As global digitization continues to grow, technology becomes more affordable and easier to use, and social media platforms thrive, becoming the new means of spreading information and news. Communities are built around sharing and discussing current events. Within these communities, users are enabled to share their opinions about each event. Using Sentiment Analysis to understand the polarity of each message belonging to an event, as well as the entire event, can help to better understand the general and individual feelings of significant trends and the dynamics on online social networks. In this context, we propose a new ensemble architecture, EDSA-Ensemble (Event Detection Sentiment Analysis Ensemble), that uses Event Detection and Sentiment Analysis to improve the detection of the polarity for current events from Social Media. For Event Detection, we use techniques based on Information Diffusion taking into account both the time span and the topics. To detect the polarity of each event, we preprocess the text and employ several Machine and Deep Learning models to create an ensemble model. The preprocessing step includes several word representation models, i.e., raw frequency, TFIDF, Word2Vec, and Transformers. The proposed EDSA-Ensemble architecture improves the event sentiment classification over the individual Machine and Deep Learning models.
翻译:随着全球数字化的继续增长,技术变得更加负担得起和更容易使用,社交媒体平台更加繁荣,成为传播信息和新闻的新手段。社区围绕分享和讨论当前事件而建立。在这些社区中,用户能够分享对每个事件的看法。利用感知分析来了解属于某一事件以及整个事件的每项信息的极性。利用感知分析来了解属于某一事件以及整个事件的信息的极性,有助于更好地了解重大趋势和在线社交网络动态的一般和个人感觉。在这方面,我们提议一个新的混合结构,即EDSA-Emble(电子感知感知分析核心),利用事件感知和感知分析来改进对社会媒体当前事件的极性的认识。关于事件探测,我们利用信息集成技术来了解属于某一事件以及整个事件的极性。为了更好地了解每个事件的极性,我们预先处理了文本,并使用了几个机器和深学习模型来创建一个混合模型。预处理步骤包括几个单词代表模型,即原始频率、TFIDF、WO2、SEW2Simmental As registrual 和单项ADISADADISDA MIA 和BISDISBIDISMISDA/MIDISBRA/MISBRA/MISBA/MISMISDISDISDA/MISMIS MIDA/MIS MIDA/MISMISMISMISMIS 和/BAR。拟议的机。