CEI: A Benchmark for Evaluating Pragmatic Reasoning in Language Models
Abstract
Pragmatic reasoning, inferring intended meaning beyond literal semantics, underpins everyday communication yet remains difficult for large language models. We present the Contextual Emotional Inference (CEI) Benchmark: 300 human-validated scenarios for evaluating how well LLMs disambiguate pragmatically complex utterances. Each scenario pairs a situational context and speaker-listener roles (with explicit power relations) against an ambiguous utterance. The dataset covers five pragmatic subtypes (sarcasm/irony, mixed signals, strategic politeness, passive aggression, deflection/misdirection) drawn from workplace, family, social, and service settings, with three power configurations (peer, higher-to-lower, lower-to-higher). Three trained annotators independently labeled every scenario. Inter-annotator agreement (Fleiss' kappa = 0.06-0.25 by subtype) is low but expected: pragmatic inference admits multiple valid readings, and the disagreement itself is informative. We describe our annotation methodology, including a 4-level quality control pipeline that combines automated statistical checks with expert adjudication. CEI is released under CC-BY-4.0.
Cite
@article{arxiv.2603.09993,
title = {CEI: A Benchmark for Evaluating Pragmatic Reasoning in Language Models},
author = {Jon Chun and Hannah Sussman and Adrian Mangine and Murathan Kocaman and Kirill Sidorko and Abhigya Koirala and Andre McCloud and Gwen Eisenbeis and Wisdom Akanwe and Moustapha Gassama and Eliezer Gonzalez Chirinos and Anne-Duncan Enright and Peter Dunson and Tiffanie Ng and Anna von Rosenstiel and Godwin Idowu},
journal= {arXiv preprint arXiv:2603.09993},
year = {2026}
}
Comments
38 pages, 10 figures