OTSRM-Based Approach for Sentiment Evolution and Topic Analysis
Wang Kai1, Pan Wei1, Yang Baohua2
1.Department of Information Management, Bengbu Medical College, Bengbu 233000 2.School of Information and Computer, Hefei University of Technology, Hefei 230036
1 黄晓斌, 赵超. 文本挖掘在网络舆情信息分析中的应用[J]. 情报科学, 2009, 27(1): 94-99. 2 聂峰英, 张旸. 移动社交网络舆情预警指标体系构建[J]. 情报理论与实践, 2015, 38(12): 64-67. 3 LiG, JiangS, ZhangW, et al. Online Web video topic detection and tracking with semi-supervised learning[J]. Multimedia Systems, 2016, 22(1): 115-125. 4 HofmannT. Probabilistic latent semantic indexing[C]// Proceedings of the 22nd Annual International ACM SIGIR Conference on Research and Development in Information Retrieval. NewYork: ACM Press, 1999: 50-57. 5 BleiD M, NgA Y, JordanM I. Latent Dirichlet allocation[J]. Journal of Machine Learning Research, 2003, 3(9): 993-1022. 6 BleiD M, LaffertyJ D. Dynamic topic models[C]// Proceedings of the 23rd International Conference on Machine Learning. NewYork: ACM Press, 2006: 113-120. 7 AlsumaitL, DomeniconiC. On-line LDA: Adaptive topic models for mining text streams with applications to topic detection and tracking[C]// Proceedings of the Eighth IEEE International Conference on Data Mining. IEEE Computer Society, 2008: 3-12. 8 LinC, HeY, EversonR, et al. Weakly supervised joint sentiment-topic detection from text[J]. IEEE Transactions on Knowledge and Data Engineering, 2012, 24(6): 1134-1145. 9 PavitraR, KalaivaaniP C D. Weakly supervised sentiment analysis using joint sentiment topic detection with bigrams[C]// Proceedings of the International Conference on Electronics and Communication Systems. IEEE, 2015: 889-893. 10 周文, 张书卿, 欧阳纯萍, 等. 基于情感依存元组的新闻文本主题情感分析[J]. 山东大学学报(理学版), 2014, 49(12): 1-6, 11. 11 LiuY, GuoQ, WuX, et al. Evolution identification approach for news public opinion based on TSSCM[J]. Journal of Intelligence, 2017, 36(2): 115-121. 12 AlamM H, RyuW J, LeeS K. Joint multi-grain topic sentiment: Modeling semantic aspects for online reviews[J]. Information Sciences, 2016, 339: 206-223. 13 LimK W, BuntineW. Twitter opinion topic model: Extracting product opinions from Tweets by leveraging hashtags and sentiment lexicon[C]// Proceedings of the 23rd ACM International Conference on Information and Knowledge Management. New York: ACM Press, 2014: 1319-1328. 14 黄卫东, 陈凌云, 吴美蓉. 网络舆情话题情感演化研究[J]. 情报杂志, 2014(1): 102-107. 15 RaoY. Contextual sentiment topic model for adaptive social emotion classification[J]. IEEE Intelligent Systems, 2016, 31(1): 41-47. 16 SteuerR, KurthsJ, DaubC O, et al. The mutual information: Detecting and evaluating dependencies between variables[J]. Bioinformatics, 2002, 18(Suppl 2): S231-S240. 17 HaselmayerM, JennyM. Sentiment analysis of political communication: Combining a dictionary approach with crowdcoding[J]. Quality & Quantity, 2017, 51(6): 2623-2646. 18 MoreiraC, WichertA. Finding academic experts on a multisensor approach using Shannon’s entropy[J]. Expert Systems with Applications, 2013, 40(14): 5740-5754. 19 GooSeeker. MetaSeeker[EB/OL]. [2016-08-16]. http://www.gooseeker.com/product.