Speech models generated using competitive training, asymmetric training, and data boosting

作者: Xiaodong He , Jian Wu

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摘要: Speech models are trained using one or more of three different training systems. They include competitive which reduces a distance between recognized result and true result, data boosting divides weights data, asymmetric trains model components differently.

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