This paper compares the performance of Boosting and non-Boosting training algorithms in large vocabulary continuous speech recognition (LVCSR) using ensembles of acoustic models. Both algorithms demonstrated significant word error rate reduction on the CMU Communicator corpus. However, both algorithms produced comparable improvements, even though one would expect that the Boosting algorithm, which has a solid theoretic foundation, should work much better than the non-Boosting algorithm. Several voting schemes for hypothesis combining were evaluated, including weighted voting, un-weighted voting and ROVER. 1
Tied-mixture HMMs have been proposed as the acoustic model for large-vocabulary continuous speech re...
Large Vocabulary Continuous Speech Recognition (LVCSR), which is characterized by a high variability...
Large Vocabulary Continuous Speech Recognition (LVCSR), which is characterized by a high variability...
This paper compares the performance of Boosting and nonBoosting training algorithms in large vocabu...
This paper describes our work on applying ensembles of acoustic models to the problem of large voca...
We address the question of whether and how boosting and bagging can be used for speech recognition. ...
We address the question of whether and how boosting and bagging can be used for speech recognition....
This paper is an empirical study on the performance of different discriminative approaches to rerank...
This paper investigates two important issues in constructing and combining ensembles of acoustic mo...
We describe the use of discriminative criteria to optimize Boosting based ensembles. Boosting algori...
In this paper we investigate a number of ensemble methods for improving the performance of connectio...
We address the question of whether and how boosting and bagging can be used for speech recognition. ...
This paper investigates two important issues in constructing and combining ensembles of acoustic mod...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
This paper investigates a number of ensemble methods for improv-ing the performance of phoneme class...
Tied-mixture HMMs have been proposed as the acoustic model for large-vocabulary continuous speech re...
Large Vocabulary Continuous Speech Recognition (LVCSR), which is characterized by a high variability...
Large Vocabulary Continuous Speech Recognition (LVCSR), which is characterized by a high variability...
This paper compares the performance of Boosting and nonBoosting training algorithms in large vocabu...
This paper describes our work on applying ensembles of acoustic models to the problem of large voca...
We address the question of whether and how boosting and bagging can be used for speech recognition. ...
We address the question of whether and how boosting and bagging can be used for speech recognition....
This paper is an empirical study on the performance of different discriminative approaches to rerank...
This paper investigates two important issues in constructing and combining ensembles of acoustic mo...
We describe the use of discriminative criteria to optimize Boosting based ensembles. Boosting algori...
In this paper we investigate a number of ensemble methods for improving the performance of connectio...
We address the question of whether and how boosting and bagging can be used for speech recognition. ...
This paper investigates two important issues in constructing and combining ensembles of acoustic mod...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
This paper investigates a number of ensemble methods for improv-ing the performance of phoneme class...
Tied-mixture HMMs have been proposed as the acoustic model for large-vocabulary continuous speech re...
Large Vocabulary Continuous Speech Recognition (LVCSR), which is characterized by a high variability...
Large Vocabulary Continuous Speech Recognition (LVCSR), which is characterized by a high variability...