Clear Filters
Clear Filters

The mathematical details of using regression kernel for incremental learning

1 view (last 30 days)
You state that in incremental learning using regression kernel "binary Gaussian kernel regression model for incremental learning. The kernel model maps data in a low-dimensional space into a high-dimensional space, then fits a linear model in the high-dimensional space."
I am writing a paper so I need mathematical details of mapping that maps data to high dimensional space

Answers (1)

Drew
Drew on 15 May 2024
Edited: Drew on 15 May 2024
The documentation page that you quoted has an "Algorithms" section, and a set of references. You will likely find the answers you need in those places. See: https://www.mathworks.com/help/stats/incrementalregressionkernel.html#mw_7228730b-3b97-423b-b291-375152326425
If this answer helps you, please remember to accept the answer.
  3 Comments
Drew
Drew on 15 May 2024
Edited: Drew on 15 May 2024
Check the "More About" section of the corresponding doc page, fitrkernel, which has a section on "Random Feature Expansion", describing the mathematics for the feature expansion:
For more beyond that, the references for fitrkernel and incrementalRegressionKernel have more info.
You can also use "open incrementalRegressionKernel.m" at the MATLAB prompt to read the m-file help which has a few examples referencing fitrkernel:
open incrementalRegressionKernel.m
Yasmine
Yasmine on 18 May 2024
The information I am asking about is not directly available, but I think with reading deep into the link you provided here, I will be able to extract it

Sign in to comment.

Products


Release

R2024a

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!