首页> 外文会议>Annual Conference on Neural Information Processing Systems(NIPS); 20031208-13; British Columbia(CA) >When Does Non-Negative Matrix Factorization Give a Correct Decomposition into Parts?
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When Does Non-Negative Matrix Factorization Give a Correct Decomposition into Parts?

机译:非负矩阵分解何时能正确分解成部分?

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We interpret non-negative matrix factorization geometrically, as the problem of finding a simplicial cone which contains a cloud of data points and which is contained in the positive orthant. We show that under certain conditions, basically requiring that some of the data are spread across the faces of the positive orthant, there is a unique such simplicial cone. We give examples of synthetic image articulation databases which obey these conditions; these require separated support and factorial sampling. For such databases there is a generative model in terms of 'parts' and NMF correctly identifies the 'parts'. We show that our theoretical results are predictive of the performance of published NMF code, by running the published algorithms on one of our synthetic image articulation databases.
机译:我们将几何学上的非负矩阵分解解释为寻找包含数据点云且包含在正正坐标系中的单纯圆锥的问题。我们表明,在某些条件下,基本上要求一些数据分布在正正牙石的面上,这是一个独特的简单锥。我们给出了符合这些条件的合成图像清晰度数据库的示例;这些需要分开的支持和析因抽样。对于此类数据库,存在一个基于“零件”的生成模型,而NMF可以正确识别“零件”。我们通过在我们的合成图像清晰度数据库之一上运行已发布的算法,证明了我们的理论结果可预测已发布NMF代码的性能。

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