1 research outputs found
Discovering User Groups for Natural Language Generation
We present a model which predicts how individual users of a dialog system
understand and produce utterances based on user groups. In contrast to previous
work, these user groups are not specified beforehand, but learned in training.
We evaluate on two referring expression (RE) generation tasks; our experiments
show that our model can identify user groups and learn how to most effectively
talk to them, and can dynamically assign unseen users to the correct groups as
they interact with the system.Comment: 9 pages, 7 Figures, Accepted for SIGDIAL 201