Sample Complexity of Low-rank Tensor Recovery from Uniformly Random Entries (2408.03504v1)
Abstract: We show that a generic tensor $T\in \mathbb{F}{n\times n\times \dots\times n}$ of order $k$ and CP rank $d$ can be uniquely recovered from $n\log n+dn\log \log n +o(n\log \log n) $ uniformly random entries with high probability if $d$ and $k$ are constant and $\mathbb{F}\in {\mathbb{R},\mathbb{C}}$. The bound is tight up to the coefficient of the second leading term and improves on the existing $O(n{\frac{k}{2}}{\rm polylog}(n))$ upper bound for order $k$ tensors. The bound is obtained by showing that the projection of the Segre variety to a random axis-parallel linear subspace preserves $d$-identifiability with high probability if the dimension of the subspace is $n\log n+dn\log \log n +o(n\log \log n) $ and $n$ is sufficiently large.
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