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Investigate potential use of StochasticAD.jl for non-differentiable models #425

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pat-alt opened this issue Apr 8, 2024 · 2 comments

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@pat-alt
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pat-alt commented Apr 8, 2024

It might be possible to use StochasticAD.jl (see paper) to differentiate models that do not have a continuous dependence on features (such as decision trees).

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pat-alt commented Apr 8, 2024

@mschauer haven't carefully studied your paper yet, so not sure if I'm being overly optimistic here - do think this could work?

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mschauer commented Apr 8, 2024

Probably possible to find models, where it works

cc @gaurav-arya

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