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A hybrid approach with optimization-based and metric-based meta-learner for few-shot learning

机译:一种基于优化和基于度量的元学习器的混合方法,用于几次学习

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摘要

Few-shot learning aims to learn classifiers for new classes with only a few training examples per class. Most existing few-shot learning approaches belong to either metric-based meta-learning or optimization-based meta-learning category, both of which have achieved successes in the simplified "k-shot N-way" image classification settings. Specifically, the optimization-based approaches train a meta-learner to predict the parameters of the task-specific classifiers. The task-specific classifiers are required to be homogeneous-structured to ease the parameter prediction, so the meta-learning approaches could only handle few-shot learning problems where the tasks share a uniform number of classes. The metric-based approaches learn one task-invariant metric for all the tasks. Even though the metric-learning approaches allow different numbers of classes, they require the tasks all coming from a similar domain such that there exists a uniform metric that could work across tasks. In this work, we propose a hybrid meta-learning model called Meta-Metric-Learner which combines the merits of both optimization- and metric-based approaches. Our meta-metric-learning approach consists of two components, a task-specific metric-based learner as a base model, and a meta-learner that learns and specifies the base model. Thus our model is able to handle flexible numbers of classes as well as generate more generalized metrics for classification across tasks. We test our approach in the standard "k-shot N-way" few-shot learning setting following previous works and a new realistic few-shot setting with flexible class numbers in both single-source form and multi-source form. Experiments show that our approach attains superior performance in all settings. (C) 2019 Elsevier B.V. All rights reserved.
机译:很少有的学习旨在学习新课程的分类器,每个课程仅提供一些训练示例。大多数现有的一次性学习方法都属于基于度量的元学习或基于优化的元学习类别,这两种方法均已在简化的“ k-shot N-way”图像分类设置中取得了成功。具体来说,基于优化的方法训练元学习器来预测任务特定分类器的参数。特定于任务的分类器需要采用同质结构以简化参数预测,因此元学习方法只能处理任务共享相同类数的少量学习问题。基于度量的方法为所有任务学习一个任务不变度量。尽管量度学习方法允许使用不同数量的类,但它们要求任务全部来自相似的领域,因此存在一个可以跨任务工作的统一量度。在这项工作中,我们提出了一种混合元学习模型,称为Meta-Metric-Learner,该模型结合了基于优化和基于度量的方法的优点。我们的元度量学习方法由两个部分组成,一个是基于任务的基于度量的学习者作为基础模型,另一个是用于学习和指定基础模型的元学习器。因此,我们的模型能够处理灵活的类数,并生成更通用的度量标准以用于跨任务分类。在先前的工作之后,我们在标准的“ k-shot N-way”少拍学习设置中测试了我们的方法,并在单源形式和多源形式中采用了灵活的类编号,从而在新的现实中实现了少拍设置。实验表明,我们的方法在所有设置下均具有出色的性能。 (C)2019 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2019年第15期|202-211|共10页
  • 作者单位

    Tsinghua Univ, Dept Automat, Beijing 100084, Peoples R China;

    Microsoft Res, Redmond, WA 98052 USA;

    IBM Corp, TJ Watson Res Ctr, New York, NY 10562 USA;

    IBM Corp, TJ Watson Res Ctr, New York, NY 10562 USA;

    Tsinghua Univ, Dept Automat, Beijing 100084, Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Few-shot learning; Meta-learning; Image classification; Meta-metric-learner;

    机译:少量学习;元学习;图像分类;元学习;
  • 入库时间 2022-08-18 04:20:37

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