Article ID Journal Published Year Pages File Type
1145814 Journal of Multivariate Analysis 2013 22 Pages PDF
Abstract

We present arguments in favor of the inequalities var(Xn2∣X∈Bv(ρ))≤2λnE[Xn2∣X∈Bv(ρ)], where X∼Nv(0,Λ)X∼Nv(0,Λ) is a normal vector in v≥1v≥1 dimensions, with zero mean and covariance matrix Λ=diag(λ), and Bv(ρ)Bv(ρ) is a centered vv-dimensional Euclidean ball of square radius ρρ. Such relations lie at the heart of an iterative algorithm, proposed by Palombi et al. (2012) [6] to perform a reconstruction of ΛΛ from the covariance matrix of XX conditioned to Bv(ρ)Bv(ρ). In the regime of strong truncation, i.e.   for ρ≲λnρ≲λn, the above inequality is easily proved, whereas it becomes harder for ρ≫λnρ≫λn. Here, we expand both sides in a function series controlled by powers of λn/ρλn/ρ and show that the coefficient functions of the series fulfill the inequality order by order if ρρ is sufficiently large. The intermediate region remains at present an open challenge.

Related Topics
Physical Sciences and Engineering Mathematics Numerical Analysis
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