利用噪声标签进行学习的变分整型推理

IF 11.6 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Haoliang Sun, Qi Wei, Lei Feng, Yupeng Hu, Fan Liu, Hehe Fan, Yilong Yin
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引用次数: 0

摘要

在现实世界的数据集中,已经广泛观察到了标签噪声。为了减轻深度模型过度拟合标签噪声的负面影响,有效的策略(如重新加权或损失矫正)已被广泛应用于流行的方法中,这些方法通常是在元学习场景下学习的。尽管概率元学习模型对噪声具有鲁棒性,但它们通常会受到模型崩溃的影响,从而降低泛化性能。在本文中,我们提出了变分整定推理(VRI),将损失函数的自适应整定表述为一个摊销的变分推理问题,并推导出元学习框架下的证据下限。具体来说,VRI 是通过将整顿向量视为潜变量来构建分层贝叶斯的,它可以通过额外的随机性正则化来整顿噪声样本的损失,因此对标签噪声具有更强的鲁棒性。为了实现整顿向量的推理,我们用一个摊销元网络来近似其条件后验。通过在 VRI 中引入变项,可以准确估计条件后验,避免坍缩为 Dirac delta 函数,从而显著提高泛化性能。精心设计的元网络和先验网络符合平滑性假设,能够生成可靠的矫正向量。给定一组干净的元数据,VRI 可以在双层优化编程中高效地元学习。此外,理论分析也保证了我们的算法可以高效地学习元网络。综合对比实验和分析验证了该算法在有噪声标签的情况下,尤其是在存在开放集噪声的情况下的鲁棒学习效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Variational Rectification Inference for Learning with Noisy Labels

Variational Rectification Inference for Learning with Noisy Labels

Label noise has been broadly observed in real-world datasets. To mitigate the negative impact of overfitting to label noise for deep models, effective strategies (e.g., re-weighting, or loss rectification) have been broadly applied in prevailing approaches, which have been generally learned under the meta-learning scenario. Despite the robustness of noise achieved by the probabilistic meta-learning models, they usually suffer from model collapse that degenerates generalization performance. In this paper, we propose variational rectification inference (VRI) to formulate the adaptive rectification for loss functions as an amortized variational inference problem and derive the evidence lower bound under the meta-learning framework. Specifically, VRI is constructed as a hierarchical Bayes by treating the rectifying vector as a latent variable, which can rectify the loss of the noisy sample with the extra randomness regularization and is, therefore, more robust to label noise. To achieve the inference of the rectifying vector, we approximate its conditional posterior with an amortization meta-network. By introducing the variational term in VRI, the conditional posterior is estimated accurately and avoids collapsing to a Dirac delta function, which can significantly improve the generalization performance. The elaborated meta-network and prior network adhere to the smoothness assumption, enabling the generation of reliable rectification vectors. Given a set of clean meta-data, VRI can be efficiently meta-learned within the bi-level optimization programming. Besides, theoretical analysis guarantees that the meta-network can be efficiently learned with our algorithm. Comprehensive comparison experiments and analyses validate its effectiveness for robust learning with noisy labels, particularly in the presence of open-set noise.

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来源期刊
International Journal of Computer Vision
International Journal of Computer Vision 工程技术-计算机:人工智能
CiteScore
29.80
自引率
2.10%
发文量
163
审稿时长
6 months
期刊介绍: The International Journal of Computer Vision (IJCV) serves as a platform for sharing new research findings in the rapidly growing field of computer vision. It publishes 12 issues annually and presents high-quality, original contributions to the science and engineering of computer vision. The journal encompasses various types of articles to cater to different research outputs. Regular articles, which span up to 25 journal pages, focus on significant technical advancements that are of broad interest to the field. These articles showcase substantial progress in computer vision. Short articles, limited to 10 pages, offer a swift publication path for novel research outcomes. They provide a quicker means for sharing new findings with the computer vision community. Survey articles, comprising up to 30 pages, offer critical evaluations of the current state of the art in computer vision or offer tutorial presentations of relevant topics. These articles provide comprehensive and insightful overviews of specific subject areas. In addition to technical articles, the journal also includes book reviews, position papers, and editorials by prominent scientific figures. These contributions serve to complement the technical content and provide valuable perspectives. The journal encourages authors to include supplementary material online, such as images, video sequences, data sets, and software. This additional material enhances the understanding and reproducibility of the published research. Overall, the International Journal of Computer Vision is a comprehensive publication that caters to researchers in this rapidly growing field. It covers a range of article types, offers additional online resources, and facilitates the dissemination of impactful research.
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