How are the automatic values of hyper-parameters in Matlab Regression Learner determined?
1 view (last 30 days)
Show older comments
Using Matlab regression learner one can choose the auto option for the values of the various hyper-parameters such as epsilon and Kernel scale mode in SVM's. In this case is stated that if auto is chosen the app uses a heuristic procedure to select the kernel scale. Also the same applies in the Gaussian Processes. When Kernel scale mode is set to Auto, it is stated that the app uses a heuristic procedure to select the initial kernel parameters. -What is the heuristic procedure followed? -Are the values given optimised? -If they are why the "tips" encourage the user to give values manualy?
2 Comments
Bernhard Suhm
on 4 Aug 2018
Are you just trying to understand what's going on, or do you have evidence it's not working as designed?
Answers (1)
Ilya
on 6 Aug 2018
If you type
edit classreg.learning.svmutils.optimalKernelScale
in your MATLAB session and hit Return, the editor will bring up the code for that heuristic procedure.
You won't know if these parameters are optimal or not without doing optimization. These are based on a guess. The guess is often good but it can fail from time to time.
0 Comments
See Also
Categories
Find more on Gaussian Process 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!