The function pools the coefficients of determination R^2 or the adjusted coefficients of determination (R^2_a) obtained with the lm modeling function. For pooling it uses the Fisher z-transformation.

pool.r.squared(object, adjusted = FALSE)

Arguments

object

An object of class 'mira' or 'mipo', produced by lm.mids, with.mids, or pool with lm as modeling function.

adjusted

A logical value. If adjusted=TRUE then the adjusted R^2 is calculated. The default value is FALSE.

Value

Returns a 1x4 table with components. Component est is the pooled R^2 estimate. Component lo95 is the 95 % lower bound of the pooled R^2. Component hi95 is the 95 % upper bound of the pooled R^2. Component fmi is the fraction of missing information due to nonresponse.

References

Harel, O (2009). The estimation of R^2 and adjusted R^2 in incomplete data sets using multiple imputation, Journal of Applied Statistics, 36:1109-1118.

Rubin, D.B. (1987). Multiple Imputation for Nonresponse in Surveys. New York: John Wiley and Sons.

van Buuren S and Groothuis-Oudshoorn K (2011). mice: Multivariate Imputation by Chained Equations in R. Journal of Statistical Software, 45(3), 1-67. https://www.jstatsoft.org/v45/i03/

See also

Author

Karin Groothuis-Oudshoorn and Stef van Buuren, 2009

Examples

imp <- mice(nhanes, print = FALSE, seed = 16117) fit <- with(imp, lm(chl ~ age + hyp + bmi)) # input: mira object pool.r.squared(fit)
#> est lo 95 hi 95 fmi #> R^2 0.4338408 0.06503877 0.7513683 NaN
pool.r.squared(fit, adjusted = TRUE)
#> est lo 95 hi 95 fmi #> adj R^2 0.3507643 0.01771032 0.7091501 NaN
# input: mipo object est <- pool(fit) pool.r.squared(est)
#> est lo 95 hi 95 fmi #> R^2 0.4338408 0.06503877 0.7513683 NaN
pool.r.squared(est, adjusted = TRUE)
#> est lo 95 hi 95 fmi #> adj R^2 0.3507643 0.01771032 0.7091501 NaN