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Learning User Representations for Open Vocabulary Image Hashtag Prediction

机译:学习用户表示形式的开放式词汇图像标签预测

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In this paper, we introduce an open vocabulary model for image hashtag prediction - the task of mapping an image to its accompanying hashtags. Recent work shows that to build an accurate hashtag prediction model, it is necessary to model the user because of the self-expression problem, in which similar image content may be labeled with different tags. To take into account the user behaviour, we propose a new model that extracts a representation of a user based on his/her image history. Our model allows to improve a user representation with new images or add a new user without retraining the model. Because new hashtags appear all the time on social networks, we design an open vocabulary model which can deal with new hashtags without retraining the model. Our model learns a cross-modal embedding between user conditional visual representations and hashtag word representations. Experiments on a subset of the YFCC100M dataset demonstrate the efficacy of our user representation in user conditional hashtag prediction and user retrieval. We further validate the open vocabulary prediction ability of our model.
机译:在本文中,我们介绍了一种用于图像主题标签预测的开放式词汇模型-将图像映射到其随附主题标签的任务。最近的工作表明,要建立准确的主题标签预测模型,由于自我表达问题,有必要对用户进行建模,在该问题中,相似的图像内容可能会使用不同的标签进行标记。为了考虑到用户的行为,我们提出了一个新模型,该模型根据用户的图像历史记录提取用户的表示形式。我们的模型允许在不重新训练模型的情况下使用新图像来改善用户表示或添加新用户。由于新的标签一直在社交网络上出现,因此我们设计了一个开放的词汇表模型,该模型可以处理新的标签,而无需重新训练模型。我们的模型学习了用户条件视觉表示和标签词表示之间的交叉模式嵌入。在YFCC100M数据集的子集上进行的实验证明了我们的用户表示在用户条件主题标签预测和用户检索中的功效。我们进一步验证了模型的开放词汇预测能力。

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