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Multi-Label Learning by Exploiting Label Correlations Locally*

机译:通过本地利用标签相关性进行多标签学习*

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摘要

It is well known that exploiting label correlations is important for multi-label learning. Existing approaches typically exploit label correlations globally, by assuming that the label correlations are shared by all the instances. In real-world tasks, however, different instances may share different label correlations, and few correlations are globally applicable. In this paper, we propose the ML-LOC approach which allows label correlations to be exploited locally. To encode the local influence of label correlations, we derive a LOC code to enhance the feature representation of each instance. The global discrimination fitting and local correlation sensitivity are incorporated into a unified framework, and an alternating solution is developed for the optimization. Experimental results on a number of image, text and gene data sets validate the effectiveness of our approach.
机译:众所周知,利用标签相关性对于多标签学习很重要。现有方法通常通过假设标签关联被所有实例共享来全局地利用标签关联。但是,在实际任务中,不同的实例可能共享不同的标签相关性,并且几乎没有全局适用的相关性。在本文中,我们提出了ML-LOC方法,该方法允许在本地利用标签相关性。为了对标签相关性的局部影响进行编码,我们导出了LOC代码以增强每个实例的特征表示。全局判别拟合和局部相关敏感性被合并到一个统一的框架中,并且为优化开发了一个交替的解决方案。在许多图像,文本和基因数据集上的实验结果证明了我们方法的有效性。

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