Conic optimization-based algorithms for nonnegative matrix factorization

V. Leplat, Y. Nesterov, Nicolas Gillis, F. Glineur
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Abstract

Nonnegative matrix factorization is the following problem: given a nonnegative input matrix V and a factorization rank K, compute two nonnegative matrices, W with K columns and H with K rows, such that WH approximates V as well as possible. In this paper, we propose two new approaches for computing high-quality NMF solutions using conic optimization. These approaches rely on the same two steps. First, we reformulate NMF as minimizing a concave function over a product of convex cones – one approach is based on the exponential cone and the other on the second-order cone. Then, we solve these reformulations iteratively: at each step, we minimize exactly, over the feasible set, a majorization of the objective functions obtained via linearization at the current iterate. Hence these subproblems are convex conic programs and can be solved efficiently using dedicated algorithms. We prove that our approaches reach a stationary point with an accuracy decreasing as , where i denotes the iteration number. To the best of our knowledge, our analysis is the first to provide a convergence rate to stationary points for NMF. Furthermore, in the particular cases of rank-1 factorizations (i.e. K = 1), we show that one of our formulations can be expressed as a convex optimization problem, implying that optimal rank-1 approximations can be computed efficiently. Finally, we show on several numerical examples that our approaches are able to frequently compute exact NMFs (i.e. with V = WH) and compete favourably with the state of the art.
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基于二次优化的非负矩阵分解算法
非负矩阵分解是这样一个问题:给定一个非负输入矩阵V和一个分解秩K,计算两个非负矩阵,W有K列,H有K行,使得WH尽可能接近V。在本文中,我们提出了两种使用二次优化计算高质量NMF解的新方法。这些方法依赖于相同的两个步骤。首先,我们将NMF重新表述为在凸锥的乘积上最小化凹函数-一种方法基于指数锥,另一种方法基于二阶锥。然后,我们迭代地求解这些重新表述:在每一步,我们在可行集上精确地最小化,在当前迭代中通过线性化获得的目标函数的多数化。因此,这些子问题是凸二次规划,可以用专用算法有效地求解。我们证明了我们的方法到达一个平稳点,其精度递减为,其中i表示迭代次数。据我们所知,我们的分析是第一个提供NMF到平稳点的收敛率的分析。此外,在rank-1分解(即K = 1)的特殊情况下,我们证明了我们的一个公式可以表示为凸优化问题,这意味着最优rank-1近似可以有效地计算。最后,我们通过几个数值例子表明,我们的方法能够经常计算精确的nmf(即V = WH),并与最先进的技术竞争。
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