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LeQua@CLEF2022: Learning to Quantify

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arxiv 2111.11249 v3 pith:I5H3DQM6 submitted 2021-11-22 cs.LG cs.IR

LeQua@CLEF2022: Learning to Quantify

classification cs.LG cs.IR
keywords settingdocumentslearningmethodsquantifyclassesevaluationform
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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LeQua 2022 is a new lab for the evaluation of methods for "learning to quantify" in textual datasets, i.e., for training predictors of the relative frequencies of the classes of interest in sets of unlabelled textual documents. While these predictions could be easily achieved by first classifying all documents via a text classifier and then counting the numbers of documents assigned to the classes, a growing body of literature has shown this approach to be suboptimal, and has proposed better methods. The goal of this lab is to provide a setting for the comparative evaluation of methods for learning to quantify, both in the binary setting and in the single-label multiclass setting. For each such setting we provide data either in ready-made vector form or in raw document form.

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