Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Differentiable version of FNMR@FMR metric to use it as loss #246

Open
AlekseySh opened this issue Nov 30, 2022 · 6 comments
Open

Differentiable version of FNMR@FMR metric to use it as loss #246

AlekseySh opened this issue Nov 30, 2022 · 6 comments
Labels

Comments

@AlekseySh
Copy link
Contributor

AlekseySh commented Nov 30, 2022

A paper for inspiration: link.

@deepslug
Copy link

Any updates/progress on this?

@AlekseySh
Copy link
Contributor Author

@deepslug Nope, not enough resources. Do you want to try it? If so, the idea is that we want to adapt the approach from this paper and make FNMR@FMR metric differentiable.

@deepslug
Copy link

Unfortunately, I don't have enough resources either, but this is something I’d bring on top of my (and hopefully your) list!

@AlekseySh
Copy link
Contributor Author

Got it!

@deepslug
Copy link

As I mentioned in my previous comment on the post, I work in the field of biometrics and am keen on seeing the differential version of FNMR@FMR as it can directly optimize the metric. Given the recent active development of OML, I wanted to add this comment to bump up the thread :)

@AlekseySh
Copy link
Contributor Author

@deepslug thank you for you comment. I'd like to add that we've already implemented similar idea in OML. There is SurrogatePricisonLoss -- differentiable version of Precision metric. Experiments showed it was able to perform on SOTA level. So, it would be interesting to apply similar idea to FNMR@FMR.

Contributors are welcome!

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
Projects
None yet
Development

No branches or pull requests

2 participants