Quantum entanglement becomes more complicated and capricious when more than two parties are involved. There have been methods for classifying some inequivalent multipartite entanglements, such as GHZ states and W states. In this paper, based on the fact that the set of all W states is convex, we approximate the convex hull by some critical points from the inside and propose a method of classification via the tangent hyperplane. To accelerate the calculation, we bring ensemble learning of machine learning into the algorithm, thus improving the accuracy of the classification.
CITATION STYLE
Wang, P. (2022). A Convex Hull-Based Machine Learning Algorithm for Multipartite Entanglement Classification. Applied Sciences (Switzerland), 12(24). https://doi.org/10.3390/app122412778
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