Few-Shot Learning Via Dependency Maximization and Instance Discriminant Analysis

Zejiang Hou, S. Kung
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引用次数: 1

Abstract

We study the few-shot learning (FSL) problem, where a model learns to recognize new objects with extremely few labeled training data per category. Most of previous FSL approaches resort to the meta-learning paradigm, where the model accumulates inductive bias through learning many training tasks so as to solve a new unseen few-shot task. In contrast, we propose a simple approach to exploit unlabeled data accompanying the few-shot task for improving few-shot performance. Firstly, we propose a Dependency Maximization method based on the Hilbert-Schmidt norm of the cross-covariance operator, which maximizes the statistical dependency between the embedded feature of those unlabeled data and their label predictions, together with the supervised loss over the support set. We then use the obtained model to infer the pseudo-labels for those unlabeled data. Furthermore, we propose an Instance Discriminant Analysis to evaluate the credibility of each pseudo-labeled example and select the most faithful ones into an augmented support set to retrain the model as in the first step. We iterate the above process until the pseudo-labels for the unlabeled data become stable. Following the standard transductive and semi-supervised FSL setting, our experiments show that the proposed method outperforms previous state-of-the-art methods on four widely used benchmarks, including mini-ImageNet, tiered-ImageNet, CUB, and CIFARFS.
基于依赖最大化和实例判别分析的少射学习
我们研究了少射学习(FSL)问题,其中模型学习识别每个类别中标记的训练数据非常少的新对象。以前的FSL方法大多采用元学习范式,模型通过学习许多训练任务来积累归纳偏差,从而解决一个新的看不见的少数任务。相比之下,我们提出了一种简单的方法来利用伴随few-shot任务的未标记数据来提高few-shot性能。首先,我们提出了一种基于交叉协方差算子Hilbert-Schmidt范数的依赖性最大化方法,该方法最大化了未标记数据的嵌入特征与其标签预测之间的统计依赖性,以及支持集上的监督损失。然后,我们使用获得的模型来推断那些未标记数据的伪标签。此外,我们提出了一个实例判别分析来评估每个伪标记样本的可信度,并选择最忠实的样本到一个增强支持集中,像第一步一样重新训练模型。我们迭代上述过程,直到未标记数据的伪标签变得稳定。在标准的换向和半监督FSL设置之后,我们的实验表明,所提出的方法在四个广泛使用的基准测试(包括mini-ImageNet, tier- imagenet, CUB和CIFARFS)上优于先前的最先进的方法。
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