使用双层进化方法在CNN架构设计中嵌入信道修剪。

IF 2.5 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Supercomputing Pub Date : 2023-04-25 DOI:10.1007/s11227-023-05273-5
Hassen Louati, Ali Louati, Slim Bechikh, Elham Kariri
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引用次数: 1

摘要

通过利用深度神经网络,在机器学习和计算机视觉方面取得了显著进展。在这些网络中最有利的是卷积神经网络(CNN)。它已被用于模式识别、医学诊断和信号处理等领域。事实上,对于这些网络来说,选择超参数的挑战是至关重要的。这背后的原因是,随着层数的增加,搜索空间呈指数级增长。此外,所有已知的经典和进化修剪算法都需要经过训练或构建的架构作为输入。在设计阶段,他们都没有考虑修剪的过程。为了评估创建的任何架构的有效性和效率,必须在传输数据集和计算分类错误之前对通道进行修剪。例如,在修剪之后,在分类方面中等质量的架构可以转变为既轻又准确的架构,反之亦然。存在着无数可能发生的潜在场景,这促使我们为整个过程开发了一种双层优化方法。上层涉及生成体系结构,而下层优化信道修剪。进化算法(EA)已被证明在双层优化中是有效的,这使我们在本研究中采用基于协同进化迁移的算法作为双层架构优化问题的搜索引擎。我们提出的方法CNN-D-P(双层CNN设计和修剪)在广泛使用的图像分类基准数据集CIFAR-10、CIFAR-100和ImageNet上进行了测试。我们提出的技术通过一组关于相关最先进架构的比较测试进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Embedding channel pruning within the CNN architecture design using a bi-level evolutionary approach.

Remarkable advancements have been achieved in machine learning and computer vision through the utilization of deep neural networks. Among the most advantageous of these networks is the convolutional neural network (CNN). It has been used in pattern recognition, medical diagnosis, and signal processing, among other things. Actually, for these networks, the challenge of choosing hyperparameters is of utmost importance. The reason behind this is that as the number of layers rises, the search space grows exponentially. In addition, all known classical and evolutionary pruning algorithms require a trained or built architecture as input. During the design phase, none of them consider the process of pruning. In order to assess the effectiveness and efficiency of any architecture created, pruning of channels must be carried out before transmitting the dataset and computing classification errors. For instance, following pruning, an architecture of medium quality in terms of classification may transform into an architecture that is both highly light and accurate, and vice versa. There exist countless potential scenarios that could occur, which prompted us to develop a bi-level optimization approach for the entire process. The upper level involves generating the architecture while the lower level optimizes channel pruning. Evolutionary algorithms (EAs) have proven effective in bi-level optimization, leading us to adopt the co-evolutionary migration-based algorithm as a search engine for our bi-level architectural optimization problem in this research. Our proposed method, CNN-D-P (bi-level CNN design and pruning), was tested on the widely used image classification benchmark datasets, CIFAR-10, CIFAR-100 and ImageNet. Our suggested technique is validated by means of a set of comparison tests with regard to relevant state-of-the-art architectures.

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来源期刊
Journal of Supercomputing
Journal of Supercomputing 工程技术-工程:电子与电气
CiteScore
6.30
自引率
12.10%
发文量
734
审稿时长
13 months
期刊介绍: The Journal of Supercomputing publishes papers on the technology, architecture and systems, algorithms, languages and programs, performance measures and methods, and applications of all aspects of Supercomputing. Tutorial and survey papers are intended for workers and students in the fields associated with and employing advanced computer systems. The journal also publishes letters to the editor, especially in areas relating to policy, succinct statements of paradoxes, intuitively puzzling results, partial results and real needs. Published theoretical and practical papers are advanced, in-depth treatments describing new developments and new ideas. Each includes an introduction summarizing prior, directly pertinent work that is useful for the reader to understand, in order to appreciate the advances being described.
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