Sharp detection of smooth signals in a high-dimensional sparsematrix with indirect observations

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Abstract

We consider a matrix-valued Gaussian sequence model, that is, we observe a sequence of high-dimensional M ×N matrices of heterogeneous Gaussian random variables xij,κ for i ∈ {1,. ., M}, j ∈ {1,. ., N}, M and N tend to infinity and κ ∈ Z. For large |κ|, the standard deviation of our observations is ∈|κ|s for some ∈ > 0, ∈ →0 and a given s ≥ 0, case that encompasses mildly ill-posed inverse problems. We give separation rates for the detection of a sparse submatrix of size m × n (m and n tend to infinity, m/M and n/N tend 0) with active components. A component (i, j ) is said active if the sequence {xij,κ } κ has mean {θ ij,κ } κ within a Sobolev ellipsoid of smoothness τ >0 and total energy ∑ κ θ ij,κ 2 larger than some r2 ∈. We construct a test procedure and compute rates that involve relationships between m,n,M, N and ∈, such that the asymptotic total error probability tends to 0. We also show how these rates can be made adaptive to the size (m, n) of the submatrix under some constraints. We prove corresponding lower bounds under additional assumptions on the relative size of the submatrix in the large matrix of observations. Our separation rates are sharp under further assumptions. Lower bounds for hypothesis testing problems mean that no test procedure can distinguish between the null hypothesis (no signal) and the alternative, i.e. the minimax total error probability for testing tends to 1.

Original languageEnglish
Pages (from-to)1564-1591
Number of pages28
JournalAnnales de l'institut Henri Poincare (B) Probability and Statistics
Volume52
Issue number4
DOIs
Publication statusPublished - 1 Nov 2016
Externally publishedYes

Keywords

  • Asymptotic minimax test
  • Detection boundary
  • Gaussian white noise model
  • Heterogeneous observations
  • High-dimensional data
  • Indirect observations
  • Inverse problems
  • Sharp rates
  • Sparsity

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