Abstract
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.
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Gharoun, H., Momenifar, F., Chen, F., & Gandomi, A. H. (2024). Meta-learning Approaches for Few-Shot Learning: A Survey of Recent Advances. ACM Computing Surveys, 56(12). https://doi.org/10.1145/3659943
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