基于视觉语义深度学习的台北市捷运站服务社交媒体挖掘

C. Tao, Yue-Lang Jonathan Cheung
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引用次数: 2

摘要

对公共交通营办商而言,乘客对其体验的意见,对推广更友善的交通服务很有价值。本文论证了乘客在线评论可用于评价铁路运输站服务。运用自然语言处理及社交媒体挖掘技术,透过视觉语义融合深度学习方法建立意见分类模型,评估台北市捷运(MRT)站服务。舆情监测系统包括:(1)舆情挖掘,构建基于地铁站本体的社交媒体评论数据集;(2)提出意向-情感、图-文关系、内容类型分类,辅助乘客体验质量的获取;(3)建构分类模型,对意见的性质进行分类;(4)提出可视化,提供直观的资讯显示仪表板,协助台北市捷运营运商感知各站意见的情绪意向趋势,并存取目前的服务水准及部分品质管理评鉴。
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Social Media Mining on Taipei's Mass Rapid Transit Station Services based on Visual-Semantic Deep Learning
For public transport operators, passengers’ comments towards their experience are valuable for promoting more friendly transportation services. This paper demonstrates that passenger-generated online comments can be used to assess railway transportation station services. The natural language processing and social media mining techniques that include establishing an opinion classification model through visual semantic fusion deep learning methods are applied to assess Taipei’s Mass Rapid Transit (MRT) station services from the internet opinions. An opinion monitoring system includes: (1) opinion mining to build a social media comment dataset on the ontology of MRT stations.; (2) proposing intent-sentiment, image-text relationship, and content type categories to assist accessing of passengers’ quality of experience; (3) constructing a classification model to classify the nature of opinions (4) proposing visualization to provide an intuitive information display dashboard to help Taipei’s MRT operator sense the sentiment-intention trends of comments on each station and access the current service level as well as part of the quality management assessment is also proposed.
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