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rpf (version 0.3)

rpf.1dim.fit: Calculate item and person Rasch fit statistics

Description

Note: These statistics are only appropriate if all discrimination parameters are fixed equal and items are conditionally independent (see ChenThissen1997). A best effort is made to cope with missing data.

Usage

rpf.1dim.fit(spec, params, responses, scores, margin, group = NULL,
  wh.exact = TRUE)

Arguments

spec
list of item models
params
matrix of item parameters, 1 per column
responses
persons in rows and items in columns
scores
model derived person scores
margin
for people 1, for items 2
wh.exact
whether to use the exact Wilson-Hilferty transformation
group
spec, params, data, and scores can be provided in a list instead of as arguments

Details

Exact distributional properties of these statistics are unknown (Masters & Wright, 1997, p. 112). For details on the calculation, refer to Wright & Masters (1982, p. 100).

The Wilson-Hilferty transformation is biased for less than 25 items. Consider wh.exact=FALSE for less than 25 items.

References

Masters, G. N. & Wright, B. D. (1997). The Partial Credit Model. In W. van der Linden & R. K. Kambleton (Eds.), Handbook of modern item response theory (pp. 101-121). Springer.

Wilson, E. B., & Hilferty, M. M. (1931). The distribution of chi-square. Proceedings of the National Academy of Sciences of the United States of America, 17, 684-688.

Wright, B. D. & Masters, G. N. (1982). Rating Scale Analysis. Chicago: Mesa Press.