scoreWtd | R Documentation |
Item weights from bestScales
or lmCor
are used to find weighted scale scores. In contrast to the unit weights used in scoreItems
, scoreWtd
will multiply the data by a set of weights to find scale scores. These weight may come from a regression (e.g., lm
or lmCor
) or may be the zero order correlation weights from bestScales
.
scoreWtd(weights, items, std = TRUE, sums = FALSE, impute = "none")
weights |
This is just a matrix of weights to use for each item for each scale. |
items |
Matrix or dataframe of raw item scores |
std |
if TRUE, then find weighted standard scores else just use raw data |
sums |
By default, find the average item score. If sums = TRUE, then find the sum scores. This is useful for regression with an intercept term |
impute |
impute="median" replaces missing values with the item medians, impute = "mean" replaces values with the mean response. impute="none" the subject's scores are based upon the average of the keyed, but non missing scores. impute = "none" is probably more appropriate for a large number of missing cases (e.g., SAPA data). |
Although meant for finding correlation weighted scores using the weights from bestScales
, it also possible to use alternative weight matrices, such as those returned by the coefficients in lm
.
A data frame of scores.
William Revelle
bestScales
and lmCor
#find the weights from a regression model and then apply them to a new set
#derivation of weights from the first 20 cases
model.lm <- lm(rating ~ complaints + privileges + learning,data=attitude[1:20,])
#or use lmCor to find the coefficents
model <- lmCor(rating ~ complaints + privileges +learning,data=attitude[1:20,],std=FALSE)
#Apply these to a different set of data (the last 10 cases)
#note that the regression coefficients need to be a matrix
scores.lm <- scoreWtd(as.matrix(model.lm$coefficients),attitude[21:30,],sums=TRUE,std=FALSE)
scores <- scoreWtd(model$coefficients,attitude[21:30,],sums=TRUE,std=FALSE)
describe(scores)
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