When Meta-Learning Meets Online and Continual Learning: A Survey
November 09, 2023 Β· The Cartographer Β· π IEEE Transactions on Pattern Analysis and Machine Intelligence
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"Title-pattern auto-detect: When Meta-Learning Meets Online and Continual Learning: A Survey"
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Authors
Jaehyeon Son, Soochan Lee, Gunhee Kim
arXiv ID
2311.05241
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
24
Venue
IEEE Transactions on Pattern Analysis and Machine Intelligence
Last Checked
1 day ago
Abstract
Over the past decade, deep neural networks have demonstrated significant success using the training scheme that involves mini-batch stochastic gradient descent on extensive datasets. Expanding upon this accomplishment, there has been a surge in research exploring the application of neural networks in other learning scenarios. One notable framework that has garnered significant attention is meta-learning. Often described as "learning to learn," meta-learning is a data-driven approach to optimize the learning algorithm. Other branches of interest are continual learning and online learning, both of which involve incrementally updating a model with streaming data. While these frameworks were initially developed independently, recent works have started investigating their combinations, proposing novel problem settings and learning algorithms. However, due to the elevated complexity and lack of unified terminology, discerning differences between the learning frameworks can be challenging even for experienced researchers. To facilitate a clear understanding, this paper provides a comprehensive survey that organizes various problem settings using consistent terminology and formal descriptions. By offering an overview of these learning paradigms, our work aims to foster further advancements in this promising area of research.
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