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Dihedral angles principal geodesic analysis using nonlinear statistics

Authors :
A. Nodehi
Mousa Golalizadeh
A. Heydari
Source :
Journal of Applied Statistics. 42:1962-1972
Publication Year :
2015
Publisher :
Informa UK Limited, 2015.

Abstract

Statistics, as one of the applied sciences, has great impacts in vast area of other sciences. Prediction of protein structures with great emphasize on their geometrical features using dihedral angles has invoked the new branch of statistics, known as directional statistics. One of the available biological techniques to predict is molecular dynamics simulations producing high-dimensional molecular structure data. Hence, it is expected that the principal component analysis (PCA) can response some related statistical problems particulary to reduce dimensions of the involved variables. Since the dihedral angles are variables on non-Euclidean space (their locus is the torus), it is expected that direct implementation of PCA does not provide great information in this case. The principal geodesic analysis is one of the recent methods to reduce the dimensions in the non-Euclidean case. A procedure to utilize this technique for reducing the dimension of a set of dihedral angles is highlighted in this paper. We fur...

Details

ISSN :
13600532 and 02664763
Volume :
42
Database :
OpenAIRE
Journal :
Journal of Applied Statistics
Accession number :
edsair.doi...........6c7db662cd33cf1b0229b8281842e618