Learn R Programming

NPCD (version 1.0-11)

CDP: Probability of correct response for cognitive diagnostic models

Description

This function returns the model-predicted probability of correct response of one item for one person given the item parameters, Q vector, and alpha vector. Currently supported cognitive diagnostic models include the DINA model, DINO model, NIDA model, G-NIDA model, and R-RUM model. This function is called by the ItemFit function in the package.

Usage

CDP(Q, par, alpha, model = c("DINA", "DINO", "NIDA", "GNIDA", "RRUM"))

Arguments

Q

The Q-vector of the item. Columns represent attributes. 1=attribute required by the item, 0=attribute not required by the item.

par

A list of parameters. DINA & DINO --- par$slip: a scaler slip parameter for the item; par$guess: a scaler guessing parameter for the item. NIDA --- par$slip: a vector of slip parameters for each attribute; par$guess: a vector of guessing parameters for each attribute. GNIDA --- par$slip: a vector of slip parameters for each attribute for the item; par$guess: a vector of guessing parameters for each attribute for the item. RRUM --- par$pi: a scaler pi parameter for the item; par$r: a vector of r parameters for each attribute for the item.

alpha

A vector of examinee ability profile. 1=examinee masters the attribute, 0=examinee does not master the attribute.

model

Currently supports five models: "DINA", "DINO", "NIDA", "GNIDA", and "RRUM". The default is "DINA".

Value

P

The probability of correct response for the item by the person.

Examples

Run this code
# NOT RUN {
# Generate item and examinee profiles

Q <- c(1, 0, 0)
alpha <- c(1, 0, 0)
slip <- 0.2
guess <- 0.1
my.par <- list(slip=slip, guess=guess)
CDP(Q, my.par, alpha, model="DINA")
# }

Run the code above in your browser using DataLab