Learn R Programming

nomclust (version 2.1.6)

lin1: Lin 1 (LIN1) Measure

Description

A function for calculation of a proximity (dissimilarity) matrix based on the LIN1 similarity measure.

Usage

lin1(data)

Arguments

data

A data.frame or a matrix with cases in rows and variables in colums.

Value

The function returns a dissimilarity matrix of the size n x n, where n is the number of objects in the original dataset in the argument data.

Details

The Lin 1 similarity measure was introduced in (Boriah et al., 2008) as a modification of the original Lin measure (Lin, 1998). In has a complex system of weights. In case of mismatch, lower similarity is assigned if either the mismatching values are very frequent or their relative frequency is in between the relative frequencies of mismatching values. Higher similarity is assigned if the mismatched categories are infrequent and there are a few other infrequent categories. In case of match, lower similarity is given for matches on frequent categories or matches on categories that have many other values of the same frequency. Higher similarity is given to matches on infrequent categories.

References

Boriah S., Chandola V., Kumar V. (2008). Similarity measures for categorical data: A comparative evaluation. In: Proceedings of the 8th SIAM International Conference on Data Mining, SIAM, p. 243-254.

Lin D. (1998). An information-theoretic definition of similarity. In: ICML '98: Proceedings of the 15th International Conference on Machine Learning. San Francisco, p. 296-304.

See Also

eskin, good1, good2, good3, good4, iof, lin, morlini, of, sm, ve, vm.

Examples

Run this code
# NOT RUN {
# sample data
data(data20)

# dissimilarity matrix calculation
prox.lin1 <- lin1(data20)

# }

Run the code above in your browser using DataLab