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Multi-label Classification with Output Kernels

机译:带输出内核的多标签分类

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摘要

Although multi-label classification has become an increasingly important problem in machine learning, current approaches remain restricted to learning in the original label space (or in a simple linear projection of the original label space). Instead, we propose to use kernels on output label vectors to significantly expand the forms of label dependence that can be captured. The main challenge is to reformulate standard multi-label losses to handle kernels between output vectors. We first demonstrate how a state-of-the-art large margin loss for multi-label classification can be reformulated, exactly, to handle output kernels as well as input kernels. Importantly, the pre-image problem for multi-label classification can be easily solved at test time, while the training procedure can still be simply expressed as a quadratic program in a dual parameter space. We then develop a projected gradient descent training procedure for this new formulation. Our empirical results demonstrate the efficacy of the proposed approach on complex image labeling tasks.
机译:尽管多标签分类已成为机器学习中越来越重要的问题,但当前的方法仍然仅限于在原始标签空间(或原始标签空间的简单线性投影)中学习。相反,我们建议在输出标签向量上使用内核,以显着扩展可以捕获的标签依赖性形式。主要挑战是重新制定标准的多标签损失,以处理输出向量之间的核。我们首先演示如何精确地重新构造用于多标签分类的最新大边距损失,以处理输出内核和输入内核。重要的是,用于多标签分类的图像前问题可以在测试时轻松解决,而训练过程仍可以简单地表示为双参数空间中的二次程序。然后,我们针对这种新配方开发了预计的梯度下降训练程序。我们的经验结果证明了该方法在复杂图像标记任务中的功效。

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