Tensor cumulants for statistical inference on invariant distributions
Dmitriy Kunisky, Cristopher Moore, Alexander S. Wein

TL;DR
This paper introduces tensor cumulants, a new mathematical tool for analyzing invariant polynomials in high-dimensional tensor problems, providing insights into computational hardness and phase transitions in statistical inference tasks.
Contribution
The authors develop tensor cumulants as a basis for invariant polynomials, unifying and extending results on computational hardness, and establishing new thresholds and gaps in tensor inference problems.
Findings
Unified framework for low-degree polynomial hardness
Identified sharp computational thresholds for tensor ensemble distinctions
Discovered a new statistical-computational gap in tensor CLT
Abstract
Many problems in high-dimensional statistics appear to have a statistical-computational gap: a range of values of the signal-to-noise ratio where inference is information-theoretically possible, but (conjecturally) computationally intractable. A canonical such problem is Tensor PCA, where we observe a tensor consisting of a rank-one signal plus Gaussian noise. Multiple lines of work suggest that Tensor PCA becomes computationally hard at a critical value of the signal's magnitude. In particular, below this transition, no low-degree polynomial algorithm can detect the signal with high probability; conversely, various spectral algorithms are known to succeed above this transition. We unify and extend this work by considering tensor networks, orthogonally invariant polynomials where multiple copies of are "contracted" to produce scalars, vectors, matrices, or other tensors. We…
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Taxonomy
TopicsModel Reduction and Neural Networks · Statistical Mechanics and Entropy · Tensor decomposition and applications
MethodsSparse Evolutionary Training · Principal Components Analysis
