Zobrazeno 1 - 10
of 86
pro vyhledávání: '"Herbert Gish"'
Publikováno v:
ICASSP
We investigate the problem of machine learning with mislabeled training data. We try to make the effects of mislabeled training better understood through analysis of the basic model and equations that characterize the problem. This includes results a
Externí odkaz:
https://explore.openaire.eu/search/publication?articleId=doi_dedup___::99c94e101a911902a2cba2c398dcb32b
http://arxiv.org/abs/1909.09136
http://arxiv.org/abs/1909.09136
Publikováno v:
Computer Speech & Language. 28:210-223
We present our approach to unsupervised training of speech recognizers. Our approach iteratively adjusts sound units that are optimized for the acoustic domain of interest. We thus enable the use of speech recognizers for applications in speech domai
Publikováno v:
ICASSP
We present an importance sampling based approach to the active learning problem of selecting additional training data to supplement a seed model. Our proposed Δ-AUC selection optimizes AUC improvement in keyword search and is evaluated on the Spanis
Publikováno v:
IEEE Transactions on Audio, Speech, and Language Processing. 17:187-197
In language identification and other speech applications, discriminatively trained models often outperform nondiscriminative models trained with the maximum-likelihood criterion. For instance, discriminative Gaussian mixture models (GMMs) are typical
Autor:
Herbert Gish, Man-Hung Siu
Publikováno v:
Computer Speech & Language. 13:299-319
Confidence measures enable us to assess the output of a speech recognition system. The confidence measure provides us with an estimate of the probability that a word in the recognizer output is either correct or incorrect. In this paper we discuss wa
Publikováno v:
ICASSP
Using speaker adaptation parameters, such as maximum likelihood linear regression (MLLR) adaptation matrices, as features for speaker recognition (SR) has been shown to perform well and can also provide complementary information for fusion with other
Publikováno v:
ASRU
This paper explores both supervised and unsupervised topic modeling for spoken audio documents using only phonetic information. In cases where word-based recognition is unavailable or infeasible, phonetic information can be used to indirectly learn a
Publikováno v:
INTERSPEECH
Publikováno v:
INTERSPEECH
Publikováno v:
INTERSPEECH