Minimum-volume nonnegative matrix factorization (min-vol NMF) has been used successfully in many applications, such as hyperspectral imaging, chemical kinetics, spectroscopy, topic modeling, and audio source separation. However, its robustness to noise has been a long-standing open problem. In this paper, we prove that min-vol NMF identifies the groundtruth factors in the presence of noise under a condition referred to as the expanded sufficiently scattered condition which requires the data points to be sufficiently well scattered in the latent simplex generated by the basis vectors.
翻译:最小体积非负矩阵分解(min-vol NMF)已在诸多领域成功应用,例如高光谱成像、化学动力学、光谱学、主题建模及音频源分离。然而,其对于噪声的鲁棒性长期以来一直是一个悬而未决的问题。本文证明,在一种称为扩展充分散射条件的假设下,min-vol NMF 能够在噪声存在的情况下识别出真实因子;该条件要求数据点在由基向量生成的潜在单纯形中具有足够充分的散射分布。