AttuneBench: A Conversation-Based Benchmark for LLM Emotional Intelligence
For researchers and developers of conversational AI, AttuneBench provides a more ecologically valid framework to assess and diagnose LLMs' emotional intelligence in real conversations, revealing that emotionally intelligent behavior requires predicting user-specific response preferences.
AttuneBench introduces a benchmark using 200 real multi-turn conversations with turn-by-turn emotional annotations to evaluate LLMs' emotional intelligence. Results show that emotion recognition, behavioral classification, preference prediction, and response quality are largely independent capabilities, with preference alignment being more model-discriminating than emotion-label accuracy.
Emotional intelligence (EI), the ability to perceive, understand, and respond appropriately to others' emotional states, is central to human communication, and increasingly important to assess as LLMs assume conversational roles in everyday life. Existing EI benchmarks rely on synthetic prompts, single-turn cases, or third-party annotation. These approaches do not directly measure how models infer and respond to a participant's emotional state over the course of a real conversation. We introduce AttuneBench, a benchmark grounded in 200 genuine multi-turn human-model conversations in which participants conversed with anonymized LLMs and provided turn-by-turn annotations of their emotional state, the model's behavior, and their preferred responses. Across 11 evaluated models, we find that model rankings on emotion recognition, behavioral classification, preference prediction, and judged response quality are largely independent, indicating that emotionally intelligent behavior decomposes into separable capabilities. Preference alignment and response-quality judgments are substantially more model-discriminating than emotion-label accuracy. These results indicate that emotionally intelligent behavior requires predicting what kind of response a specific user wants in context, a distinction that aggregate scoring can obscure and that single-turn or synthetic formats cannot directly capture across turns. AttuneBench provides a framework for assessing each of these capabilities and for diagnosing model-specific strengths and failure modes in emotionally salient conversation.