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A Post-Quantum Associative Memory

Quantum Physics 2023-11-07 v3 Artificial Intelligence Information Theory Mathematical Physics math.IT math.MP Computational Physics

Abstract

Associative memories are devices storing information that can be fully retrieved given partial disclosure of it. We examine a toy model of associative memory and the ultimate limitations it is subjected to within the framework of general probabilistic theories (GPTs), which represent the most general class of physical theories satisfying some basic operational axioms. We ask ourselves how large the dimension of a GPT should be so that it can accommodate 2m2^m states with the property that any NN of them are perfectly distinguishable. Call d(N,m)d(N,m) the minimal such dimension. Invoking an old result by Danzer and Gr\"unbaum, we prove that d(2,m)=m+1d(2,m)=m+1, to be compared with O(2m)O(2^m) when the GPT is required to be either classical or quantum. This yields an example of a task where GPTs outperform both classical and quantum theory exponentially. More generally, we resolve the case of fixed NN and asymptotically large mm, proving that d(N,m)m1+oN(1)d(N,m) \leq m^{1+o_N(1)} (as mm\to\infty) for every N2N\geq 2, which yields again an exponential improvement over classical and quantum theories. Finally, we develop a numerical approach to the general problem of finding the largest NN-wise mutually distinguishable set for a given GPT, which can be seen as an instance of the maximum clique problem on NN-regular hypergraphs.

Keywords

Cite

@article{arxiv.2201.12305,
  title  = {A Post-Quantum Associative Memory},
  author = {Ludovico Lami and Daniel Goldwater and Gerardo Adesso},
  journal= {arXiv preprint arXiv:2201.12305},
  year   = {2023}
}

Comments

27 pages, 5 figures. v2: Extended with new analytical and numerical results for N>2, showing that an exponential advantage persists for large post-quantum memories. v3 is close to the published version