LGM-Net: Learning to Generate Matching Networks for Few-Shot Learning
Huaiyu Li; Weiming Dong; Xing Mei; Chongyang Ma; Feiyue Huang; Bao-Gang Hu
2019-06
会议名称36th International Conference on Machine Learning (ICML)
会议录名称International Conference on Machine Learning
页码3825-3834
会议日期2019-6
会议地点Long Beach, CA, USA
摘要

In this work, we propose a novel meta-learning approach for few-shot classification, which learns transferable prior knowledge across tasks and directly produces network parameters for similar unseen tasks with training samples. Our approach, called LGM-Net, includes two key modules, namely, TargetNet and MetaNet. The TargetNet module is a neural network for solving a specific task and the MetaNet module aims at learning to generate functional weights for TargetNet by observing training samples. We also present an intertask normalization strategy for the training process to leverage common information shared across different tasks. The experimental results on Omniglot and miniImageNet datasets demonstrate that LGM-Net can effectively adapt to similar unseen tasks and achieve competitive performance, and the results on synthetic datasets show that transferable prior knowledge is learned by the MetaNet module via mapping training data to functional weights. LGM-Net enables fast learning and adaptation since no further tuning steps are required compared to other metalearning approaches.

收录类别EI
七大方向——子方向分类机器学习
文献类型会议论文
条目标识符http://ir.ia.ac.cn/handle/173211/23908
专题多模态人工智能系统全国重点实验室_三维可视计算
作者单位1.National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences
2.University of Chinese Academy of Sciences
3.Snap Inc.
4.Kwai Inc.
5.Youtu Lab, Tencent
推荐引用方式
GB/T 7714
Huaiyu Li,Weiming Dong,Xing Mei,et al. LGM-Net: Learning to Generate Matching Networks for Few-Shot Learning[C],2019:3825-3834.
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