IEEE Trans Pattern Anal Mach Intell. 2022 Sep;44(9):5149-5169. doi: 10.1109/TPAMI.2021.3079209. Epub 2022 Aug 4.
The field of meta-learning, or learning-to-learn, has seen a dramatic rise in interest in recent years. Contrary to conventional approaches to AI where tasks are solved from scratch using a fixed learning algorithm, meta-learning aims to improve the learning algorithm itself, given the experience of multiple learning episodes. This paradigm provides an opportunity to tackle many conventional challenges of deep learning, including data and computation bottlenecks, as well as generalization. This survey describes the contemporary meta-learning landscape. We first discuss definitions of meta-learning and position it with respect to related fields, such as transfer learning and hyperparameter optimization. We then propose a new taxonomy that provides a more comprehensive breakdown of the space of meta-learning methods today. We survey promising applications and successes of meta-learning such as few-shot learning and reinforcement learning. Finally, we discuss outstanding challenges and promising areas for future research.
元学习(或学习如何学习)领域近年来引起了极大的关注。与传统的人工智能方法不同,传统的人工智能方法是使用固定的学习算法从零开始解决任务,元学习旨在改进学习算法本身,给定多次学习经历的经验。这种范例为解决深度学习的许多传统挑战提供了机会,包括数据和计算瓶颈以及泛化问题。本调查描述了当代元学习的现状。我们首先讨论了元学习的定义,并将其与相关领域(例如迁移学习和超参数优化)进行了定位。然后,我们提出了一种新的分类法,该分类法更全面地分解了当今元学习方法的空间。我们调查了元学习的有前途的应用和成功案例,例如少样本学习和强化学习。最后,我们讨论了悬而未决的挑战和未来研究的有前途的领域。