English

Does Collaborative Human-LM Dialogue Generation Help Information Extraction from Human Dialogues?

Computation and Language 2024-02-21 v2

Abstract

The capabilities of pretrained language models have opened opportunities to explore new application areas, but applications involving human-human interaction are limited by the fact that most data is protected from public release for privacy reasons. Problem-solving human dialogues in real applications can be much more complex than existing Wizard-of-Oz collections, preventing successful domain transfer. To support information extraction (IE) for a private call center dataset, we introduce a human-in-the-loop dialogue generation framework capable of synthesizing realistic dialogues. In IE experiments with auto insurance call center dialogues, we observe 25\% relative improvement in F1F_1 after augmenting a small set of real human conversations with synthetic data. We release code and our synthetic dataset to illustrate the complexity of real-world call center conversations and encourage development of complex dialogue datasets that are more representative of natural data.

Keywords

Cite

@article{arxiv.2307.07047,
  title  = {Does Collaborative Human-LM Dialogue Generation Help Information Extraction from Human Dialogues?},
  author = {Bo-Ru Lu and Nikita Haduong and Chia-Hsuan Lee and Zeqiu Wu and Hao Cheng and Paul Koester and Jean Utke and Tao Yu and Noah A. Smith and Mari Ostendorf},
  journal= {arXiv preprint arXiv:2307.07047},
  year   = {2024}
}
R2 v1 2026-06-28T11:29:54.151Z