five

Gaussian Genuinely Multipartite Entangled states - 5 and 6 modes (thesis data)

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DataCite Commons2024-06-07 更新2025-04-17 收录
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https://research-portal.st-andrews.ac.uk/en/datasets/gaussian-genuinely-multipartite-entangled-states-5-and-6-modes-th
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MATLAB files of Covariance matrices and Witnesses for the 5 and 6 mode examples presented in the corresponding thesis (table 6.7 on page 106). Details on how the data was obtained is found in the thesis. Datqa may be accessed using MATLAB, make sure that the working directory includes the file 'GMEClass.m'. To get the values use the command: >> f = matfile('Nordgren2022_5modeData.mat'); fives01222 = f.fives01222 fives01233 = f.fives01233 fives01234 = f.fives01234 The numbers at the end are a way of describing trees. Each entry corresponds to a vertex. The value corresponds to the other vertex the entry connects to - with zero being a bare vertex. So the 4-mode linear tree would be 0 1 2 3 (start with a bare A, B connects to A, C connects to B, D connects to C). The five mode example below 0 1 2 2 2 is the star-shaped (all connected to the middle vertex). For unlabeled trees this is equivalent to 0 1 1 1 1. In MATLAB one may draw the tree passing a vector of the node connections using the command: >> treeplot([0 1 2 3 4]) Each fivesXXXXX holds all the info for the graph given by XXXXX. To get the values use (using the first example) fives01222.c - witness mean fives01222.g - covariance matrix fives01222.w - witness fives01222.s - seed matrix fives01222.t - tree structure. You should be able to check that the values are self-coherent with >> trace(g*w) - 1 - c == 0 Likewise, for N=6 use commands below. (feel free to use other variables different to ff1,etc.) ff = matfile('Nordgren2022_6modeData.mat'); ff1 = ff.sixes012222 ff2 = ff.sixes012233 ff3 = ff.sixes012333 ff4 = ff.sixes012335 ff5 = ff.sixes012344 ff6 = ff.sixes012345 with the same associated object values as above.
提供机构:
University of St Andrews
创建时间:
2022-08-04
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