標題: Unsupervised Learning and Pattern Recognition of Biological Data Structures with Density Functional Theory and Machine Learning
作者: Chen, Chien-Chang
Juan, Hung-Hui
Tsai, Meng-Yuan
Lu, Henry Horng-Shing
統計學研究所
Institute of Statistics
公開日期: 11-Jan-2018
摘要: By introducing the methods of machine learning into the density functional theory, we made a detour for the construction of the most probable density function, which can be estimated by learning relevant features from the system of interest. Using the properties of universal functional, the vital core of density functional theory, the most probable cluster numbers and the corresponding cluster boundaries in a studying system can be simultaneously and automatically determined and the plausibility is erected on the Hohenberg-Kohn theorems. For the method validation and pragmatic applications, interdisciplinary problems from physical to biological systems were enumerated. The amalgamation of uncharged atomic clusters validated the unsupervised searching process of the cluster numbers and the corresponding cluster boundaries were exhibited likewise. High accurate clustering results of the Fisher's iris dataset showed the feasibility and the flexibility of the proposed scheme. Brain tumor detections from low-dimensional magnetic resonance imaging datasets and segmentations of high-dimensional neural network imageries in the Brainbow system were also used to inspect the method practicality. The experimental results exhibit the successful connection between the physical theory and the machine learning methods and will benefit the clinical diagnoses.
URI: http://dx.doi.org/10.1038/s41598-017-18931-5
http://hdl.handle.net/11536/144363
ISSN: 2045-2322
DOI: 10.1038/s41598-017-18931-5
期刊: SCIENTIFIC REPORTS
Volume: 8
Appears in Collections:Articles