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Semi-Supervised Multi-label Dimensionality Reduction

机译:半监督多标号维数减少

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Multi-label data with high dimensionality arise frequently in data mining and machine learning. It is not only time consuming but also computationally unreliable when we use high-dimensional data directly. Supervised dimensionality reduction approaches are based on the assumption that there are large amounts of labeled data. It is infeasible to label a large number of training samples in practice especially in multi-label learning. To address these challenges, we propose a novel algorithm, namely Semi-Supervised Multi-Label Dimensionality Reduction (SSMLDR), which can utilize the information from both labeled data and unlabeled data in an effective way. First, the proposed algorithm enlarges the multi-label information from the labeled data to the unlabeled data through a special designed label propagation method. It then learns a transformation matrix to perform dimensionality reduction by incorporating the enlarged multi-label information. Extensive experiments on a broad range of datasets validate the effectiveness of our approach against other well-established algorithms.
机译:数据挖掘和机器学习中经常出现具有高维度的多标签数据。当我们直接使用高维数据时,它不仅耗时,而且在计算上不可靠。监督维度减少方法基于具有大量标记数据的假设。在实践中标记大量培训样本,特别是在多标签学习中是不可行的。为了解决这些挑战,我们提出了一种新颖的算法,即半监督的多标签维度减少(SSMLDR),可以利用来自标记数据和未标记数据的信息以有效的方式。首先,该算法通过特殊设计的标签传播方法将来自标记数据的多标签信息从标记的数据扩大到未标记的数据。然后,它通过结合放大的多标签信息来学习变换矩阵来执行维度降低。广泛数据集的广泛实验验证了我们对其他熟悉算法的方法的有效性。

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