Xiang Rong
Xiang Rong
Verified email at comp.polyu.edu.hk
TitleCited byYear
Fake news detection through multi-perspective speaker profiles
Y Long, Q Lu, R Xiang, M Li, CR Huang
Proceedings of the Eighth International Joint Conference on Natural Language …, 2017
402017
A cognition based attention model for sentiment analysis
Y Long, L Qin, R Xiang, M Li, CR Huang
Proceedings of the 2017 Conference on Empirical Methods in Natural Language …, 2017
222017
Improving attention model based on cognition grounded data for sentiment analysis
Y Long, R Xiang, Q Lu, CR Huang, M Li
IEEE Transactions on Affective Computing, 2019
32019
Dual memory network model for biased product review classification
Y Long, M Ma, Q Lu, R Xiang, CR Huang
arXiv preprint arXiv:1809.05807, 2018
22018
Learning heterogeneous network embedding from text and links
Y Long, R Xiang, Q Lu, D Xiong, CR Huang, C Bi, M Li
IEEE access 6, 55850-55860, 2018
12018
Leveraging Writing Systems Change for Deep Learning Based Chinese Emotion Analysis
R Xiang, Y Long, Q Lu, D Xiong, IH Chen
Proceedings of the 9th Workshop on Computational Approaches to Subjectivity …, 2018
12018
Improving Multi-label Emotion Classification by Integrating both General and Domain Knowledge
W Ying, R Xiang, Q Lu
W-NUT 2019, 316, 2019
2019
Improving Multi-label Emotion Classification by Integrating both General and Domain-specific Knowledge
W Ying, R Xiang, Q Lu
Proceedings of the 5th Workshop on Noisy User-generated Text (W-NUT 2019 …, 2019
2019
Leveraging writing systems changes for deep learning based Chinese affective analysis
R Xiang, Q Lu, Y Jiao, Y Zheng, W Ying, Y Long
International Journal of Machine Learning and Cybernetics 10 (11), 3313-3325, 2019
2019
Dual memory network model for sentiment analysis of review text
JX Shen, MD Ma, R Xiang, Q Lu, EP Vallejos, G Xu, CR Huang, Y Long
Knowledge-Based Systems, 105004, 2019
2019
Sentiment Augmented Attention Network for Cantonese Restaurant Review Analysis
R Xiang, Y Jiao, Q Lu
2019
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Articles 1–11