On the State of the Art in Authorship Attribution and Authorship Verification
This work addresses the lack of standardized benchmarks in authorship analysis, providing a tool for researchers to make fair comparisons, though it is incremental in improving evaluation practices.
The paper tackles the problem of inconsistent evaluation in authorship attribution and verification by introducing Valla, a standardized benchmarking framework, and finds that a traditional Ngram-based model performs best on most AA tasks with an average macro-accuracy of 76.50%, while BERT-based models excel in specific scenarios.
Despite decades of research on authorship attribution (AA) and authorship verification (AV), inconsistent dataset splits/filtering and mismatched evaluation methods make it difficult to assess the state of the art. In this paper, we present a survey of the fields, resolve points of confusion, introduce Valla that standardizes and benchmarks AA/AV datasets and metrics, provide a large-scale empirical evaluation, and provide apples-to-apples comparisons between existing methods. We evaluate eight promising methods on fifteen datasets (including distribution-shifted challenge sets) and introduce a new large-scale dataset based on texts archived by Project Gutenberg. Surprisingly, we find that a traditional Ngram-based model performs best on 5 (of 7) AA tasks, achieving an average macro-accuracy of $76.50\%$ (compared to $66.71\%$ for a BERT-based model). However, on the two AA datasets with the greatest number of words per author, as well as on the AV datasets, BERT-based models perform best. While AV methods are easily applied to AA, they are seldom included as baselines in AA papers. We show that through the application of hard-negative mining, AV methods are competitive alternatives to AA methods. Valla and all experiment code can be found here: https://github.com/JacobTyo/Valla