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Fashion Popularity Analysis based on Online Social Network via Deep Learning

机译:深度学习基于在线社交网络的时尚流行度分析

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In this paper, we provide an idea about how to utilize the deep neural network with large scale social network data tojudge the quality of fashion images. Specifically, our aim is to build a deep neural network based model which is able topredict the popularity of fashion-related images. Convolutional Neural Network (CNN) and Multi-layer Perceptron(MLP) are the two major tools to construct the model architecture, in which the CNN is responsible for analyzing imagesand the MLP is responsible for analyzing other types of social network meta data. Based on this general idea, varioustentative model structures are proposed, implemented, and compared in this research. To perform experiments, weconstructed a fashion-related dataset which contains over 1 million records from the online social network. Though noreal word prediction task has been tried yet, according to the result of dataset-based tests, our models demonstrate goodabilities on predicting the popularity of fashion from the online social network using the Xception CNN. However, wealso find a very interesting phenomenon, which intuitively indicates there may be limited correlation between popularityand visual design of a fashion due to the power and influence of the online social network.
机译:在本文中,我们提供了有关如何将深度神经网络与大规模社交网络数据结合使用的想法。 判断时尚形象的质量。具体来说,我们的目标是建立一个基于深度神经网络的模型,该模型能够 预测与时尚相关的图像的受欢迎程度。卷积神经网络(CNN)和多层感知器 (MLP)是构建模型架构的两个主要工具,其中CNN负责分析图像 MLP负责分析其他类型的社交网络元数据。基于这种总体思路, 本研究提出,实施和比较了初步的模型结构。为了进行实验,我们 构建了一个与时尚相关的数据集,其中包含来自在线社交网络的超过一百万条记录。虽然没有 真正的单词预测任务已经尝试过了,根据基于数据集的测试结果,我们的模型证明了 使用Xception CNN从在线社交网络预测时尚流行的能力。但是,我们 也发现一个非常有趣的现象,这直观地表明了人气之间的相关性可能有限 在线社交网络的力量和影响力,以及时尚的视觉设计。

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