Hi, I'm trying to figure out how to have R estimate partial derivatives for logit models. As an example, I'm providing a (fake) scored observation in a MNL with 3 categories of Y and 2 predictors (x01 and x02), and show the right way to calculate it, but am looking for how to use an R function, such as deriv() or anything else. Here is my attempt: ### Variables for an observation x01 <- 0.2 x02 <- 0.1 ### Parameters for an observation b00.1 <- 0.5 b00.2 <- 0.3 b00.3 <- 0 b01.1 <- 0.4 b01.2 <- 0.5 b01.3 <- 0 b02.1 <- 0.3 b02.2 <- -0.1 b02.3 <- 0 ### Predicted Probabilities for an observation phat1 <- 0.6 phat2 <- 0.3 phat3 <- 0.1 ### Correct way to calculate a partial derivative partial.b01.1 <- phat1 * (b01.1 - (b01.1*phat1+b01.2*phat2+b01.3*phat3)) partial.b01.2 <- phat2 * (b01.2 - (b01.1*phat1+b01.2*phat2+b01.3*phat3)) partial.b01.3 <- phat3 * (b01.3 - (b01.1*phat1+b01.2*phat2+b01.3*phat3)) partial.b01.1; partial.b01.2; partial.b01.3 ### Test method...so far, using the deriv() function test <- deriv(phat1 ~ exp(b00.1+b01.1*x01+b02.1*x02) / (exp(b00.1+b01.1*x01+b02.1*x02)+exp(b00.2+b01.2*x01+b02.2*x02)+ exp(b00.3+b01.3*x01+b02.3*x02)), c("x01")) eval(test) Obviously I'm not on the right path. How do I set up something like this? I've read (probably not well enough) the ?deriv() information and found a few threads on here about partial derivatives, but I can't figure it out. Thanks for any suggestions. -- View this message in context: http://www.nabble.com/Partial-Derivatives-in-logit-tp23084203p23084203.html Sent from the R help mailing list archive at Nabble.com.