Published January 1, 2006
| Version v1
Conference paper
Open
Model adaptation for dialog act tagging
Creators
- 1. SRI Int, 333 Ravenswood Ave, Menlo Pk, CA 94025 USA
- 2. ICSI, Berkeley, CA 94704 USA
Description
In this paper, we analyze the effect of model adaptation for dialog act tagging. The goal of adaptation is to improve the performance of the tagger using out-of-domain data or models. Dialog act tagging aims to provide a basis for further discourse analysis and understanding in conversational speech. In this study we used the ICSI meeting corpus with high-level meeting recognition dialog act (MRDA) tags, that is, question, statement, back-channel, disruptions, and floor grabbers/holders. We performed controlled adaptation experiments using the Switchboard (SWBD) corpus with SWBD-DAMSL tags as the out-of-domain corpus. Our results indicate that we can achieve significantly better dialog act tagging by automatically selecting a subset of the Switchboard corpus and combining the confidences obtained by both in-domain and out-of-domain models via logistic regression, especially when the in-domain data is limited.
Files
bib-ecead3dc-4d18-4360-8a5e-91f560269a34.txt
Files
(130 Bytes)
| Name | Size | Download all |
|---|---|---|
|
md5:1bce39869095641c13da91f008575aeb
|
130 Bytes | Preview Download |