MLSD

A Novel Few-Shot Learning Approach to Enhance Cross-Target and Cross-Domain Stance Detection

Authors

DOI:

https://doi.org/10.32473/flairs.39.1.141754

Keywords:

Stance Detection, Deep Learning, Applied Natural Language Processing, Contrastive learning

Abstract

We present a novel approach for stance detection across domains and targets, Metric Learning-Based Few-Shot Learning for Cross-Target and Cross-Domain Stance Detection (MLSD). MLSD utilizes metric learning with triplet loss to capture semantic similarities and differences between stance targets, enhancing domain adaptation. By constructing a discriminative embedding space, MLSD allows a cross-target or cross-domain stance detection model to acquire useful examples from new target domains. We evaluate MLSD in multiple cross-target and cross-domain scenarios across two datasets, showing statistically significant improvement in stance detection performance across six widely used stance detection models.

Author Biography

Tempestt Neal, University of South Florida

 I am an Associate Professor in the Bellini College of Artificial Intelligence, Cybersecurity and Computing at the University of South Florida. I earned my Ph.D. in Computer Engineering from the University of Florida (2018), M.S. in Computer Science from Clemson University (2014), and B.S. in Computer Science with a minor in Mathematics from South Carolina State University (2012).

I focus on human-centered AI, human-centered cybersecurity, and biometric intelligence, using behavioral and biometric signals to model identity and interaction patterns, and to inform the development of systems that balance usability, trust, and security.

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Published

06-05-2026

How to Cite

Gera, P., & Neal, T. (2026). MLSD: A Novel Few-Shot Learning Approach to Enhance Cross-Target and Cross-Domain Stance Detection. The International FLAIRS Conference Proceedings, 39(1). https://doi.org/10.32473/flairs.39.1.141754

Issue

Section

Special Track: Applied Natural Language Processing