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Sparse power factorization: balancing peakiness and sample complexity

机译:稀疏功率分解:平衡峰值和样本复杂性

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摘要

In many applications, one is faced with an inverse problem, where the known signal depends in a bilinear way on two unknown input vectors. Often at least one of the input vectors is assumed to be sparse, i.e., to have only few non-zero entries. Sparse power factorization (SPF), proposed by Lee, Wu, and Bresler, aims to tackle this problem. They have established recovery guarantees for a somewhat restrictive class of signals under the assumption that the measurements are random. We generalize these recovery guarantees to a significantly enlarged and more realistic signal class at the expense of a moderately increased number of measurements.
机译:在许多应用中,一个人面临着逆问题,其中已知信号在两个未知的输入向量上取决于双线性方式。 通常至少一个输入向量被假设为稀疏,即,仅具有少量非零条目。 Lee,Wu和Bresler提出的稀疏电源分解(SPF)旨在解决这个问题。 在假设测量是随机的假设下,他们已经建立了一些限制性的信号类别的恢复保证。 我们将这些恢复概括为以适度增加的测量数量的牺牲品的显着扩大和更现实的信号类。

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