Diversity-enhancing Generative Network for Few-shot Hypothesis Adaptation

Ruijiang Dong, Feng Liu, Haoang Chi, Tongliang Liu, Mingming Gong, Gang Niu, Masashi Sugiyama, Bo Han
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引用次数: 2

Abstract

Generating unlabeled data has been recently shown to help address the few-shot hypothesis adaptation (FHA) problem, where we aim to train a classifier for the target domain with a few labeled target-domain data and a well-trained source-domain classifier (i.e., a source hypothesis), for the additional information of the highly-compatible unlabeled data. However, the generated data of the existing methods are extremely similar or even the same. The strong dependency among the generated data will lead the learning to fail. In this paper, we propose a diversity-enhancing generative network (DEG-Net) for the FHA problem, which can generate diverse unlabeled data with the help of a kernel independence measure: the Hilbert-Schmidt independence criterion (HSIC). Specifically, DEG-Net will generate data via minimizing the HSIC value (i.e., maximizing the independence) among the semantic features of the generated data. By DEG-Net, the generated unlabeled data are more diverse and more effective for addressing the FHA problem. Experimental results show that the DEG-Net outperforms existing FHA baselines and further verifies that generating diverse data plays a vital role in addressing the FHA problem
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基于少镜头假设自适应的多样性增强生成网络
生成未标记数据最近被证明有助于解决少拍假设适应(FHA)问题,我们的目标是用几个标记的目标域数据和一个训练良好的源域分类器(即源假设)来训练目标域的分类器,以获取高度兼容的未标记数据的附加信息。然而,现有方法生成的数据非常相似,甚至相同。生成的数据之间的强依赖性会导致学习失败。在本文中,我们提出了一个多样性增强的生成网络(DEG-Net)用于FHA问题,该网络可以利用核独立性度量:Hilbert-Schmidt独立性准则(HSIC)生成多样化的未标记数据。具体来说,DEG-Net将通过最小化生成数据的语义特征之间的HSIC值(即最大化独立性)来生成数据。通过DEG-Net,生成的未标记数据更多样化,更有效地解决FHA问题。实验结果表明,DEG-Net优于现有的FHA基线,进一步验证了生成多样化数据在解决FHA问题中起着至关重要的作用
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