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Learning to Forget for Meta-Learning via Task-and-Layer-Wise Attenuation

Authors
Baik, SungyongOh, JunghoonHong, SeokilLee, Kyoung Mu
Issue Date
Nov-2022
Publisher
IEEE COMPUTER SOC
Keywords
Task analysis; Optimization; Adaptation models; Attenuation; Knowledge engineering; Visualization; Neural networks; Meta-learning; few-shot learning; MAML; reinforcement learning; visual tracking
Citation
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, v.44, no.11, pp.7718 - 7730
Indexed
SCIE
SCOPUS
Journal Title
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE
Volume
44
Number
11
Start Page
7718
End Page
7730
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/187270
DOI
10.1109/TPAMI.2021.3102098
ISSN
0162-8828
Abstract
Few-shot learning is an emerging yet challenging problem in which the goal is to achieve generalization from only few examples. Meta-learning tackles few-shot learning via the learning of prior knowledge shared across tasks and using it to learn new tasks. One of the most representative meta-learning algorithms is the model-agnostic meta-learning (MAML), which formulates prior knowledge as a common initialization, a shared starting point from where a learner can quickly adapt to unseen tasks. However, forcibly sharing an initialization can lead to conflicts among tasks and the compromised (undesired by tasks) location on optimization landscape, thereby hindering task adaptation. Furthermore, the degree of conflict is observed to vary not only among the tasks but also among the layers of a neural network. Thus, we propose task-and-layer-wise attenuation on the compromised initialization to reduce its adverse influence on task adaptation. As attenuation dynamically controls (or selectively forgets) the influence of the compromised prior knowledge for a given task and each layer, we name our method Learn to Forget (L2F). Experimental results demonstrate that the proposed method greatly improves the performance of the state-of-the-art MAML-based frameworks across diverse domains: few-shot classification, cross-domain few-shot classification, regression, reinforcement learning, and visual tracking.
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