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A Multimodal Approach to Predict Social Media Popularity

机译:预测社交媒体受欢迎程度的多模式方法

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Multiple modalities represent different aspects by which information is conveyed by a data source. Modern day social media platforms are one of the primary sources of multimodal data, where users use different modes of expression by posting textual as well as multimedia content such as images and videos for sharing information. Multimodal information embedded in such posts could be useful in predicting their popularity. To the best of our knowledge, no such multimodal dataset exists for the prediction of social media photos. In this work, we propose a multimodal dataset consisiting of content, context, and social information for popularity prediction. Speci?cally, we augment the SMPT1 dataset for social media prediction in ACM Multimedia grand challenge 2017 with image content, titles, descriptions, and tags. Next, in this paper, we propose a multimodal approach which exploits visual features (i.e., content information), textual features (i.e., contextual information), and social features (e.g., average views and group counts) to predict popularity of social media photos in terms of view counts. Experimental results con?rm that despite our multimodal approach uses the half of the training dataset from SMP-T1, it achieves comparable performance with that of state-of-the-art.
机译:多种形式代表了数据源通过其传达信息的不同方面。现代社交媒体平台是多模式数据的主要来源之一,用户通过发布文本以及多媒体内容(例如图像和视频)来共享信息,从而使用不同的表达方式。嵌入此类帖子中的多模式信息可能有助于预测其受欢迎程度。据我们所知,尚无此类多模态数据集可用于预测社交媒体照片。在这项工作中,我们提出了一个由内容,上下文和社交信息组成的多模式数据集,用于进行流行度预测。具体来说,我们在ACM Multimedia Grand Challenge 2017中增加了SMPT1数据集,用于社交媒体预测,其中包含图像内容,标题,描述和标签。接下来,在本文中,我们提出了一种多模式方法,该方法利用视觉特征(即内容信息),文本特征(即上下文信息)和社交特征(例如平均观看次数和群组计数)来预测社交媒体照片的受欢迎程度就观看次数而言实验结果证实,尽管我们的多模态方法使用了SMP-T1训练数据集的一半,但它仍可达到与最新技术相当的性能。

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