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Sharing Behavior in Online Social Media: An Empirical Analysis with Deep Learning

机译:在线社交媒体中的共享行为:深度学习的实证分析

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We conduct a large-scale empirical study on the sharing behavior in social media to measure the effect of message features and initial messengers on information diffusion. Our analysis focuses on messages created by companies and utilizes both textual and visual semantic content by employing state-of-the-art machine learning methods: topic modeling and deep learning. We find that messages with multiple conspicuous images and messengers with similar content are crucial in the diffusion process. Our approach for semantic content analysis, particularly for visual content, bridges advanced machine learning techniques for effective marketing and social media strategies.
机译:我们对社交媒体中的共享行为进行了大规模的实证研究,以衡量消息功能和初始信使对信息传播的影响。我们的分析专注于公司创建的消息,并通过采用最新的机器学习方法(主题建模和深度学习)来利用文本和视觉语义内容。我们发现,具有多个明显图像的消息和具有相似内容的信使在传播过程中至关重要。我们用于语义内容分析(尤其是视觉内容)的方法将先进的机器学习技术联系起来,以实现有效的营销和社交媒体策略。

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