相关标签传播及其在多标签学习中的应用

Feng Kang, Rong Jin, R. Sukthankar
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引用次数: 247

摘要

许多计算机视觉应用,如场景分析和医学图像解释,不适合传统的分类,因为每个图像只能与单个类相关联。这激发了最近在多标签学习方面的工作,其中给定的图像可以用多个类标签标记。现有方法的一个严重问题是它们无法利用类标签之间的相关性。本文提出了一种新的多标签学习框架,称为相关标签传播(CLP),它以一种有效的方式显式地建模标签之间的相互作用。与标准标签传播一样,附加在训练数据点上的标签被传播到测试数据点;然而,与独立处理每个标签的标准算法不同,CLP同时共同传播多个标签。现有的工作避开了这种方法,因为标签共传播的朴素算法是难以处理的。本文提出了一种基于子模函数性质的算法,可以有效地求出最优解。我们的实验表明,在涉及数百个标签的两个真实世界的计算机视觉任务中,与标准技术相比,CLP在精度/召回率方面取得了显著的进步。
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Correlated Label Propagation with Application to Multi-label Learning
Many computer vision applications, such as scene analysis and medical image interpretation, are ill-suited for traditional classification where each image can only be associated with a single class. This has stimulated recent work in multi-label learning where a given image can be tagged with multiple class labels. A serious problem with existing approaches is that they are unable to exploit correlations between class labels. This paper presents a novel framework for multi-label learning termed Correlated Label Propagation (CLP) that explicitly models interactions between labels in an efficient manner. As in standard label propagation, labels attached to training data points are propagated to test data points; however, unlike standard algorithms that treat each label independently, CLP simultaneously co-propagates multiple labels. Existing work eschews such an approach since naive algorithms for label co-propagation are intractable. We present an algorithm based on properties of submodular functions that efficiently finds an optimal solution. Our experiments demonstrate that CLP leads to significant gains in precision/recall against standard techniques on two real-world computer vision tasks involving several hundred labels.
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