Journal of The Korea Society of Computer and Information 한국컴퓨터정보학회논문지, v.23, no.12, pp.21 - 26
Publisher
The Korean Society Of Computer And Information한국컴퓨터정보학회
Abstract
As the large amount of data can be efficiently stored, the methods extracting meaningful features
from big data has become important. Especially, the techniques of converting high- to
low-dimensional data are crucial for the 'Data visualization'. In this study, principal component
analysis (PCA; linear dimensionality reduction technique) and Isomap (non-linear dimensionality
reduction technique) are introduced and applied to neural big data obtained by the functional magnetic
resonance imaging (fMRI). First, we investigate how much the physical properties of stimuli are
maintained after the dimensionality reduction processes. We moreover compared the amount of
residual variance to quantitatively compare the amount of information that was not explained. As
result, the dimensionality reduction using Isomap contains more information than the principal
component analysis. Our results demonstrate that it is necessary to consider not only linear but also
nonlinear characteristics in the big data analysis.