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Query-Adaptive Predictive Inference with Partial Labels

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arxiv 2206.07236 v1 pith:WPMEJ73N submitted 2022-06-15 stat.ML cs.LG

Query-Adaptive Predictive Inference with Partial Labels

classification stat.ML cs.LG
keywords predictivedatasupervisedlabeledlabelslearninglosspartial
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The cost and scarcity of fully supervised labels in statistical machine learning encourage using partially labeled data for model validation as a cheaper and more accessible alternative. Effectively collecting and leveraging weakly supervised data for large-space structured prediction tasks thus becomes an important part of an end-to-end learning system. We propose a new computationally-friendly methodology to construct predictive sets using only partially labeled data on top of black-box predictive models. To do so, we introduce "probe" functions as a way to describe weakly supervised instances and define a false discovery proportion-type loss, both of which seamlessly adapt to partial supervision and structured prediction -- ranking, matching, segmentation, multilabel or multiclass classification. Our experiments highlight the validity of our predictive set construction as well as the attractiveness of a more flexible user-dependent loss framework.

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