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TeamHerald@CHIPSAL 2026: Hate Speech Detection and Sentiment Analysis of Nepali Memes Using Transformer-based Architectures and Ensemble Learning

Proceedings of the Second workshop on Challenges in Processing South Asian Languages (CHiPSAL2026)

DOI:10.63317/328gg52ap2qp

Abstract

The analysis of internet memes in the Nepali language is complicated by frequent code-mixing and a lack of established baseline resources. While memes inherently combine visual and textual elements, this study focuses on a text-centric approach by extracting embedded text using an OCR layer and modeling it with Transformer-based architectures. We evaluate six distinct models and investigate the comparative effectiveness of Hard and Soft Voting ensemble strategies across two tasks: binary hate speech detection and three-class sentiment analysis. Experimental results show that a standalone decoder-only model achieved the highest performance for binary classification, whereas the Soft Voting ensemble performed best for the multi-class sentiment task, yielding a 15.8% relative improvement in Macro F1-score over the strongest standalone baseline. These findings suggest that ensemble strategies behave differently across binary and multi-class tasks, highlighting the importance of selecting aggregation methods suited to the classification objective.

Details

Paper ID
lrec2026-ws-chipsal-24
Pages
pp. 244-249
BibKey
acharya-etal-2026-teamherald
Editors
Kengatharaiyer Sarveswaran, Ashwini Vaidya
Publisher
European Language Resources Association (ELRA)
ISSN
N/A
ISBN
N/A
Workshop
Proceedings of the Second workshop on Challenges in Processing South Asian Languages (CHiPSAL2026)
Location
Palma, Mallorca, Spain
Date
11 - 16 May 2026

Authors

  • AA

    Ashish Acharya

  • AK

    Anish Khatiwada

  • RK

    Rohit Khadka

  • PA

    Pragya Aryal

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