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Enhancing Language Models for Robust Greenwashing Detection

About

Sustainability reports are critical for ESG assessment, yet greenwashing and vague claims often undermine their reliability. Existing NLP models lack robustness to these practices, typically relying on surface-level patterns that generalize poorly. We propose a parameter-efficient framework that structures LLM latent spaces by combining contrastive learning with an ordinal ranking objective to capture graded distinctions between concrete actions and ambiguous claims. Our approach incorporates gated feature modulation to filter disclosure noise and utilizes MetaGradNorm to stabilize multi-objective optimization. Experiments in cross-category settings demonstrate superior robustness over standard baselines while revealing a trade-off between representational rigidity and generalization.

Neil Heinrich Braun, Keane Ong, Rui Mao, Erik Cambria, Gianmarco Mengaldo• 2026

Related benchmarks

TaskDatasetResultRank
Compositional GeneralizationEvaluation Dataset (Full)
Score0.6379
18
Compositional GeneralizationEvaluation Dataset (Fold 2 Seen)
Score63.63
18
Compositional GeneralizationEvaluation Dataset (Fold 3 Seen)
Score66.69
18
Compositional GeneralizationEvaluation Dataset (Fold 1 Seen)
Score0.5794
18
Compositional GeneralizationEvaluation Dataset Seen Average
Score62.31
18
Compositional GeneralizationEvaluation Dataset Unseen (Fold 2)
Score45.66
18
Compositional GeneralizationEvaluation Dataset Unseen (Fold 3)
Score0.3902
18
Compositional GeneralizationEvaluation Dataset (Unseen Average)
Score41.13
18
Compositional GeneralizationEvaluation Dataset Unseen (Fold 1)
Score0.4109
18
Aspect-based Sentiment AnalysisCross-domain ABSA (Full Dataset)
F1 Score72.4
12
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