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March 18, 2019 16:11
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Calculate entropy R2 for poLCA model
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# MIT license | |
# Author: Daniel Oberski | |
# Input: result of a poLCA model fit | |
# Output: entropy R^2 statistic (Vermunt & Magidson, 2013, p. 71) | |
# See: daob.nl/wp-content/uploads/2015/07/ESRA-course-slides.pdf | |
# And: https://www.statisticalinnovations.com/wp-content/uploads/LGtecnical.pdf | |
machine_tolerance <- sqrt(.Machine$double.eps) | |
entropy.R2 <- function(fit) { | |
entropy <- function(p) { | |
p <- p[p > machine_tolerance] # since Lim_{p->0} p log(p) = 0 | |
sum(-p * log(p)) | |
} | |
error_prior <- entropy(fit$P) # Class proportions | |
error_post <- mean(apply(fit$posterior, 1, entropy)) | |
R2_entropy <- (error_prior - error_post) / error_prior | |
R2_entropy | |
} |
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A few people have been writing me to point out that the code I shared in a slide here was wrong. It did not acccount for 0 and 1 posteriors in calculating entropy. This code assumes p*log(p) = 0) to deal with that issue. It is meant to work with the poLCA package in R for latent class analysis.
Code is provided as-is, without warranties, under the MIT license.