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        <dc:date>2015-10-01T13:58:55+00:00</dc:date>
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        <title>multi-DNN for Speech</title>
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        <description>multi-DNN for Speech

multi-DNN Acoustic models for Speech Recognition






We propose a novel DNN-based acoustic modeling framework for speech
recognition, where the posterior probabilities of HMM states are
computed from multiple DNNs (mDNN), instead of a single large
DNN, for the purpose of parallel training towards faster turnaround.
In the proposed mDNN method all tied HMM states are
first grouped into several disjoint clusters based on data-driven
methods. Next, several hierarchically str…</description>
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