Authors
Yu-Chi Chen, Kuan-Ting Lai, Dong Liu, Ming-Syan Chen
Publication date
2021/4/20
Journal
IEEE Transactions on Circuits and Systems for Video Technology
Volume
32
Issue
3
Pages
1148-1159
Publisher
IEEE
Description
Hashtag is an important advertising tool and a must-have feature for social media nowadays. In the past, many hashtag recommendation methods have been proposed from different perspectives of images, texts, and users. However, most previous works consider neither the mutual influence between multi-modalities, nor the visual similarity between images. In this paper, we devise a novel model, named Triplet-Attention Graph Network (TAGNet). The rationale behind our method is that visually similar images share some common hashtags. Therefore, we build an image graph, and apply a new Aggregated Graph Convolution (AGC) module to propagate information in a collective way. Furthermore, it is noted that text and user also have rich content information within posts, and we hence propose a Triplet Attention (TA) module to incorporate multi-modalities into node features. Experiments on the large-scale …
Total citations
20212022202320241683
Scholar articles
YC Chen, KT Lai, D Liu, MS Chen - IEEE Transactions on Circuits and Systems for Video …, 2021