English

EchoMind: An Interrelated Multi-level Benchmark for Evaluating Empathetic Speech Language Models

Computation and Language 2026-03-06 v2

Abstract

Speech Language Models (SLMs) have made significant progress in spoken language understanding. Yet it remains unclear whether they can fully perceive non lexical vocal cues alongside spoken words, and respond with empathy that aligns with both emotional and contextual factors. Existing benchmarks typically evaluate linguistic, acoustic, reasoning, or dialogue abilities in isolation, overlooking the integration of these skills that is crucial for human-like, emotionally intelligent conversation. We present EchoMind, the first interrelated, multi-level benchmark that simulates the cognitive process of empathetic dialogue through sequential, context-linked tasks: spoken-content understanding, vocal-cue perception, integrated reasoning, and response generation. All tasks share identical and semantically neutral scripts that are free of explicit emotional or contextual cues, and controlled variations in vocal style are used to test the effect of delivery independent of the transcript. EchoMind is grounded in an empathy-oriented framework spanning 3 coarse and 12 fine-grained dimensions, encompassing 39 vocal attributes, and evaluated using both objective and subjective metrics. Testing 12 advanced SLMs reveals that even state-of-the-art models struggle with high-expressive vocal cues, limiting empathetic response quality. Analyses of prompt strength, speech source, and ideal vocal cue recognition reveal persistent weaknesses in instruction-following, resilience to natural speech variability, and effective use of vocal cues for empathy. These results underscore the need for SLMs that integrate linguistic content with diverse vocal cues to achieve truly empathetic conversational ability.

Keywords

Cite

@article{arxiv.2510.22758,
  title  = {EchoMind: An Interrelated Multi-level Benchmark for Evaluating Empathetic Speech Language Models},
  author = {Li Zhou and Lutong Yu and You Lyu and Yihang Lin and Zefeng Zhao and Junyi Ao and Yuhao Zhang and Benyou Wang and Haizhou Li},
  journal= {arXiv preprint arXiv:2510.22758},
  year   = {2026}
}

Comments

Speech Language Models, Spoken Language Understanding, Vocal Cue Perception, Empathetic Dialogue, Benchmark Evaluation; Accepted by ICLR 2026

R2 v1 2026-07-01T07:06:40.254Z