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Titlebook: Discriminative Learning for Speech Recognition; Theory and Practice Xiaodong He,Li Deng Book 2008 Springer Nature Switzerland AG 2008

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Discriminative Learning: A Unified objective Function,HMMs). These are: maximum mutual information (MMI), minimum classification error (MCE), and minimum phone error/minimum word error (MPE/MWE). We also compare our unified form of these objective functions with another popular unified form in the literature.
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Discriminative Learning Algorithm for Exponential-Family Distributions,design where each class is characterized by an exponential-family distribution discussed in Chapter 1. The next chapter extends the results here into the more difficult but practically more useful case of hidden Markov models (HMMs).
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1932-121X ech recognition. The specific models treated in depth include the widely used exponential-family distributions and the hidden Markov model. A detailed study is presented on unifying the common objective functions for discriminative learning in speech recognition, namely maximum mutual information (M
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CSR, Sustainability, Ethics & Governancey, real-world speech recognition tasks such as commercial telephony large-vocabulary ASR (LV-ASR) applications. We show that the GT-based discriminative training gives superior performance over the conventional maximum likelihood (ML)-based training method.
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Book 2008ition. The specific models treated in depth include the widely used exponential-family distributions and the hidden Markov model. A detailed study is presented on unifying the common objective functions for discriminative learning in speech recognition, namely maximum mutual information (MMI), minim
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