Share
Export Citation
APA
MLA
Chicago
Harvard
Vancouver
BIBTEX
RIS
Universitas Hasanuddin
Research output:Contribution to journal›Article›peer-review
Estimation of Covariance Matrix on Bi-Response Longitudinal Data Analysis with Penalized Spline Regression
Islamiyati A.
Journal of Physics Conference Series
Published: 2018Citations: 25
Abstract
The correlation assumption of the longitudinal data with bi-response occurs on the measurement between the subjects of observation and the response. It causes the auto-correlation of error, and this can be overcome by using a covariance matrix. In this article, we estimate the covariance matrix based on the penalized spline regression model. Penalized spline involves knot points and smoothing parameters simultaneously in controlling the smoothness of the curve. Based on our simulation study, the estimated regression model of the weighted penalized spline with covariance matrix gives a smaller error value compared to the error of the model without covariance matrix.
Access to Document
10.1088/1742-6596/979/1/012093Other files and links
- Link to publication in Scopus
- Open Access Version Available
Fingerprint
Covariance matrixSciences
Spline (mechanical)Sciences
Longitudinal dataSciences
MathematicsSciences
StatisticsSciences
RegressionSciences
CovarianceSciences
Regression analysisSciences
Estimation of covariance matricesSciences
Analysis of covarianceSciences
Applied mathematicsSciences
EconometricsSciences
Computer scienceSciences
Data miningSciences
EngineeringSciences
Structural engineeringSciences