Unsupervised Learning of Hierarchical Conversation Structure

  • Bo-Ru Lu ,
  • Yushi Hu ,
  • ,
  • Noah A. Smith ,
  • Mari Ostendorf

EMNLP 2022 |

Human conversations can evolve in many different ways, creating challenges for automatic understanding and summarization. Goal-oriented conversations often have meaningful sub-dialogue structure, but it can be highly domain-dependent. This work introduces an unsupervised approach to learning hierarchical conversation structure, including turn and sub-dialogue segment labels, corresponding roughly to dialogue acts and sub-tasks, respectively. The decoded structure is shown to be useful in enhancing neural models of language for three conversation-level understanding tasks. Further, the learned finite-state sub-dialogue network is made interpretable through automatic summarization.