A Convex Hull-Based Machine Learning Algorithm for Multipartite Entanglement Classification

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Abstract

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.

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APA

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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