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Image Recommendation Algorithm Combined with Deep Neural Network Designed for Social Networks

机译:图像推荐算法与为社交网络设计的深神经网络相结合

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In recent years, deep neural networks have achieved great success in many fields, such as computer vision and natural language processing. Traditional image recommendation algorithms use text-based recommendation methods. The process of displaying images requires a lot of time and labor, and the time-consuming labor is inefficient. Therefore, this article mainly studies image recommendation algorithms based on deep neural networks in social networks. First, according to the time stamp information of the dataset, the interaction records of each user are sorted by the closest time. Then, some feature vectors are created via traditional feature algorithms like LBP, BGC3, RTU, or CNN extraction. For image recommendation, two LSTM neural networks are established, which accept these feature vectors as input, respectively. The compressed output of the two sub-ESTM neural networks is used as the input of another LSTM neural network. The multilayer regression algorithm is adopted to randomly sample some network nodes to obtain the cognitive information of the nodes sampled in the entire network, predict the relationship between all nodes in the network based on the cognitive information, and perform low sampling to achieve relationship prediction. The experiments show that proposed LSTM model together with CNN feature vectors can outperform other algorithms.
机译:近年来,深度神经网络在许多领域取得了巨大成功,例如计算机视觉和自然语言处理。传统图像推荐算法使用基于文本的推荐方法。显示图像的过程需要大量的时间和劳动力,并且耗时的劳动力效率低下。因此,本文主要研究了基于社交网络中深度神经网络的图像推荐算法。首先,根据数据集的时间戳信息,每个用户的交互记录由最近的时间排序。然后,通过像LBP,BGC3,RTU或CNN提取等传统的特征算法创建了一些特征向量。对于图像推荐,建立了两个LSTM神经网络,其分别接受这些特征向量作为输入。两个子ESTM神经网络的压缩输出用作另一个LSTM神经网络的输入。采用多层回归算法随机采样一些网络节点以获得整个网络中采样的节点的认知信息,基于认知信息预测网络中的所有节点之间的关系,并执行低采样以实现关系预测。实验表明,提出的LSTM模型与CNN特征向量一起可以优于其他算法。

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