Title of article :
Exploring the variability of DNA molecules via principal geodesic analysis on the shape space
Author/Authors :
H. Fotouhi&M. Golalizadeh، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Most of the linear statistics deal with data lying in a Euclidean space. However, there are many examples,
such as DNA molecule topological structures, in which the initial or the transformed data lie in a non-
Euclidean space. To get a measure of variability in these situations, the principal component analysis (PCA)
is usually performed on a Euclidean tangent space as it cannot be directly implemented on a non-Euclidean
space. Instead, principal geodesic analysis (PGA) is a new tool that provides a measure of variability for
nonlinear statistics. In this paper, the performance of this new tool is compared with that of the PCA using
a real data set representing a DNA molecular structure. It is shown that due to the nonlinearity of space,
the PGA explains more variability of the data than the PCA.
Keywords :
nonlinear statistics , Statistical shape analysis , Principal component analysis , principal geodesic analysis , DNA modeling
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS