Confusion-driven machine learning of structural phases of a flexible, magnetic Stockmayer polymer
Confusion-driven machine learning of structural phases of a flexible, magnetic Stockmayer polymer
We use a semi-supervised, neural-network based machine learning technique, the confusion method, to investigate structural transitions in magnetic polymers, which we model as chains of magnetic colloidal nanoparticles characterized by dipole-dipole and Lennard-Jones interactions. As input for the neural network we use the particle positions and magnetic dipole moments of equilibrium polymer configurations, which we generate via replica-exchange Wang--Landau simulations. We demonstrate that by measuring the classification accuracy of neural networks, we can effectively identify transition points between multiple structural phases without any prior knowledge of their existence or location. We corroborate our findings by investigating relevant, conventional order parameters. Our study furthermore examines previously unexplored low-temperature regions of the phase diagram, where we find new structural transitions between highly ordered helicoidal polymer configurations.
Dilina Perera、Samuel McAllister、Joan Josep CerdÃ、Thomas Vogel
计算技术、计算机技术
Dilina Perera,Samuel McAllister,Joan Josep CerdÃ,Thomas Vogel.Confusion-driven machine learning of structural phases of a flexible, magnetic Stockmayer polymer[EB/OL].(2025-06-26)[2025-07-17].https://arxiv.org/abs/2506.20899.点此复制
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