Title :
Is word error rate a good indicator for spoken language understanding accuracy
Author :
Wang, Ye-Yi ; Acero, Alex ; Chelba, Ciprian
fDate :
30 Nov.-3 Dec. 2003
Abstract :
It is a conventional wisdom in the speech community that better speech recognition accuracy is a good indicator for better spoken language understanding accuracy, given a fixed understanding component. The findings in this work reveal that this is not always the case. More important than word error rate reduction, the language model for recognition should be trained to match the optimization objective for understanding. In this work, we applied a spoken language understanding model as the language model in speech recognition. The model was obtained with an example-based learning algorithm that optimized the understanding accuracy. Although the speech recognition word error rate is 46% higher than the trigram model, the overall slot understanding error can be reduced by as much as 17%.
Keywords :
context-free grammars; error statistics; hidden Markov models; linguistics; natural languages; speech recognition; CFG; HMM; context-free grammar representation; example-based learning algorithm; language comprehension; language model training; slot understanding error; speech recognition accuracy; spoken language understanding accuracy; trigram model; understanding accuracy optimization; word error rate; Credit cards; Databases; Error analysis; Hidden Markov models; Information systems; Natural languages; Robustness; Speech recognition; Testing; Training data;
Conference_Titel :
Automatic Speech Recognition and Understanding, 2003. ASRU '03. 2003 IEEE Workshop on
Print_ISBN :
0-7803-7980-2
DOI :
10.1109/ASRU.2003.1318504