基于模型稳定性的精确持续学习的进化NAS

Xiaocong Du, Zheng Li, Jingbo Sun, Frank Liu, Yu Cao
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引用次数: 3

摘要

持续学习,即从流数据中学习新知识而不忘记先前知识的能力,是动态学习系统的关键要求,特别是对于自动驾驶汽车和无人机等新兴边缘设备。然而,持续学习仍然面临着灾难性的遗忘问题。先前的研究表明,模型在持续学习中的性能不仅与学习算法有关,而且强烈依赖于继承模型,即持续学习开始的模型。继承模型的稳定性越好,灾难性遗忘越少,因此,继承模型的选择应慎重。受这一发现的启发,我们开发了一种强调继承模型稳定性的进化神经结构搜索(ENAS)算法,即ENAS- s。ENAS-S旨在为边缘设备的精确持续学习找到最佳架构。在CIFAR-10和CIFAR-100上,与手工制作的dnn相比,ENAS-S在从数据流学习时实现了具有较低灾难性遗忘和较小模型尺寸的竞争性架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary NAS in Light of Model Stability for Accurate Continual Learning
Continual learning, the capability to learn new knowledge from streaming data without forgetting the previous knowledge, is a critical requirement for dynamic learning systems, especially for emerging edge devices such as self-driving cars and drones. However, continual learning is still facing the catastrophic forgetting problem. Previous work illustrate that model performance on continual learning is not only related to the learning algorithms but also strongly dependent on the inherited model, i.e., the model where continual learning starts. The better stability of the inherited model, the less catastrophic forgetting and thus, the inherited model should be elaborately selected. Inspired by this finding, we develop an evolutionary neural architecture search (ENAS) algorithm that emphasizes the Stability of the inherited model, namely ENAS-S. ENAS-S aims to find optimal architectures for accurate continual learning on edge devices. On CIFAR-10 and CIFAR-100, we present that ENAS-S achieves competitive architectures with lower catastrophic forgetting and smaller model size when learning from a data stream, as compared with handcrafted DNNs.
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