Minimal Distance to Approximating Noncontextual System as a Measure of Contextuality
Janne V. Kujala

TL;DR
This paper introduces a new, computationally efficient method for measuring contextuality in systems of random variables, based on the minimal distance to an approximating noncontextual system, extending existing approaches.
Contribution
It proposes a novel approach to quantify contextuality using probabilistic distance, combining the generality of CbD with the computational efficiency of NP-based methods.
Findings
The measure aligns with CbD for systems where each property appears in two contexts.
The method is significantly faster to compute than CbD and NP measures for large systems.
It extends the NP measure to systems with inconsistent connectedness.
Abstract
Let random vectors represent joint measurements of certain subsets of properties in different contexts . Such a system is traditionally called noncontextual if there exists a jointly distributed set of random variables such that has the same distribution as for all . A trivial necessary condition for noncontextuality and a precondition for most approaches to measuring contextuality is that the system is consistently connected, i.e., all measuring the same property have the same distribution. The Contextuality-by-Default (CbD) approach allows detecting and measuring "true" contextuality on top of inconsistent connectedness, but at the price of a higher computational cost. In this paper we propose a novel approach to measuring contextuality that shares the…
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