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Co-Attention Memory Network for Multimodal Microblog's Hashtag Recommendation

机译:用于多模式微博的Hashtag推荐的共同注意记忆网络

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摘要

Hashtags are keywords describing a topic or a theme and are usually chosen by microblogging users. Hence, the hashtags can be used to categorize microblog posts. With the fast development of the social network, the task of recommending suitable hashtags has received considerable attention in recent years. Recently, most neural network methods have treated the task as a multi-class classification problem. In fact, users are constantly introducing new hashtags in a highly dynamic way. Treating the task as a multi-class classification problem with a fixed number of target categories does not allow the method to deal with the new hashtags. To address this problem, the task is reinterpreted as a matching problem and a novel co-attention memory network is proposed to represent the multimodal microblogs and hashtags. We utilize a co-attention mechanism to model the multimodal mircroblogs, and utilize the post history to represent the hashtags. Experimental results on a Twitter-based dataset demonstrated that the proposed method can achieve better performance than the current state-of-the-art methods that treat the task as a multi-class classification problem.
机译:HashTags是描述主题或主题的关键字,通常由微博用户选择。因此,HASHTAG可以用于将微博帖子分类。随着社交网络的快速发展,近年来,建议合适的Hashtags的任务得到了相当大的关注。最近,大多数神经网络方法都将任务视为多级分类问题。事实上,用户不断地以高度动态的方式引入新的哈希标签。将任务视为具有固定数量的目标类别的多级分类问题,不允许该方法处理新的HASHTAG。为了解决这个问题,任务被重新解释为匹配问题,并提出了一种新颖的共同内存网络来表示多模式微博和HASHTAG。我们利用共同关注机制来模拟多模式mircroblogs,并利用帖子历史来表示HASHTAG。基于Twitter的数据集上的实验结果表明,所提出的方法可以实现比当前将任务视为多级分类问题的最先进方法的性能。

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