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Generalized k-Labelsets Ensemble for Multi-Label and Cost-Sensitive Classification

机译:用于多标签和成本敏感分类的广义k-标签集合

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摘要

Label powerset (LP) method is one category of multi-label learning algorithm. This paper presents a basis expansions model for multi-label classification, where a basis function is an LP classifier trained on a random k-labelset. The expansion coefficients are learned to minimize the global error between the prediction and the ground truth. We derive an analytic solution to learn the coefficients efficiently. We further extend this model to handle the cost-sensitive multi-label classification problem, and apply it in social tagging to handle the issue of the noisy training set by treating the tag counts as the misclassification costs. We have conducted experiments on several benchmark datasets and compared our method with other state-of-the-art multi-label learning methods. Experimental results on both multi-label classification and cost-sensitive social tagging demonstrate that our method has better performance than other methods.
机译:标签功率集(LP)方法是多标签学习算法的一类。本文提出了一种用于多标签分类的基础扩展模型,其中基础函数是在随机k标签集上训练的LP分类器。学习膨胀系数以最小化预测和基本事实之间的整体误差。我们得出一个解析解,可以有效地学习系数。我们进一步扩展了该模型,以处理成本敏感的多标签分类问题,并将其应用于社会标签中,通过将标签计数视为错误分类成本来处理嘈杂的训练集问题。我们已经在几个基准数据集上进行了实验,并将我们的方法与其他最新的多标签学习方法进行了比较。多标签分类和成本敏感型社会标签的实验结果表明,我们的方法比其他方法具有更好的性能。

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