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HumDial-EIBench

A human-recorded multi-turn emotional intelligence benchmark for audio language models.

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HumDial-EIBench pipeline and task overview

Figure: Three-stage data pipeline and the four evaluation tasks in HumDial-EIBench.

HumDial-EIBench is designed to evaluate whether audio language models (ALMs) truly understand emotion in speech, rather than relying on text transcription shortcuts.

The benchmark is built from authentic human-recorded dialogues from the ICASSP 2026 HumDial Challenge and includes both Chinese and English subsets.


Why HumDial-EIBench

Existing ALM benchmarks often suffer from one or more of these issues:

  • synthetic (TTS-only) speech instead of authentic human recordings
  • single-turn settings that miss emotional evolution over context
  • subjective open-ended scoring that confounds reasoning and generation quality

HumDial-EIBench addresses these gaps by combining:

  • real human multi-turn audio
  • objective adversarial MCQ tasks for reasoning-heavy evaluation
  • a dedicated acoustic-semantic conflict task
  • separate diagnosis of textual empathy vs acoustic empathy

Benchmark at a Glance

  • Total samples: 1,077
  • Languages: Chinese + English
  • Core goal: diagnose emotional intelligence in ALMs across memory, reasoning, generation, and cross-modal robustness
Task Type CN / EN Turns Main Metric
Task 1: Emotional Trajectory Detection MCQ 150 / 150 3-5 Accuracy
Task 2: Implicit Causal Reasoning MCQ 134 / 149 3-5 Accuracy
Task 3: Empathetic Response Generation Open Generation 144 / 150 3-5 LLM + Human
Task 4: Acoustic-Semantic Conflict MCQ 100 / 100 1 Accuracy
Total 528 / 549

Four Tasks

Task 1: Emotional Trajectory Detection

Track emotion changes across dialogue turns (for example, E_t1 -> E_t2 -> E_t3), instead of classifying isolated utterances.

Task 2: Implicit Causal Reasoning

Infer the latent emotional trigger from scattered context clues. The MCQ format helps reduce evaluator subjectivity.

Task 3: Empathetic Response Generation

Evaluate generated responses in three dimensions:

  • D1: Textual Empathy & Insight (LLM-judge, 1-5)
  • D2: Vocal Empathy & Congruence (human rating, 1-5)
  • D3: Audio Quality & Naturalness (human rating, 1-5)

Task 4: Acoustic-Semantic Conflict

Test robustness when text sentiment contradicts vocal affect (for example, sarcasm-like cases), exposing text-dominance bias.


Key Findings

  • Most ALMs still struggle with multi-turn emotional tracking and implicit causal reasoning.
  • Strong decoupling exists between textual empathy and acoustic empathy.
  • All tested models show a notable text-dominance bias under acoustic-semantic conflict.


Data and Code Access


Evaluation Usage

Task 3 (Empathetic Generation) Scoring

eval/eval_task3.py scores model outputs for D1/D2/D3 and writes per-sample + summary results.

Input format (jsonl)

{
  "dialogue_id": "sample_001",
  "turns": [
    {
      "input_emotion": "sad",
      "input_text": "I've been feeling really overwhelmed lately...",
      "response_text": "It sounds like you're carrying a lot right now.",
      "response_audio": "outputs/sample_001_turn1.wav"
    }
  ]
}

Run

python eval/eval_task3.py \
  --model Qwen3-Omni-30B-A3B-Instruct \
  --input_file results/task3_outputs.jsonl \
  --output_file results/task3_scores.jsonl

The script automatically identifies the target evaluation turn (second non-neutral turn) and builds context from prior turns.

Environment note: this script requires a GPU runtime and vLLM. Set the local judge checkpoint path in eval/eval_task3.py before running.



Citation

If you find this work useful, please cite:

@misc{wang2026humdialeibenchhumanrecordedmultiturnemotional,
      title={HumDial-EIBench: A Human-Recorded Multi-Turn Emotional Intelligence Benchmark for Audio Language Models}, 
      author={Shuiyuan Wang and Zhixian Zhao and Hongfei Xue and Chengyou Wang and Shuai Wang and Hui Bu and Xin Xu and Lei Xie},
      year={2026},
      eprint={2604.11594},
      archivePrefix={arXiv},
      primaryClass={eess.AS},
      url={https://arxiv.org/abs/2604.11594}, 
}

License

The code in this repository is released under the Apache 2.0 License.

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