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Prototype Propagation Networks (PPN) for Weakly-supervised Few-shot Learning on Category Graph (1905.04042v2)

Published 10 May 2019 in cs.LG, cs.CV, cs.NE, and stat.ML

Abstract: A variety of machine learning applications expect to achieve rapid learning from a limited number of labeled data. However, the success of most current models is the result of heavy training on big data. Meta-learning addresses this problem by extracting common knowledge across different tasks that can be quickly adapted to new tasks. However, they do not fully explore weakly-supervised information, which is usually free or cheap to collect. In this paper, we show that weakly-labeled data can significantly improve the performance of meta-learning on few-shot classification. We propose prototype propagation network (PPN) trained on few-shot tasks together with data annotated by coarse-label. Given a category graph of the targeted fine-classes and some weakly-labeled coarse-classes, PPN learns an attention mechanism which propagates the prototype of one class to another on the graph, so that the K-nearest neighbor (KNN) classifier defined on the propagated prototypes results in high accuracy across different few-shot tasks. The training tasks are generated by subgraph sampling, and the training objective is obtained by accumulating the level-wise classification loss on the subgraph. The resulting graph of prototypes can be continually re-used and updated for new tasks and classes. We also introduce two practical test/inference settings which differ according to whether the test task can leverage any weakly-supervised information as in training. On two benchmarks, PPN significantly outperforms most recent few-shot learning methods in different settings, even when they are also allowed to train on weakly-labeled data.

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Authors (6)
  1. Lu Liu (464 papers)
  2. Tianyi Zhou (172 papers)
  3. Guodong Long (115 papers)
  4. Jing Jiang (192 papers)
  5. Lina Yao (194 papers)
  6. Chengqi Zhang (74 papers)
Citations (68)

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