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Coupled dimensionality reduction and classification for supervised and semi-supervised multilabel learning

机译:监督和半监督多标签学习的降维和分类耦合

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摘要

Coupled training of dimensionality reduction and classification is proposed previously to improve the prediction performance for single-label problems. Following this line of research, in this paper, we first introduce a novel Bayesian method that combines linear dimensionality reduction with linear binary classification for supervised multilabel learning and present a deterministic variational approximation algorithm to learn the proposed probabilistic model. We then extend the proposed method to find intrinsic dimensionality of the projected subspace using automatic relevance determination and to handle semi-supervised learning using a low-density assumption. We perform supervised learning experiments on four benchmark multilabel learning data sets by comparing our method with baseline linear dimensionality reduction algorithms. These experiments show that the proposed approach achieves good performance values in terms of hamming loss, average AUC, macro F_1, and micro F_1 on held-out test data. The low-dimensional embeddings obtained by our method are also very useful for exploratory data analysis. We also show the effectiveness of our approach in finding intrinsic subspace dimensionality and semi-supervised learning tasks.
机译:先前提出了降维和分类的耦合训练,以提高单标签问题的预测性能。根据这一研究方向,在本文中,我们首先介绍一种新颖的贝叶斯方法,该方法将线性降维与线性二进制分类相结合以进行监督的多标签学习,并提出了确定性的变分近似算法来学习所提出的概率模型。然后,我们将提出的方法扩展为使用自动相关性确定来找到投影子空间的固有维数,并使用低密度假设来处理半监督学习。通过将我们的方法与基线线性降维算法进行比较,我们对四个基准多标签学习数据集进行了监督学习实验。这些实验表明,根据保留的测试数据,该方法在汉明损失,平均AUC,宏F_1和微F_1方面取得了良好的性能值。通过我们的方法获得的低维嵌入对于探索性数据分析也非常有用。我们还展示了我们的方法在寻找内在子空间维数和半监督学习任务方面的有效性。

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