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Inferring User Interests on Social Media from Text and Images

机译:从文本和图像推断用户对社交媒体的兴趣

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Inferring user interests on social media from text and images is addressed as a multi-class classification problem. We proposed approaches to infer user interest on Social media where often multi-modal data (text, image etc.) exists. We use user-generated data from Pinterest.com as a natural expression of users' interests. We consider each pin (image-text pair) as a category label that represents a broad user interest, since users collect images that they like on the social media platform and often assign a category label. This task is useful beyond Pinterest because most user-generated data on the Web is not necessarily readily categorized into interest labels. In addition to predicting users' interests, our main contribution is exploiting a multi-modal space composed of images and text. This is a natural approach since humans express their interests with a combination of modalities. Exploiting multi-modal spaces in this context has received little attention in the literature. We performed eleven experiments using the state-of-the-art image and textual representations, such as convolutional neural networks, word embeddings, and bags of visual and textual words. Our experimental results show that in fact jointly processing image and text increases the overall interest classification accuracy, when compared to uni-modal representations (i.e., using only text or using only images).
机译:从文本和图像推断用户对社交媒体的兴趣被解决为多类分类问题。我们提出了在社交媒体上推断用户兴趣的方法,这些社交媒体上通常存在多模式数据(文本,图像等)。我们使用来自Pinterest.com的用户生成的数据自然表达用户的兴趣。我们将每个图钉(图像-文本对)视为代表广泛用户兴趣的类别标签,因为用户会在社交媒体平台上收集自己喜欢的图像并经常分配类别标签。该任务在Pinterest之外非常有用,因为Web上大多数用户生成的数据不一定很容易归类到兴趣标签中。除了预测用户的兴趣外,我们的主要贡献是利用由图像和文本组成的多模式空间。这是一种自然的方法,因为人类通过多种方式来表达自己的兴趣。在这种情况下开发多模式空间在文献中很少受到关注。我们使用最新的图像和文本表示(例如卷积神经网络,单词嵌入以及视觉和文本单词袋)进行了11个实验。我们的实验结果表明,与单模式表示(即仅使用文本或仅使用图像)相比,实际上共同处理图像和文本可以提高整体兴趣分类的准确性。

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