AICLHCMay 4

The 2026 ACII Dyadic Conversations (DaiKon) Workshop & Challenge

arXiv:2605.0267230.6
AI Analysis

This benchmark addresses the gap in speaker-centric conversational affect modeling by providing a shared dataset and evaluation platform for dyadic interaction research, though it is an incremental contribution as it primarily organizes existing data and tasks.

The paper introduces the ACII-DaiKon benchmark for modeling interpersonal affect and social dynamics in dyadic conversations, with three sub-challenges: directional influence prediction, turn-taking prediction, and rapport trajectory prediction. Baseline results show best test scores of 0.40 CCC for influence, 0.66 Macro-F1 for turn-taking, and 0.68 CCC for rapport, indicating that robust modeling of dyadic dynamics remains challenging.

The 2026 ACII Dyadic Conversations (ACII-DaiKon) Workshop & Challenge introduces a benchmark for modeling interpersonal affect and social dynamics in dyadic conversations. Although conversational affect modeling has advanced rapidly, most benchmarks remain speaker-centric and underrepresent coupled, time-evolving processes between partners, including directional influence, conversational timing coordination, and rapport development. To address this gap, ACII-DaiKon presents three coordinated sub-challenges built on a shared dataset: (1) directional interpersonal influence prediction, (2) turn-taking prediction (next-speaker and time-to-next-speech), and (3) rapport trajectory prediction across full interactions. The challenge is built on the Hume-DaiKon dataset, comprising 945 dyadic conversations (743.4 hours of audiovisual data) collected under naturalistic conditions across five languages. The benchmark supports multimodal modeling, temporal reasoning, and cross-context generalization through fixed train/validation/test splits, standardized metrics, and released baseline systems. Evaluation uses Concordance Correlation Coefficient (CCC), Pearson correlation, Macro-F1, and Mean Absolute Error (MAE) depending on the sub-challenge. Baseline experiments establish initial reference performance, with best test results of 0.40 CCC and 0.50 Pearson for influence prediction, 0.66 Macro-F1 and 1.50~s MAE for turn-taking, and 0.68 CCC and 0.70 Pearson for rapport trajectory modeling. These results indicate that while current methods capture coarse dyadic patterns, robust modeling of directional dependence and long-horizon interpersonal dynamics remains challenging. The workshop provides a shared platform for rigorous comparison and cross-disciplinary discussion on data validity, evaluation protocols, and culturally aware modeling for dyadic interaction.

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