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Supervised Deep Dictionary Learning for Single Label and Multi-Label Classification

机译:在单标签和多标签分类的监督下进行深度词典学习

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This is the first work that introduces supervision into the deep dictionary learning framework and solves it in an optimal fashion. The derivation for solving the ensuing formulation is based on the state-of-the-art optimization paradigm that includes proximal variable splitting, augmented Lagrangians and alternating direction method of multipliers. Our proposed formulation can handle both single label and multi-label classification problems. Experiments have been carried out on benchmark datasets. Comparison has been carried out with both well known and modern techniques. In every case, our proposed solution surpasses others.
机译:这是第一个在深度文字典学习框架中引入监督的工作,并以最佳的方式解决它。用于解决随后的制剂的推导基于最先进的优化范例,包括近端可变分裂,增强拉格朗日和乘法器的交替方向方法。我们所提出的配方可以处理单一标签和多标签分类问题。在基准数据集中进行了实验。通过众所周知的和现代技术进行了比较。在每种情况下,我们所提出的解决方案超越了其他解决方案。

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