Near-Optimal and Tractable Estimation under Shift-Invariance
How hard is it to estimate a discrete-time signal satisfying an unknown linear recurrence relation of order and observed in i.i.d. complex Gaussian noise? The class of all such signals is parametric but extremely rich: it contains all exponential polynomials over with total degree , including harmonic oscillations with arbitrary frequencies. Geometrically, this class corresponds to the projection onto of the union of all shift-invariant subspaces of of dimension . We show that the statistical complexity of this class, as measured by the squared minimax radius of the -confidence -ball, is nearly the same as for the class of -sparse signals, namely Moreover, the corresponding near-minimax estimator is tractable, and it can be used to build a test statistic with a near-minimax detection threshold in the associated detection problem. These statistical results rest upon an approximation-theoretic one: we show that finite-dimensional shift-invariant subspaces admit compactly supported reproducing kernels whose Fourier spectra have nearly the smallest possible -norms, for all at once.
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