Despite the significant advances achieved in Artificial Neural Networks (ANNs), their design process remains notoriously tedious, depending primarily on intuition, experience and trial-and-error. This human-dependent process is often time-consuming and prone to errors. Furthermore, the models are generally bound to their training contexts, with no considerations of changes to their surrounding environments. Continual adaptability and automation of neural networks is of paramount importance to several domains where model accessibility is limited after deployment (e.g IoT devices, self-driving vehicles, etc). Additionally, even accessible models require frequent maintenance post-deployment to overcome issues such as Concept/Data Drift, which can be cumbersome and restrictive. The current state of the art on adaptive ANNs is still a premature area of research; nevertheless, Neural Architecture Search (NAS), a form of AutoML, and Continual Learning (CL) have recently gained an increasing momentum in the Deep Learning research field, aiming to provide more robust and adaptive ANN development frameworks. This study is the first extensive review on the intersection between AutoML and CL, outlining research directions for the different methods that can facilitate full automation and lifelong plasticity in ANNs.
翻译:尽管人工神经网络取得了显著进展,但其设计过程仍然臭名昭著地乏味,主要取决于直觉、经验、试探和试探。这一依赖人类的过程往往耗费时间,容易出错。此外,模型一般都与培训环境有关,不考虑周围环境的变化。神经网络的持续适应和自动化对于一些在部署后示范无障碍有限的领域(如IoT装置、自驾驶车辆等)至关重要。此外,甚至连无障碍模型也需要经常的部署后维护,以克服概念/Data Drift等可能繁琐和限制性的问题。适应性ANNT的艺术现状仍然是一个不成熟的研究领域;然而,神经结构搜索(NAS)是一种自动ML和持续学习的形式,最近在深层学习研究领域获得了越来越大的势头,目的是提供更有力和适应性的ANNE开发框架。这项研究是对自动移动和CL之间的交叉点的首次广泛审查,概述了可促进自动化和塑料全年性的各种方法的研究方向。