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CrossNews-UA: A Cross-Lingual News Semantic Similarity Benchmark for Ukrainian, Polish, Russian, and English

MCML Authors

Link to Profile Alexander Fraser PI Matchmaking

Alexander Fraser

Prof. Dr.

Principal Investigator

Abstract

In the era of social networks and rapid misinformation spread, news analysis remains a critical task. Detecting fake news across multiple languages, particularly beyond English, poses significant challenges. Cross-lingual news comparison offers a promising approach to verify information by leveraging external sources in different languages (Chen and Shu, 2024). However, existing datasets for cross-lingual news analysis (Chen et al., 2022a) were manually curated by journalists and experts, limiting their scalability and adaptability to new languages. In this work, we address this gap by introducing a scalable, explainable crowdsourcing pipeline for cross-lingual news similarity assessment. Using this pipeline, we collected a novel dataset CrossNews-UA of news pairs in Ukrainian as a central language with linguistically and contextually relevant languages-Polish, Russian, and English. Each news pair is annotated for semantic similarity with detailed justifications based on the 4W criteria (Who, What, Where, When). We further tested a range of models, from traditional bag-of-words, Transformer-based architectures to large language models (LLMs). Our results highlight the challenges in multilingual news analysis and offer insights into models performance.

misc


Preprint

Oct. 2025

Authors

D. Dementieva • E. Sukhodolskaya • A. Fraser

Links


Research Area

 B2 | Natural Language Processing

BibTeXKey: DSF25

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