Conformal Structured Prediction
Conformal prediction has recently emerged as a promising strategy for quantifying the uncertainty of a predictive model; these algorithms modify the model to output sets of labels that are guaranteed to contain the true label with high probability. However, existing conformal prediction algorithms h...
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Zusammenfassung: | Conformal prediction has recently emerged as a promising strategy for
quantifying the uncertainty of a predictive model; these algorithms modify the
model to output sets of labels that are guaranteed to contain the true label
with high probability. However, existing conformal prediction algorithms have
largely targeted classification and regression settings, where the structure of
the prediction set has a simple form as a level set of the scoring function.
However, for complex structured outputs such as text generation, these
prediction sets might include a large number of labels and therefore be hard
for users to interpret. In this paper, we propose a general framework for
conformal prediction in the structured prediction setting, that modifies
existing conformal prediction algorithms to output structured prediction sets
that implicitly represent sets of labels. In addition, we demonstrate how our
approach can be applied in domains where the prediction sets can be represented
as a set of nodes in a directed acyclic graph; for instance, for hierarchical
labels such as image classification, a prediction set might be a small subset
of coarse labels implicitly representing the prediction set of all their more
fine-descendants. We demonstrate how our algorithm can be used to construct
prediction sets that satisfy a desired coverage guarantee in several domains. |
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DOI: | 10.48550/arxiv.2410.06296 |