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Complexity
Volume 2018, Article ID 4075656, 14 pages
https://doi.org/10.1155/2018/4075656
Research Article

Predicting Facial Biotypes Using Continuous Bayesian Network Classifiers

1Facultad de Ingeniería y Ciencias, Universidad Adolfo Ibáñez, Av. Diagonal Las Torres 2640, Peñalolén, Santiago, Chile
2Center of Applied Ecology and Sustainability (CAPES), Santiago, Chile
3Departamento del Niño y Adolescente, Área de Ortodoncia, Facultad de Odontología, Universidad Andrés Bello, Santiago, Chile

Correspondence should be addressed to Gonzalo A. Ruz; lc.iau@zur.olaznog

Received 29 June 2018; Revised 7 November 2018; Accepted 15 November 2018; Published 2 December 2018

Guest Editor: Panayiotis Vlamos

Copyright © 2018 Gonzalo A. Ruz and Pamela Araya-Díaz. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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