@inproceedings{f4141f19a4bb42c3a21354c6f9ae82ef,
title = "Concept Discovery for Fast Adaptation",
abstract = "The advances in deep learning have enabled machine learning methods to outperform human beings in various areas, but it remains a great challenge for a well-trained model to quickly adapt to a new task. One promising solution to realize this goal is through meta-learning, also known as learning to learn, which has achieved promising results in few-shot learning. However, current approaches are still enormously different from human beings' learning process, especially in the ability to extract structural and transferable knowledge. This drawback makes current meta-learning frameworks non-interpretable and hard to extend to more complex tasks. We tackle this problem by introducing concept discovery to the few-shot learning problem, where we achieve more effective adaptation by meta-learning the structure among the data features, leading to a composite representation of the data. Our proposed method Concept-Based Model-Agnostic Meta-Learning (COMAML) has been shown to achieve consistent improvements in the structured data for both synthesized datasets and real-world datasets.",
keywords = "Few-shot Learning, Graphical Model, Model Interpretability, Structure Discovery",
author = "Shengyu Feng and Hanghang Tong",
note = "Publisher Copyright: Copyright {\textcopyright} 2023 by SIAM.; 2023 SIAM International Conference on Data Mining, SDM 2023 ; Conference date: 27-04-2023 Through 29-04-2023",
year = "2023",
language = "English (US)",
series = "2023 SIAM International Conference on Data Mining, SDM 2023",
publisher = "Society for Industrial and Applied Mathematics Publications",
pages = "577--585",
booktitle = "2023 SIAM International Conference on Data Mining, SDM 2023",
address = "United States",
}