Ylva Söderfeldt


2025

Historical magazines are a valuable resource for understanding the past, offering insights into everyday life, culture, and evolving social attitudes. They often feature diverse layouts and genres. Short stories, guides, announcements, and promotions can all appear side by side on the same page. Without grouping these documents by genre, term counts and topic models may lead to incorrect interpretations.This study takes a step towards addressing this issue by focusing on genre classification within a digitized collection of European medical magazines in Swedish and German. We explore 2 scenarios: 1) leveraging the available web genre datasets for zero-shot genre prediction, 2) semi-supervised learning over the few-shot setup. This paper offers the first experimental insights in this direction.We find that 1) with a custom genre scheme tailored to historical dataset characteristics it is possible to effectively utilize categories from web genre datasets for cross-domain and cross-lingual zero-shot prediction, 2) semi-supervised training gives considerable advantages over few-shot for all models, particularly for the historical multilingual BERT.