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Differentiable version of FNMR@FMR metric to use it as loss #246
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Any updates/progress on this? |
Unfortunately, I don't have enough resources either, but this is something I’d bring on top of my (and hopefully your) list! |
Got it! |
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 :) |
@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! |
A paper for inspiration: link.
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