Explainability of machine learning approaches in forensic linguistics: a case study in geolinguistic authorship profiling

Dana Roemling, Yves Scherrer, Aleksandra Miletić

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Abstract

Forensic authorship profiling uses linguistic markers to infer characteristics about an author of a text. This task is paralleled in dialect classification, where a prediction is made about the linguistic variety of a text based on the text itself. While there have been significant advances in recent years in variety classification, forensic linguistics rarely relies on these approaches due to their lack of transparency, among other reasons. In this paper we therefore explore the explainability of machine learning approaches considering the forensic context. We focus on variety classification as a means of geolinguistic profiling of unknown texts based on social media data from the German-speaking area. For this, we identify the lexical items that are the most impactful for the variety classification. We find that the extracted lexical features are indeed representative of their respective varieties and note that the trained models also rely on place names for classifications.
Original languageEnglish
Title of host publicationThe first international conference on Natural Language Processing and Artificial Intelligence for Cyber Security, NLPAICS’2024
Subtitle of host publicationProceedings
PublisherLancaster University
Pages10-16
Number of pages6
Publication statusPublished - 29 Jul 2024
EventThe First International Conference on Natural Language Processing and Artificial Intelligence for Cyber Security - University of Lancaster, Lancaster, United Kingdom
Duration: 29 Jul 202430 Jul 2024
Conference number: 1
https://nlpaics.com/

Conference

ConferenceThe First International Conference on Natural Language Processing and Artificial Intelligence for Cyber Security
Abbreviated titleNLPAICS 2024
Country/TerritoryUnited Kingdom
CityLancaster
Period29/07/2430/07/24
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