Mathematics – Statistics Theory
Scientific paper
2010-09-17
Mathematics
Statistics Theory
Scientific paper
We study the performance of estimators of a sparse nonrandom vector based on an observation which is linearly transformed and corrupted by additive white Gaussian noise. Using the reproducing kernel Hilbert space framework, we derive a new lower bound on the estimator variance for a given differentiable bias function (including the unbiased case) and an almost arbitrary transformation matrix (including the underdetermined case considered in compressed sensing theory). For the special case of a sparse vector corrupted by white Gaussian noise-i.e., without a linear transformation-and unbiased estimation, our lower bound improves on previously proposed bounds.
Ben-Haim Zvika
Eldar Yonina C.
Hlawatsch Franz
Jung Alexander
Schmutzhard Sebastian
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