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METHOD AND DEVICE FOR LEARNING DEEP NEURAL NETWORK, AND DEVICE FOR LEARNING CATEGORY-INDEPENDENT SUB-NETWORK

机译:学习深层神经网络的方法和设备,以及学习独立于类别的子网络的设备

摘要

The present invention provides a method for learning a DNN capable of reducing a time for learning the DNN using data belonging to a plurality of categories. This method includes a step for learning a language-independent sub-network (120) and language-dependent sub-networks (122 and 124) by using Japanese and English learning data. This step includes a first step for learning, using Japanese data, a DNN in which neurons in an output layer of the sub-network (120) and neurons in an input layer of the sub-network (122) are connected; a step for forming a DNN in which the sub-network (124) is connected to the sub-network (120) in place of the sub-network (122), and learning the DNN using English data; a step for alternatingly executing these steps until the learning data is finished; and a step for separating, after completion, the first sub-network (120) from the other sub-networks, and causing the first sub-network (120) to be stored in a storage medium as a category-independent sub-network.
机译:本发明提供了一种用于学习DNN的方法,该方法能够减少使用属于多个类别的数据来学习DNN的时间。该方法包括用于通过使用日语和英语学习数据来学习与语言无关的子网(120)和与语言有关的子网(122和124)的步骤。该步骤包括使用日语数据学习DNN的第一步骤,在DNN中,子网(120)的输出层中的神经元和子网(122)的输入层中的神经元被连接;形成DNN的步骤,其中子网(124)代替子网(122)连接到子网(120),并且使用英语数据学习DNN;交替执行这些步骤直到学习数据完成的步骤;在完成之后,将第一子网络(120)与其他子网络分离,并使第一子网络(120)作为独立于类别的子网络存储在存储介质中的步骤。

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