How to run Logistic Regression in matlab
12 views (last 30 days)
Show older comments
How can i apply Logistic Regression in Matlab when the function is logistic (Not logit)? Is there a built-in function?
I need to use the function seen at the following link: http://mathgotchas.blogspot.co.il/2011/10/why-is-error-function-minimized-in.html
Please Advice and thanks.
0 Comments
Answers (1)
Image Analyst
on 15 May 2016
Description
B = mnrfit(X,Y) returns a matrix, B, of coefficient estimates for a multinomial logistic regression of the nominal responses in Y on the predictors in X.
load fisheriris
% The column vector, species, consists of iris flowers of three different species, setosa, versicolor, virginica. The double matrix meas consists of four types of measurements on the flowers, the length and width of sepals and petals in centimeters, respectively.
% Define the nominal response variable using a categorical array.
sp = categorical(species);
% Fit a multinomial regression model to predict the species using the measurements.
[B,dev,stats] = mnrfit(meas,sp);
B
4 Comments
Bernhard Suhm
on 7 May 2020
Unfortunately, observation weights are currently not supported in multinomial regression. And mnrfit's link function defaults to 'logit', so above syntax would have used that.
However, you can provide observation weights if you use ftglm instead of the multinomial mnrfit, and it also has a couple alternatives to logit link.
So something like mdl = fitglm(meas,sp,'Distribution','binomial','Link','probit','Weights',obsWeights);
See Also
Categories
Find more on Linear Regression in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!