Litcius/Paper detail

A survey of deep meta-learning

Mike Huisman, Jan N. van Rijn, Aske Plaat

2021Artificial Intelligence Review358 citationsDOIOpen Access PDF

Abstract

Abstract Deep neural networks can achieve great successes when presented with large data sets and sufficient computational resources. However, their ability to learn new concepts quickly is limited. Meta-learning is one approach to address this issue, by enabling the network to learn how to learn. The field of Deep Meta-Learning advances at great speed, but lacks a unified, in-depth overview of current techniques. With this work, we aim to bridge this gap. After providing the reader with a theoretical foundation, we investigate and summarize key methods, which are categorized into (i) metric-, (ii) model-, and (iii) optimization-based techniques. In addition, we identify the main open challenges, such as performance evaluations on heterogeneous benchmarks, and reduction of the computational costs of meta-learning.

Topics & Concepts

Computer scienceBridge (graph theory)Key (lock)Field (mathematics)Artificial neural networkArtificial intelligenceData scienceReduction (mathematics)Machine learningOpen researchComputational modelDeep neural networksDeep learningBig dataCurrent (fluid)Machine Learning and Data ClassificationDomain Adaptation and Few-Shot LearningAdvanced Neural Network Applications