset of the training set to evaluate CNNs during evolutionary process. Meanwhile, EPSOCNN also keeps very competitive classification accuracy by stacking the evolved block multiple times to fit the whole dataset. The proposed EPSOCNN algorithm is evaluated on CIFAR-10 dataset and compared with 13 peer competitors comprised of deep CNNs crafted by hand, learned by reinforcement learning methods and evolved by evolutionary computation approaches, which shows very promising results by outperforming all of the peer competitors with regard to the classification accuracy, number of parameters and the computational cost.

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