This report examines the extent to which sample size affects the accuracy of a low order polynomial approximation of an experimentally observed quantity and establishes a trend toward improvement in the accuracy of the approximation as a function of sample size. The task is made possible through a simulated analysis carried out by the Monte Carlo method, in which data are generated by using several transcendental or algebraic functions as models. Contaminated data of varying amounts are fitted to linear quadratic or cubic polynomials, and the behavior of the mean-squared error of the residual variance is determined as a function of sample size. Results indicate that the effect of the size of the sample is significant only for relatively sma...
A Monte Carlo simulation study was conducted to investigate the effects of sample size, estimation m...
Classification of experimental designs relative to polynomial spline regression function
Design of Experiments (DoE) is widely used in design, manufacturing and quality management. The resu...
In psychological research, the use of log-linear and logit analyses may be problematic due to the oc...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Small samples and sparse cell frequencies cause major problems for statistical modelling with categ...
This research project falls in the domain of response surface methodology, which seeks cost-effectiv...
Nonparametric procedures are often more powerful than classical tests for real world data which are ...
In science and engineering, there is often uncertainty in the linear model assumed for a response wh...
This paper concerns the approximation of smooth, high-dimensional functions from limited samples usi...
Small samples and sparse cell frequencies cause major problems for statistical modelling with categ...
Procedures are introduced and discussed for increasing the computational and statistical efficiency ...
A common question asked by researchers using regression models is, What sample size is needed for my...
Several rules of thumb for the minimum sample size of structural equation models have been proposed....
2 pages, 1 article*A Monte Carlo Study of the Small Sample Validity of Confidence Interval Estimator...
A Monte Carlo simulation study was conducted to investigate the effects of sample size, estimation m...
Classification of experimental designs relative to polynomial spline regression function
Design of Experiments (DoE) is widely used in design, manufacturing and quality management. The resu...
In psychological research, the use of log-linear and logit analyses may be problematic due to the oc...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Small samples and sparse cell frequencies cause major problems for statistical modelling with categ...
This research project falls in the domain of response surface methodology, which seeks cost-effectiv...
Nonparametric procedures are often more powerful than classical tests for real world data which are ...
In science and engineering, there is often uncertainty in the linear model assumed for a response wh...
This paper concerns the approximation of smooth, high-dimensional functions from limited samples usi...
Small samples and sparse cell frequencies cause major problems for statistical modelling with categ...
Procedures are introduced and discussed for increasing the computational and statistical efficiency ...
A common question asked by researchers using regression models is, What sample size is needed for my...
Several rules of thumb for the minimum sample size of structural equation models have been proposed....
2 pages, 1 article*A Monte Carlo Study of the Small Sample Validity of Confidence Interval Estimator...
A Monte Carlo simulation study was conducted to investigate the effects of sample size, estimation m...
Classification of experimental designs relative to polynomial spline regression function
Design of Experiments (DoE) is widely used in design, manufacturing and quality management. The resu...