Despite its astounding success in learning deeper multi-dimensional data, the performance of deep learning declines on new unseen tasks mainly due to its focus on same-distribution prediction. Moreover, deep learning is notorious for poor generalization from few samples. Meta-learning is a promising approach that addresses these issues by adapting to new tasks with few-shot datasets. This survey first briefly introduces meta-learning and then investigates state-of-the-art meta-learning methods and recent advances in: (I) metric-based, (II) memory-based, (III), and learning-based methods. Finally, current challenges and insights for future researches are discussed.
翻译:尽管在学习更深层次的多维数据方面取得了惊人的成功,但深层次的学习成绩在新的无形任务上却下降,这主要是因为它注重同一分布预测。此外,深层次的学习臭名昭著,因为少数样本的概括性差。元学习是一种很有希望的方法,通过适应新任务,以少量的数据集来解决这些问题。这项调查首先简要地介绍元学习,然后调查最新的元学习方法和最近在以下领域取得的进展:(一) 基于指标的、基于记忆的(二)基于记忆的(三)和基于学习的方法。最后,讨论了目前的挑战和对未来研究的洞察力。</s>