Publication | Open Access
Identifying Topological Phase Transitions in Experiments Using Manifold Learning
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Citations
33
References
2020
Year
We demonstrate the identification of topological phase transitions from experimental data using diffusion maps: a nonlocal unsupervised machine learning method. We analyze experimental data from an optical system undergoing a topological phase transition and demonstrate the ability of this approach to identify topological phase transitions even when the data originates from a small part of the system, and does not even include edge states.
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