RTMC: Rubost可信多视图分类框架

Hai Zhou, Zhe Xue, Ying Liu, Boang Li, Junping Du, M. Liang
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引用次数: 1

摘要

多视图学习旨在充分利用多个来源的信息,以获得比使用单一视图更好的性能。然而,现实世界的数据通常包含大量的噪声,这可能对多视图学习产生很大的影响。因此,有必要识别多视图数据中包含的噪声,以实现鲁棒和可信的分类。本文提出了一种鲁棒可信多视图分类框架RTMC。我们的框架使用多视图亲和编码和排斥编码来学习多视图数据的有效潜在编码。我们还提出了一个信任感知判别器,通过识别数据中包含的噪声来估计信任分数。我们采用存储不同类别潜在编码的原型队列来准确识别噪声。最后,提出可信多视图分类,通过可信融合策略共同预测分类的信任分数,实现鲁棒性分类结果。在六个具有挑战性的多视图数据集上对RTMC进行了验证,实验结果证明了该方法的鲁棒性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RTMC: A Rubost Trusted Multi-View Classification Framework
Multi-view learning aims to fully exploit the information from multiple sources to obtain better performance than using a single view. However, real-world data often contains a lot of noise, which can have a large impact on multi-view learning. Therefore, it is necessary to identify noise contained in multi-view data to achieve robust and trusted classification. In this paper, we propose a robust trusted multi-view classification framework, RTMC. Our framework uses multi-view affinity and repellence encoding to learn effective latent encodings of multi-view data. We also propose a trust-aware discriminator to estimate trust scores by identifying noise contained in the data. We adopt prototype queues, which store latent encodings of different classes, to accurately identify the noise. Finally, trusted multi-view classification is proposed to jointly predict the trust scores of classification and achieve robust classification results through a trusted fusion strategy. RTMC is validated on six challenging multi-view datasets and the experimental results demonstrate the robustness and effectiveness of our method.
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