Multi Party
Multi-party conversation research focuses on understanding and modeling interactions involving multiple participants, aiming to improve computational systems' ability to process and generate responses in complex group settings. Current research emphasizes developing models that effectively handle the intricate structural and linguistic aspects of these conversations, often employing graph neural networks and transformer architectures to capture relationships between speakers and utterances, along with techniques like prompt engineering and multimodal data integration. This field is crucial for advancing human-computer interaction, particularly in applications like social robots, collaborative data analysis, and meeting summarization, where understanding and responding to group dynamics is essential.
Papers
MIntRec 2.0: A Large-scale Benchmark Dataset for Multimodal Intent Recognition and Out-of-scope Detection in Conversations
Hanlei Zhang, Xin Wang, Hua Xu, Qianrui Zhou, Kai Gao, Jianhua Su, jinyue Zhao, Wenrui Li, Yanting Chen
Multi-party Response Generation with Relation Disentanglement
Tianhao Dai, Chengyu Huang, Lizi Liao