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Computationally Efficient Multi-Label Classification by Least-Squares Probabilistic Classifier

机译:最小二乘概率分类器的高效计算多标签分类

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Multi-label classification allows a sample to belong to multiple classes simultaneously, which is often the case in real-world applications such as audio tagging, image annotation, video search, and text mining. In such a multi-label scenario, taking into account correlation between multiple labels can boost the classification accuracy. However, this in turn makes classifier training more challenging because handling multiple labels tends to induce a high-dimensional optimization problem. In this paper, we propose a highly scalable multi-label classifier based on a computationally efficient classification algorithm called the least-squares probabilistic classifier. Through experiments, we show the usefulness of our proposed method.
机译:多标签分类允许样本同时属于多个类别,这在诸如音频标签,图像注释,视频搜索和文本挖掘之类的实际应用中经常是这种情况。在这种多标签方案中,考虑多个标签之间的相关性可以提高分类准确性。然而,这反过来使分类器训练更具挑战性,因为处理多个标签往往会引发高维优化问题。在本文中,我们基于称为最小二乘概率分类器的高效计算分类算法,提出了一种高度可扩展的多标签分类器。通过实验,我们证明了所提出方法的有效性。

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