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On the Optimality of Classifier Chain for Multi-label Classification

机译:多标签分类中分类器链的最优性

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To capture the interdependencies between labels in multi-label classification problems, classifier chain (CC) tries to take the multiple labels of each instance into account under a deterministic high-order Markov Chain model. Since its performance is sensitive to the choice of label order, the key issue is how to determine the optimal label order for CC. In this work, we first generalize the CC model over a random label order. Then, we present a theoretical analysis of the generalization error for the proposed generalized model. Based on our results, we propose a dynamic programming based classifier chain (CC-DP) algorithm to search the globally optimal label order for CC and a greedy classifier chain (CC-Greedy) algorithm to find a locally optimal CC. Comprehensive experiments on a number of real-world multi-label data sets from various domains demonstrate that our proposed CC-DP algorithm outperforms state-of-the-art approaches and the CC-Greedy algorithm achieves comparable prediction performance with CC-DP.
机译:为了捕获多标签分类问题中标签之间的相互依赖性,分类器链(CC)尝试在确定性高阶马尔可夫链模型下考虑每个实例的多个标签。由于其性能对标签顺序的选择很敏感,因此关键问题是如何确定CC的最佳标签顺序。在这项工作中,我们首先对随机标签顺序的CC模型进行一般化。然后,我们对提出的广义模型的泛化误差进行了理论分析。基于我们的结果,我们提出了一种基于动态规划的分类器链(CC-DP)算法来搜索CC的全局最优标签顺序,并提出了一种贪婪的分类器链(CC-Greedy)算法来找到局部最优的CC。对来自各个领域的许多现实世界多标签数据集的综合实验表明,我们提出的CC-DP算法优于最新方法,而CC-Greedy算法可实现与CC-DP相当的预测性能。

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