checkConv {meboot} | R Documentation |
Check Convergence
Description
This function generates a 3D array giving (Xn-X) in the notation of
the ConvergenceConcepts
package by Lafaye de Micheaux and Liquet for sample paths
with dimensions =
n999
as first dimension, nover
=
range of n
values as second dimension and number of items in key
as the third
dimension. It is intended to be used for checking convergence of meboot
in the context
of a specific real world time series regression problem.
Usage
checkConv (y, bigx, trueb = 1, n999 = 999, nover = 5,
seed1 = 294, key = 0, trace = FALSE)
Arguments
y |
vector of data containing the dependent variable. |
bigx |
vector of data for all regressor variables in a regression or |
trueb |
true values of regressor coefficients for simulation. If |
n999 |
number of replicates to generate in a simulation. |
nover |
number of values of n over which convergence calculated. |
seed1 |
seed for the random number generator. |
key |
the subset of key regression coefficient whose convergence is studied
if |
trace |
logical. If |
Details
Use this only when lagged dependent variable is absent.
Warning: key=0
might use up too much memory for large regression problems.
The algorithm first creates data on the dependent variable for a simulation using known
true values denoted by trueb. It proceeds to create n999
regression problems using the
seven-step algorithm in meboot
creating n999
time series for all variable
in the simulated regression. It then creates sample paths over a range of n values for
coefficients of interest denoted as key
(usually a subset of original coefficients).
For each key coefficient there are n999
paths as n increases. If meboot
algorithm
is converging to true values, the value of (Xn-X) based criteria for
"convergence in probability" and "almost sure convergence" in the notation of the
ConvergenceConcepts
package should decline.
The decline can be plotted and/or tested to check if it is statistically significant
as sample size increases. This function permits the user of meboot
working with a short
time series to see if the meboot
algorithm is working in his or her particular situation.
Value
A 3 dimensional array giving (Xn-X) for sample paths with dimensions =
n999
as first dimension, nover
=
range of n values as second dimension
and number of items in key
as the third dimension ready for use in
ConvergenceConcepts
package.
References
Lafaye de Micheaux, P. and Liquet, B. (2009), Understanding Convergence Concepts: a Visual-Minded and Graphical Simulation-Based Approach, The American Statistician, 63(2) pp. 173-178.
Vinod, H.D. (2006), Maximum Entropy Ensembles for Time Series Inference in Economics, Journal of Asian Economics, 17(6), pp. 955-978
Vinod, H.D. (2004), Ranking mutual funds using unconventional utility theory and stochastic dominance, Journal of Empirical Finance, 11(3), pp. 353-377.