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Non-negative matrix factorization based modeling and training algorithm for multi-label learning

机译:基于非负矩阵分解的多标签学习建模与训练算法

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摘要

Multi-label learning is more complicated than single-label learning since the semantics of the instances are usually overlapped and not identical. The effectiveness of many algorithms often fails when the correlations in the feature and label space are not fully exploited. To this end, we propose a novel non-negative matrix factorization (NMF) based modeling and training algorithm that learns from both the adjacencies of the instances and the labels of the training set. In the modeling process, a set of generators are constructed, and the associations among generators, instances, and labels are set up, with which the label prediction is conducted. In the training process, the parameters involved in the process of modeling are determined. Specifically, an NMF based algorithm is proposed to determine the associations between generators and instances, and a non-negative least square optimization algorithm is applied to determine the associations between generators and labels. The proposed algorithm fully takes the advantage of smoothness assumption, so that the labels are properly propagated. The experiments were carried out on six set of benchmarks. The results demonstrate the effectiveness of the proposed algorithms.
机译:多标签学习比单标签学习更复杂,因为实例的语义通常是重叠的并且不相同。当特征和标签空间中的相关性未得到充分利用时,许多算法的有效性通常会失败。为此,我们提出了一种新颖的基于非负矩阵分解(NMF)的建模和训练算法,该算法从实例的邻接关系和训练集的标签中学习。在建模过程中,构建了一组生成器,并建立了生成器,实例和标签之间的关联,并以此进行标签预测。在训练过程中,确定建模过程中涉及的参数。具体来说,提出了一种基于NMF的算法来确定生成器与实例之间的关联,并应用非负最小二乘优化算法来确定生成器与标签之间的关联。所提出的算法充分利用了平滑假设的优势,从而可以正确地传播标签。实验按六组基准进行。结果证明了所提出算法的有效性。

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