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The large $N$ factorization does not hold for arbitrary multi-trace observables in random tensors (2506.15362v1)

Published 18 Jun 2025 in math-ph, hep-th, math.CO, math.MP, and math.PR

Abstract: We consider real tensors of order $D$, that is $D$-dimensional arrays of real numbers $T_{a1a2 \dots aD}$, where each index $ac$ can take $N$ values. The tensor entries $T_{a1a2 \dots aD}$ have no symmetry properties under permutations of the indices. The invariant polynomials built out of the tensor entries are called trace invariants. We prove that for a Gaussian random tensor with $D\ge 3$ indices (that is such that the entries $T_{a1a2 \dots aD}$ are independent identically distributed Gaussian random variables) the cumulant, or connected expectation, of a product of trace invariants is not always suppressed in scaling in $N$ with respect to the product of the expectations of the individual invariants. Said otherwise, not all the multi-trace expectations factor at large $N$ in terms of the single-trace ones and the Gaussian scaling is not subadditive on the connected components. This is in stark contrast to the $D=2$ case of random matrices in which the multi-trace expectations always factor at large $N$. The best one can do for $D\ge 3$ is to identify restricted families of invariants for which the large $N$ factorization holds and we check that this indeed happens when restricting to the family of melonic observables, the dominant family in the large $N$ limit.

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