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Rethinking the Authorship Verification Experimental Setups

New splits of the PAN dataset and evaluations of BERT-like models reveal biases toward named entities in authorship verification, improving results when trained without them.

Year
2021
Venue
arXiv 2021
Authors
6
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arxiv.org/abs/2112.05125v2ARXIV-DEFAULT
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Abstract

One of the main drivers of the recent advances in authorship verification is the PAN large-scale authorship dataset. Despite generating significant progress in the field, inconsistent performance differences between the closed and open test sets have been reported. To this end, we improve the experimental setup by proposing five new public splits over the PAN dataset, specifically designed to isolate and identify biases related to the text topic and to the author's writing style. We evaluate several BERT-like baselines on these splits, showing that such models are competitive with authorship verification state-of-the-art methods. Furthermore, using explainable AI, we find that these baselines are biased towards named entities. We show that models trained without the named entities obtain better results and generalize better when tested on DarkReddit, our new dataset for authorship verification.

Authors

6