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An Effective NMF-Based Method for Supervised Dimension Reduction

机译:基于NMF的监督尺寸减少方法

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Sparse topic modeling is a potential approach to learning meaningful hidden topics from large datasets with high dimension and complex distribution. We propose a sparse NMF-based method for supervised dimension reduction which aims to detect the particular topics of each class. Beside exploiting constraint convex combination of the hidden topics for each instance, our method separably learns among classes to extract interpretable and meaningful class topics. Our experimental results showed the effectiveness of our approach via significant criteria such as separability, interpretability, sparsity and performance in classification task of large datasets with high dimension and complex distribution. Our obtained results are highly competitive with state-of-the-art NMF-based methods.
机译:稀疏主题建模是一种从大维和复杂分布的大型数据集学习有意义的隐藏主题的潜在方法。我们提出了一种稀疏的基于NMF的方法,用于监督尺寸减少,旨在检测每个班级的特定主题。除了利用每个实例的隐藏主题的限制凸面组合,我们的方法可以在课堂间可分离,以提取可解释和有意义的课程主题。我们的实验结果表明,通过具有高维度和复杂分布的大型数据集的分类任务等可分离性,解释性,稀疏性和性能等重大标准,我们的方法显示了效力。我们获得的结果具有高竞争力的基于NMF的方法。

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