pams {profileR} | R Documentation |
Profile Analysis via Multidimensional Scaling
Description
The pams
function implements profile analysis via multidimensional scaling as described by Davison, Davenport, and Bielinski (1995) and Davenport, Ding, and Davison (1995).
Usage
pams(data, dim)
Arguments
data |
A data matrix or data frame; rows represent individuals, columns represent scores; missing scores are not allowed. |
dim |
Number of dimensions to be extracted from the data. |
Details
The pams
function computes similarity/dissimilarity indices based on Euclidean distances between the scores provided in the data, and then extracts dimensional coordinates for each score using multidimensional scaling. A weight matrix, level parameters, and fit measures are computed for each subject in the data.
Value
-
dimensional.configuration
- A matrix that provides prototypical profiles of dimensions extracted from the data. -
weights.matrix
- A matrix that includes the subject correspondence weights for all dimensions, level parameters, and the subject fit measure which is the proportion of variance in the subject's actual profiles accounted for by the prototypical profiles.
References
Davenport, E. C., Ding, S., & Davison, M. L. (1995). PAMS: SAS Template.
Davison, M. L., Davenport, E. C., & Bielinski, J. (1995). PAMS: SPSS Template.
See Also
Examples
## Not run:
data(PS)
result <- pams(PS[,2:4], dim=2)
result
## End(Not run)