Semantic alignment in hyperbolic space for fine-grained emotion classification

Published: 22 Jun 2025, Last Modified: 22 Jun 2025ACL-SRW 2025 OralEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Fine grained emotion classification, representation learning, single label classification, text classification
Abstract: Existing approaches to fine-grained emotion classification (FEC) often operate in Euclidean space, where the flat geometry limits the ability to distinguish semantically similar emotion labels (e.g., *annoyed* vs. *angry*). While prior research has explored hyperbolic geometry to capture fine-grained label distinctions, it typically relies on predefined hierarchies and overlooks semantically confusable negatives. In this work, we propose HyCoEM, a semantic alignment framework that leverages the Lorentz model of hyperbolic space. Our approach jointly embeds text and label representations into hyperbolic space via the exponential map, and employs a contrastive loss to bring text embeddings closer to their true labels while pushing them away from adaptively selected, semantically similar negatives. This enables the model to learn label embeddings without relying on a predefined hierarchy and better captures subtle distinctions by incorporating information from both positive and challenging negative labels. Experimental results on two benchmark FEC datasets demonstrate the effectiveness of our approach over baseline methods.
Archival Status: Archival
Paper Length: Short Paper (up to 4 pages of content)
Submission Number: 187
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