Gradient-Based Neural Architecture Search: A Comprehensive Evaluation

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Sarwat Ali, M. Arif Wani
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Abstract

One of the challenges in deep learning involves discovering the optimal architecture for a specific task. This is effectively tackled through Neural Architecture Search (NAS). Neural Architecture Search encompasses three prominent approaches—reinforcement learning, evolutionary algorithms, and gradient descent—that have demonstrated noteworthy potential in identifying good candidate architectures. However, approaches based on reinforcement learning and evolutionary algorithms often necessitate extensive computational resources, requiring hundreds of GPU days or more. Therefore, we confine this work to a gradient-based approach due to its lower computational resource demands. Our objective encompasses identifying the optimal gradient-based NAS method and pinpointing opportunities for future enhancements. To achieve this, a comprehensive evaluation of the use of four major Gradient descent-based architecture search methods for discovering the best neural architecture for image classification tasks is provided. An overview of these gradient-based methods, i.e., DARTS, PDARTS, Fair DARTS and Att-DARTS, is presented. A theoretical comparison, based on search spaces, continuous relaxation strategy and bi-level optimization, for deriving the best neural architecture is then provided. The strong and weak features of these methods are also listed. Experimental results for comparing the error rate and computational cost of these gradient-based methods are analyzed. These experiments involved using bench marking datasets CIFAR-10, CIFAR-100 and ImageNet. The results show that PDARTS is better and faster among the examined methods, making it a potent candidate for automating Neural Architecture Search. By effectively conducting a comparative analysis, our research provides valuable insights and future research directions to address the criticism and gaps in the literature.
基于梯度的神经结构搜索:一个综合评价
深度学习的挑战之一是为特定任务找到最佳架构。通过神经结构搜索(NAS)可以有效地解决这个问题。神经架构搜索包含三种突出的方法——强化学习、进化算法和梯度下降——它们在识别好的候选架构方面显示出了显著的潜力。然而,基于强化学习和进化算法的方法通常需要大量的计算资源,需要数百天或更长时间的GPU。因此,由于其较低的计算资源需求,我们将这项工作限制为基于梯度的方法。我们的目标包括确定最佳的基于梯度的NAS方法,并确定未来增强的机会。为了实现这一目标,综合评估了四种主要的基于梯度下降的结构搜索方法的使用,以发现图像分类任务的最佳神经结构。概述了这些基于梯度的方法,即dart、pdart、Fair dart和at - dart。在此基础上,对基于搜索空间、连续松弛策略和双级优化的神经网络结构进行了理论比较。并列举了这些方法的优缺点。实验结果比较了这些基于梯度的方法的错误率和计算成本。这些实验涉及使用基准测试数据集CIFAR-10, CIFAR-100和ImageNet。结果表明,PDARTS算法是一种性能较好、速度较快的算法,是神经结构搜索自动化的有力候选算法。通过有效的比较分析,我们的研究为解决文献中的批评和空白提供了有价值的见解和未来的研究方向。
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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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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