TY - JOUR
AB - © 2017 American Physical Society. We propose a framework for the systematic and quantitative generalization of Bell's theorem using causal networks. We first consider the multiobjective optimization problem of matching observed data while minimizing the causal effect of nonlocal variables and prove an inequality for the optimal region that both strengthens and generalizes Bell's theorem. To solve the optimization problem (rather than simply bound it), we develop a genetic algorithm treating as individuals causal networks. By applying our algorithm to a photonic Bell experiment, we demonstrate the trade-off between the quantitative relaxation of one or more local causality assumptions and the ability of data to match quantum correlations.
AU - Harper, R
AU - Chapman, RJ
AU - Ferrie, C
AU - Granade, C
AU - Kueng, R
AU - Naoumenko, D
AU - Flammia, ST
AU - Peruzzo, A
DA - 2017/04/17
DO - 10.1103/PhysRevA.95.042120
JO - Physical Review A
PY - 2017/04/17
TI - Explaining quantum correlations through evolution of causal models
VL - 95
Y1 - 2017/04/17
Y2 - 2020/11/25
ER -