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      Unsupervised machine learning for detection of phase transitions in off-lattice systems I. Foundations

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          Abstract

          We demonstrate the utility of an unsupervised machine learning tool for the detection of phase transitions in off-lattice systems. We focus on the application of principal component analysis (PCA) to detect the freezing transitions of two-dimensional hard-disk and three-dimensional hard-sphere systems as well as liquid-gas phase separation in a patchy colloid model. As we demonstrate, PCA autonomously discovers order-parameter-like quantities that report on phase transitions, mitigating the need for a priori construction or identification of a suitable order parameter--thus streamlining the routine analysis of phase behavior. In a companion paper, we further develop the method established here to explore the detection of phase transitions in various model systems controlled by compositional demixing, liquid crystalline ordering, and non-equilibrium active forces.

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          Author and article information

          Journal
          31 July 2018
          Article
          1808.00084
          da70a991-8065-477c-8f13-4435ccc5a5bc

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          physics.comp-ph cond-mat.stat-mech

          Condensed matter,Mathematical & Computational physics
          Condensed matter, Mathematical & Computational physics

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