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Shortening time required for adaptive structural learning method of deep belief network with multi-modal data arrangement

机译:具有多模态数据布置的深度信仰网络自适应结构学习方法所需的缩短时间

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Recently, Deep Learning has been applied in the techniques of artificial intelligence. Especially, Deep Learning performed good results in the field of image recognition. Most new Deep Learning architectures are naturally developed in image recognition. For this reason, not only the numerical data and text data but also the time-series data are transformed to the image data format. Multi-modal data consists of two or more kinds of data such as picture and text. The arrangement in a general method is formed in the squared array with no specific aim. In this paper, the data arrangement are modified according to the similarity of input-output pattern in Adaptive Structural Learning method of Deep Belief Network. The similarity of output signals of hidden neurons is made by the order rearrangement of hidden neurons. The experimental results for the data rearrangement in squared array showed the shortening time required for DBN learning.
机译:最近,深入学习已经应用于人工智能的技术。特别是,深度学习在图像识别领域进行了良好的结果。大多数新的深度学习架构都在图像识别中自然发展。因此,不仅是数值数据和文本数据,而且将时间序列数据转换为图像数据格式。多模态数据包括两个或多种数据,如图片和文本。一般方法中的布置形成在具有特定目标的平方阵列中。本文根据深度信仰网络的自适应结构学习方法中的输入输出模式的相似性来修改数据布置。隐藏神经元的输出信号的相似性是通过隐藏神经元的顺序重排进行的。平方阵列中数据重新排列的实验结果显示了DBN学习所需的缩短时间。

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