Inputting Data to fit a Bradley Terry Model
Brat(mat, ties = 0 * mat, string = c(">", "=="), whitespace = FALSE)
mat |
Matrix of counts, which is considered M by M in dimension when there are ties, and M+1 by M+1 when there are no ties. The rows are winners and the columns are losers, e.g., the 2-1 element is now many times Competitor 2 has beaten Competitor 1. The matrices are best labelled with the competitors' names. |
ties |
Matrix of counts.
This should be the same dimension as |
string |
Character.
The matrices are labelled with the first value of the
descriptor, e.g., |
whitespace |
Logical. If |
In the VGAM package it is necessary for each
matrix to be represented as a single row of data by
brat
and bratt
. Hence the
non-diagonal elements of the M+1 by M+1
matrix are concatenated into M(M+1) values (no
ties), while if there are ties, the non-diagonal elements
of the M by M matrix are concatenated into
M(M-1) values.
A matrix with 1 row and either M(M+1) or M(M-1) columns.
Yet to do: merge InverseBrat
into brat
.
T. W. Yee
Agresti, A. (2013). Categorical Data Analysis, 3rd ed. Hoboken, NJ, USA: Wiley.
journal <- c("Biometrika", "Comm Statist", "JASA", "JRSS-B") mat <- matrix(c( NA, 33, 320, 284, 730, NA, 813, 276, 498, 68, NA, 325, 221, 17, 142, NA), 4, 4) dimnames(mat) <- list(winner = journal, loser = journal) Brat(mat) # Less readable Brat(mat, whitespace = TRUE) # More readable vglm(Brat(mat, whitespace = TRUE) ~ 1, brat, trace = TRUE)
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