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UNSUPERVISED VOCABULARY DISCOVERY USING NON-NEGATIVE MATRIX FACTORIZATION WITH GRAPH REGULARIZATION

机译:使用具有图形规则化的非负矩阵分解的无监督词汇发现

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In this paper, we present a model for unsupervised pattern discovery using non-negative matrix factorization (NMF) with graph regularization. Though the regularization can be applied to many applications, we illustrate its effectiveness in a task of vocabulary acquisition in which a spoken utterance is represented by its histogram of the acoustic co-occurrences. The regularization expresses that temporally close co-occurrences should tend to end up in the same learned pattern. A novel algorithm that converges to a local optimum of the regularized cost function is proposed. Our experiments show that the graph regularized NMF model always performs better than the primary NMF model on the task of unsupervised acquisition of a small vocabulary.
机译:在本文中,我们使用具有图形正规化的非负矩阵分解(NMF)来提出一个无监督模式发现的模型。 虽然正规化可以应用于许多应用,但是我们在词汇采集任务中说明了它的有效性,其中口语话语是由其对声学共同发生的直方图表示的。 正规化表达了,时间紧密的共同发生应该以相同的学习模式结束。 提出了一种与正则化成本函数的局部最佳局部收敛的新算法。 我们的实验表明,图形正规化NMF模型始终比主NMF模型更好地表现出关于无监督收购小词汇的任务。

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