On Kronecker Separability of Multiway Covariance

02/05/2023
by   Dogyoon Song, et al.
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Multiway data analysis is aimed at inferring patterns from data represented as a multi-dimensional array. Estimating covariance from multiway data is a fundamental statistical task, however, the intrinsic high dimensionality poses significant statistical and computational challenges. Recently, several factorized covariance models, paired with estimation algorithms, have been proposed to circumvent these obstacles. Despite several promising results on the algorithmic front, it remains under-explored whether and when such a model is valid. To address this question, we define the notion of Kronecker-separable multiway covariance, which can be written as a sum of r tensor products of mode-wise covariances. The question of whether a given covariance can be represented as a separable multiway covariance is then reduced to an equivalent question about separability of quantum states. Using this equivalence, it follows directly that a generic multiway covariance tends to be non-separable (even if r →∞), and moreover, finding its best separable approximation is NP-hard. These observations imply that factorized covariance models are restrictive and should be used only when there is a compelling rationale for such a model.

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