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>>欢迎咨询报考2026年硕士/博士研究生<<        张新生(1978~),男,博士,教授(博导),管理学院副院长。2009年12月毕业于西安电子科技大学,获得博士学位。2010年10月晋升为副教授,佛罗里达大学访问学者(2013-2014),2016年12月晋升为教授,现在西安建筑科技大学管理学院从事教学和科研工作。近年来主持国家自然科学基金1项、国家社科基金后期资助项目1项,教育部人文社科规划项目1项,陕西省重点产业链项目1项,陕西省自然科学基金3项、陕西省社科基金2项、陕西省教育厅自然科学基金3项等,主持横向项目6项,并参与了多项课题的研究工作。主要研究方向包括:智能社会治理;管理智能决策与优化;能资环(能源、资源、环境)智能管理与优化...
zhangxinsheng
Professor
Paper Publications
Semantic-based topic model for public opinion analysis in sudden-onset disasters
Release time:2025-09-07 Hits:
DOI number:
10.1016/j.asoc.2025.112700
Journal:
APPLIED SOFT COMPUTING
Abstract:
Sudden-onset disasters have put forward more stringent requirements for the government to carry out public opinion analysis work. However, most existing topic models ignore the contextual semantics of disaster texts, and fail to balance the robustness and the training cost. To address these issues, a neural clustering topic model is proposed in this work. The topic probability distribution of the LDA model is integrated with the distribution semantic vector generated by a lite BERT. The fused vectors are reconstructed by a nonlinear manifold learning algorithm, and re-clustered into topics by a mini-batch based k-means++ algorithm. Compared to state-of-the-art models on three sudden-onset disaster datasets, the proposed model shows an increase of 1.79 % in average topic coherence and 33.87 % in topic diversity. Meanwhile, the inference time is reduced by 84.09 % on average. The visual study of the latent process of the proposed model reflects that its ability to compact intra-cluster vector distances and sparse inter-cluster vector distances is the potential reason for its better performance. It can be considered that the application of the proposed model can help the government enhance its ability to manage negative public opinions in sudden-onset disasters.
Volume:
170
ISSN No.:
1568-4946
Translation or Not:
no
Date of Publication:
2025-01-01
Included Journals:
SCI

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