Saved in:
Bibliographic Details
Main Authors: Hossain, Md. Mithun, Alrasheedy, Mashary N., Bhowmick, Nirban, Forhad, Shamim, Hossain, Md. Shakil, Chaki, Sudipto, Islam, Md Shafiqul
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.05471
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914320789536768
author Hossain, Md. Mithun
Alrasheedy, Mashary N.
Bhowmick, Nirban
Forhad, Shamim
Hossain, Md. Shakil
Chaki, Sudipto
Islam, Md Shafiqul
author_facet Hossain, Md. Mithun
Alrasheedy, Mashary N.
Bhowmick, Nirban
Forhad, Shamim
Hossain, Md. Shakil
Chaki, Sudipto
Islam, Md Shafiqul
contents Contemporary knowledge-based systems increasingly rely on multilingual emotion identification to support intelligent decision-making, yet they face major challenges due to emotional ambiguity and incomplete supervision. Emotion recognition from text is inherently uncertain because multiple emotional states often co-occur and emotion annotations are frequently missing or heterogeneous. Most existing multi-label emotion classification methods assume fully observed labels and rely on deterministic learning objectives, which can lead to biased learning and unreliable predictions under partial supervision. This paper introduces Reasoning under Ambiguity, an uncertainty-aware framework for multilingual multi-label emotion classification that explicitly aligns learning with annotation uncertainty. The proposed approach uses a shared multilingual encoder with language-specific optimization and an entropy-based ambiguity weighting mechanism that down-weights highly ambiguous training instances rather than treating missing labels as negative evidence. A mask-aware objective with positive-unlabeled regularization is further incorporated to enable robust learning under partial supervision. Experiments on English, Spanish, and Arabic emotion classification benchmarks demonstrate consistent improvements over strong baselines across multiple evaluation metrics, along with improved training stability, robustness to annotation sparsity, and enhanced interpretability.
format Preprint
id arxiv_https___arxiv_org_abs_2602_05471
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Reasoning under Ambiguity: Uncertainty-Aware Multilingual Emotion Classification under Partial Supervision
Hossain, Md. Mithun
Alrasheedy, Mashary N.
Bhowmick, Nirban
Forhad, Shamim
Hossain, Md. Shakil
Chaki, Sudipto
Islam, Md Shafiqul
Computation and Language
Contemporary knowledge-based systems increasingly rely on multilingual emotion identification to support intelligent decision-making, yet they face major challenges due to emotional ambiguity and incomplete supervision. Emotion recognition from text is inherently uncertain because multiple emotional states often co-occur and emotion annotations are frequently missing or heterogeneous. Most existing multi-label emotion classification methods assume fully observed labels and rely on deterministic learning objectives, which can lead to biased learning and unreliable predictions under partial supervision. This paper introduces Reasoning under Ambiguity, an uncertainty-aware framework for multilingual multi-label emotion classification that explicitly aligns learning with annotation uncertainty. The proposed approach uses a shared multilingual encoder with language-specific optimization and an entropy-based ambiguity weighting mechanism that down-weights highly ambiguous training instances rather than treating missing labels as negative evidence. A mask-aware objective with positive-unlabeled regularization is further incorporated to enable robust learning under partial supervision. Experiments on English, Spanish, and Arabic emotion classification benchmarks demonstrate consistent improvements over strong baselines across multiple evaluation metrics, along with improved training stability, robustness to annotation sparsity, and enhanced interpretability.
title Reasoning under Ambiguity: Uncertainty-Aware Multilingual Emotion Classification under Partial Supervision
topic Computation and Language
url https://arxiv.org/abs/2602.05471