Dictionary Learning and Tensor Decomposition via the Sum-of-Squares Method

B. Barak, Jonathan A. Kelner, David Steurer
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引用次数: 178

Abstract

We give a new approach to the dictionary learning (also known as "sparse coding") problem of recovering an unknown n x m matrix A (for m ≥ n) from examples of the form [y = Ax + e,] where x is a random vector in Rm with at most τ m nonzero coordinates, and e is a random noise vector in Rn with bounded magnitude. For the case m=O(n), our algorithm recovers every column of A within arbitrarily good constant accuracy in time mO(log m/log(τ-1)), in particular achieving polynomial time if τ = m-δ for any δ>0, and time mO(log m) if τ is (a sufficiently small) constant. Prior algorithms with comparable assumptions on the distribution required the vector $x$ to be much sparser---at most √n nonzero coordinates---and there were intrinsic barriers preventing these algorithms from applying for denser x. We achieve this by designing an algorithm for noisy tensor decomposition that can recover, under quite general conditions, an approximate rank-one decomposition of a tensor T, given access to a tensor T' that is τ-close to T in the spectral norm (when considered as a matrix). To our knowledge, this is the first algorithm for tensor decomposition that works in the constant spectral-norm noise regime, where there is no guarantee that the local optima of T and T' have similar structures. Our algorithm is based on a novel approach to using and analyzing the Sum of Squares semidefinite programming hierarchy (Parrilo 2000, Lasserre 2001), and it can be viewed as an indication of the utility of this very general and powerful tool for unsupervised learning problems.
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基于平方和方法的字典学习和张量分解
我们给出了一种新的方法来解决字典学习(也称为“稀疏编码”)问题,即从形式为[y = Ax + e]的示例中恢复未知的n x m矩阵a(对于m≥n),其中x是Rm中的随机向量,最多具有τ m非零坐标,e是Rn中的随机噪声向量,具有有限的大小。对于m=O(n)的情况,我们的算法在任意好的常数精度范围内恢复时间mO(log m/log(τ-1))的A的每一列,特别是如果τ = m-δ对于任何δ>0,则实现多项式时间,如果τ是(一个足够小的)常数,则时间mO(log m)。先前对分布有类似假设的算法要求向量x更稀疏——最多√n个非零坐标——并且存在内在障碍,阻止这些算法应用于更密集的x。我们通过设计一种噪声张量分解算法来实现这一点,该算法可以在相当一般的条件下恢复张量T的近似秩一分解。给定一个在谱范数中τ-接近于T的张量T'(当作为矩阵考虑时)。据我们所知,这是第一个在恒定谱范数噪声条件下工作的张量分解算法,在这种情况下,不能保证T和T'的局部最优具有相似的结构。我们的算法是基于一种使用和分析平方和半定规划层次的新方法(Parrilo 2000, Lasserre 2001),它可以被视为这种非常通用和强大的工具在无监督学习问题上的实用性的指示。
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