Four Party Absolutely Maximal Contextual Correlations
- URL: http://arxiv.org/abs/2602.23883v1
- Date: Fri, 27 Feb 2026 10:21:55 GMT
- Title: Four Party Absolutely Maximal Contextual Correlations
- Authors: Nripendra Majumdar,
- Abstract summary: We have defined maximal correlations in terms of contextual models.<n>The formalism introduces the contextual fraction as a measure of contextuality.<n>No AME state exists for four qubits, which introduces a subtle difference between AMCC and AME.
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- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Kochen Specker theorem revealed contextuality as a fundamental nonclassical feature of nature. Nonlocality arises as a special case of contextuality, where entangled states shared by space like separated parties exhibit nonlocal correlations. The notion of maximality in correlations, analogous to maximal entanglement, is less explored in multipartite systems. In our work, we have defined maximal correlations in terms of contextual models, which are analogous to absolutely maximally entangled (AME) states. Employing the sheaf theoretic framework, we introduce maximal contextual correlations associated with the corresponding maximal contextual model. The formalism introduces the contextual fraction CF as a measure of contextuality, taking values from 0 (noncontextual) to 1 (fully contextual). This enables the formulation of a new class of correlations termed absolutely maximal contextual correlations (AMCC), which are both maximally contextual and maximal marginals. In the bipartite setting, the canonical example is the Popescu Rohrlich (PR) box, while in the tripartite case, it includes Greenberger Horne Zeilinger (GHZ) correlations and three way nonlocal correlations. In this work, we extend these findings to four party correlations. Notably, no AME state exists for four qubits, which introduces a subtle difference between AMCC and AME. The construction follows the constraint satisfaction problem (CSP) and parity check methods. In particular, the explicit realization of a non AMCC correlation that is maximally contextual yet not maximal marginal is obtained within the CSP framework.
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