Compute Conditional Probability of Each Observed Outcome Given Each True Outcome, for Every Subject
pistar_compute(gamma, Z, n, n_cat)
pistar_compute
returns a matrix of conditional probabilities,
\(P(Y_i^* = k | Y_i = j, Z_i) = \frac{\text{exp}\{\gamma_{kj0} + \gamma_{kjZ} Z_i\}}{1 + \text{exp}\{\gamma_{kj0} + \gamma_{kjZ} Z_i\}}\)
for each of the \(i = 1, \dots,\)
n
subjects. Rows of the matrix
correspond to each subject and observed outcome. Specifically, the probability
for subject \(i\) and observed category $1$ occurs at row \(i\). The probability
for subject \(i\) and observed category $2$ occurs at row \(i +\)
n
.
Columns of the matrix correspond to the true outcome categories \(j = 1, \dots,\)
n_cat
.
A numeric matrix of regression parameters for the observed
outcome mechanism, Y* | Y
(observed outcome, given the true outcome) ~ Z
(misclassification
predictor matrix). Rows of the matrix correspond to parameters for the Y* = 1
observed outcome, with the dimensions of Z
.
Columns of the matrix correspond to the true outcome categories
\(j = 1, \dots,\) n_cat
.
A numeric design matrix.
An integer value specifying the number of observations in the sample.
This value should be equal to the number of rows of the design matrix, Z
.
The number of categorical values that the true outcome, Y
,
and the observed outcome, Y*
can take.