Bc Kwon, Natasha Mulligan, et al.
ISMB 2025
Spoken dialogue system performance can vary widely for different users, as well for the same user during different dialogues. This paper presents the design and evaluation of an adaptive version of TOOT, a spoken dialogue system for retrieving online train schedules. Based on rules learned from a set of training dialogues, adaptive TOOT constructs a user model representing whether the user is having speech recognition problems as a particular dialogue progresses. Adaptive TOOT then automatically adapts its dialogue strategies based on this dynamically changing user model. An empirical evaluation of the system demonstrates the utility of the approach.
Bc Kwon, Natasha Mulligan, et al.
ISMB 2025
Changyan Chi, Michelle X. Zhou, et al.
CHI 2010
Shimei Pan, James C. Shaw
ACL 2005
Jordan Smith, Ioana Boier-Martin
SIGGRAPH 2005