Saved in:
Bibliographic Details
Main Authors: Vaiciukynas, Evaldas, Danenas, Paulius, Ablonskis, Linas, Sukys, Algirdas, Dambrauskas, Edgaras, Zitkus, Voldemaras, Butkiene, Rita, Butleris, Rimantas
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.14907
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911598296170496
author Vaiciukynas, Evaldas
Danenas, Paulius
Ablonskis, Linas
Sukys, Algirdas
Dambrauskas, Edgaras
Zitkus, Voldemaras
Butkiene, Rita
Butleris, Rimantas
author_facet Vaiciukynas, Evaldas
Danenas, Paulius
Ablonskis, Linas
Sukys, Algirdas
Dambrauskas, Edgaras
Zitkus, Voldemaras
Butkiene, Rita
Butleris, Rimantas
contents Online hate speech and abusive language pose a growing challenge for content moderation, especially in multilingual settings and for low-resource languages such as Lithuanian. This paper investigates to what extent modern multilingual sentence embedding models can support accurate hate speech detection in Lithuanian, Russian, and English, and how their performance depends on downstream modeling choices and feature dimensionality. We introduce LtHate, a new Lithuanian hate speech corpus derived from news portals and social networks, and benchmark six modern multilingual encoders (potion, gemma, bge, snow, jina, e5) on LtHate, RuToxic, and EnSuperset using a unified Python pipeline. For each embedding, we train both a one class HBOS anomaly detector and a two class CatBoost classifier, with and without principal component analysis (PCA) compression to 64-dimensional feature vectors. Across all datasets, two class supervised models consistently and substantially outperform one class anomaly detection, with the best configurations achieving up to 80.96% accuracy and AUC ROC of 0.887 in Lithuanian (jina), 92.19% accuracy and AUC ROC of 0.978 in Russian (e5), and 77.21% accuracy and AUC ROC of 0.859 in English (e5 with PCA). PCA compression preserves almost all discriminative power in the supervised setting, while showing some negative impact for the unsupervised anomaly detection case. These results demonstrate how modern multilingual sentence embeddings combined with gradient boosted decision trees provide robust soft-computing solutions for multilingual hate speech detection applications.
format Preprint
id arxiv_https___arxiv_org_abs_2604_14907
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Comparison of Modern Multilingual Text Embedding Techniques for Hate Speech Detection Task
Vaiciukynas, Evaldas
Danenas, Paulius
Ablonskis, Linas
Sukys, Algirdas
Dambrauskas, Edgaras
Zitkus, Voldemaras
Butkiene, Rita
Butleris, Rimantas
Computation and Language
Machine Learning
68T50
I.7.0
Online hate speech and abusive language pose a growing challenge for content moderation, especially in multilingual settings and for low-resource languages such as Lithuanian. This paper investigates to what extent modern multilingual sentence embedding models can support accurate hate speech detection in Lithuanian, Russian, and English, and how their performance depends on downstream modeling choices and feature dimensionality. We introduce LtHate, a new Lithuanian hate speech corpus derived from news portals and social networks, and benchmark six modern multilingual encoders (potion, gemma, bge, snow, jina, e5) on LtHate, RuToxic, and EnSuperset using a unified Python pipeline. For each embedding, we train both a one class HBOS anomaly detector and a two class CatBoost classifier, with and without principal component analysis (PCA) compression to 64-dimensional feature vectors. Across all datasets, two class supervised models consistently and substantially outperform one class anomaly detection, with the best configurations achieving up to 80.96% accuracy and AUC ROC of 0.887 in Lithuanian (jina), 92.19% accuracy and AUC ROC of 0.978 in Russian (e5), and 77.21% accuracy and AUC ROC of 0.859 in English (e5 with PCA). PCA compression preserves almost all discriminative power in the supervised setting, while showing some negative impact for the unsupervised anomaly detection case. These results demonstrate how modern multilingual sentence embeddings combined with gradient boosted decision trees provide robust soft-computing solutions for multilingual hate speech detection applications.
title Comparison of Modern Multilingual Text Embedding Techniques for Hate Speech Detection Task
topic Computation and Language
Machine Learning
68T50
I.7.0
url https://arxiv.org/abs/2604.14907