Estimating physical properties from liquid crystal textures via machine learning and complexity-entropy methods.
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R. S. Zola | H Y D Sigaki | R F de Souza | R T de Souza | R S Zola | H V Ribeiro | H. V. Ribeiro | Higor Y. D. Sigaki | R. F. de Souza | H. Y. D. Sigaki | R. T. de Souza | R. D. Souza | R. F. D. Souza
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