With the development of online travel services, it has great application prospects to timely mine users' evaluation emotions for travel services and use them as indicators to guide the improvement of online travel service quality. In this paper, we study the text sentiment classification of online travel reviews based on social media online comments and propose the SCCL model based on capsule network and sentiment lexicon. SCCL model aims at the lack of consideration of local features and emotional semantic features of the text in the language model that can efficiently extract text context features like BERT and GRU. Then make the following improvements to their shortcomings. On the one hand, based on BERT-BiGRU, the capsule network is introduced to extract local features while retaining good context features. On the other hand, the sentiment lexicon is introduced to extract the emotional sequence of the text to provide richer emotional semantic features for the model. To enhance the universality of the sentiment lexicon, the improved SO-PMI algorithm based on TF-IDF is used to expand the lexicon, so that the lexicon can also perform well in the field of online travel reviews.
翻译:由于开发了在线旅行服务,它具有巨大的应用前景来及时评估地雷使用者的旅行服务评价情绪,并将之作为指导改进在线旅行服务质量的指标。在本文件中,我们研究了基于社交媒体在线评论的在线旅行审查的文字情绪分类,并提议了基于胶囊网络和情绪词汇的SCCL模型。SCCL模型的目的是在语言模型中不考虑文字的当地特点和情感语义特征,这些语言模型能够有效地提取文字背景特征,如BERT和GRU。然后对其缺点作出以下改进。一方面,根据BERT-BIGRU, 采用胶囊网络来提取本地特征,同时保留良好的背景特征。另一方面,引入了情绪词汇,以摘录文本的情感顺序,为模型提供更丰富的情感语义特征。为了增强情绪词汇的普遍性,使用了基于TF-ID的SO-PMI算法改进后用于扩展词汇,因此该词汇也可以在网上旅行审查领域很好地进行。