Abstract
Short-form video hashtag recommendation (SVHR) aims to recommend hashtags to content creators from videos and corresponding descriptions. Most prior studies regard SVHR as a classification or ranking problem and select hashtags from a set of limited candidates. However, in reality, users can create new hashtags, and trending hashtags change rapidly over time on social media. Both of these properties cannot be easily modeled with classification approaches. To bridge this gap, we formulate SVHR as a generation task that better represents how hashtags are created naturally. Additionally, we propose the Guided Generative Model (GGM) where we augment the input features by retrieving relevant hashtags from a large-scale hashtag pool as extra guidance signals. Experimental results on two short-form video datasets show that our generative models outperform strong classification baselines, and the guidance signals further boost the performance by 8.11 and 2.17 absolute ROUGE-1 scores on average, respectively. We also perform extensive analyses including human evaluation, demonstrating that our generative model can create meaningful and relevant novel hashtags while achieving state-of-the-art performance on known hashtags.
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CITATION STYLE
Yu, T., Yu, H., Liang, D., Mao, Y., Nie, S., Huang, P. Y., … Wang, Y. C. (2023). Generating Hashtags for Short-form Videos with Guided Signals. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (Vol. 1, pp. 9482–9495). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2023.acl-long.527
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