R: Converting Multinomial Logit Data into Binary Logit Data
mlogit2logit
R Documentation
Converting Multinomial Logit Data into Binary Logit Data
Description
Converts multinomial logit data into a combination of several binary logit data sets, in order to analyze it via the Begg & Gray approximation using a binary logistic regression.
Vector of names of alternatives. If it is not given, it is determined from the response column of the data frame. Values of this vector should match or be a subset of those in the response column. If it is a subset, data is reduced to contain only observations whose choice is contained in choices.
base.choice
Index of the base alternative within the vector choices.
varying
Indices of variables within data that are alternative-specific.
sep
Separator of variable name and alternative name in the ‘varying’ variables.
Details
Details of the conversion algorithm are described in the vignette of this package, see vignette('conversion').
Value
List with components:
data
Converted data set.
formula
Formula to be used with the converted data set.
nobs
Number of observations in the original data set.
z.index
Index of all Z columns within data (see vignette for details), i.e. columns that correspond to alternative specific constants.
z.names
Names of the Z columns.
zcols
List in which each element corresponds to any of the data columns that involve Z, which is either Z itself or an interaction between a variable and Z, (see vignette). The value of such element is a vector with the components ‘name’: either Z itself, or name of the corresponding X or U variable with which Z interacts; ‘choice’: which alternative it belongs to; ‘intercept’: logical determining if it is an alternative specific constant.
choices
Vector of names of the alternatives.
choice.main.intercept
Index of alternative within choices that corresponds to the main intercept of the binary logistic model.
Note
This function is called from within the bic.mlogit and thus usually will not need to be called explicitly.
Author(s)
Hana Sevcikova
References
Begg, C.B., Gray, R. (1984) Calculation of polychotomous logistic regression parameters using individualized regressions. Biometrika 71, 11–18.
Yeung, K.Y., Bumgarner, R.E., Raftery, A.E. (2005) Bayesian model averaging: development of an improved multi-class, gene selection and classification tool for microarray data. Bioinformatics 21 (10), 2394–2402.