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Polarization attribution in annotation tasks

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Apunim: Attributing polarization to sociodemographic groups

Repository housing the implementation of the Aposteriori Unimodality (``Apunim'') metric, available as a PyPi module. See the accompanying paper for details: "Quantifying and Attributing Polarization to Annotator Groups" (link pending).

Includes two functions: dfu, which calculates the Distance From Unimodality (and also implements the normalized variant - nDFU), and aposteriori-unimodality, which calculates the apunim metric and associated pvalue. Install with pip install apunim.

See the online documentation for high-level notes, usage examples, and module documentation.

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