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首页> 外文期刊>Journal of rail transport planning & man >Harvesting railway passenger opinions on multi themes by using social graph clustering
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Harvesting railway passenger opinions on multi themes by using social graph clustering

机译:利用社会图聚类收集铁路客运多主题意见

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The largest service provider in public transportation like railways has a lot of challenges with changing dynamics. Identification of heterogeneity in perceptions of service quality among groups of railway passengers to make indicators has a lot of importance in service oriented organizations like railways. Railway passengers' opinions have also been given significant importance for monitoring, enhancing the existing services, and understanding the current needs of the people. The existing practice involves people for collecting the data, along with responding to the complaints and forwarding these to the concerned heads. Now the research is centered on dynamic passenger behaviour analysis by using social data, such as twitter, the facebook etc. In this paper, the importance of dynamic social sentiment analysis and affective computing in railways, issues associated with data collection and processing are elaborated. The proposed work offers a framework for social sentiment analysis on railway passenger tweets. Firstly, it identifies the theme wise data and then provides a sentiment score which expresses about multiple themes. A novel social graph clustering approach is utilized to separate the data according to theme and perform the sentiment analysis on each cluster to anticipate the passenger opinions. This work will give the indicators and assessment of railway services quality with an understanding of the passengers' opinions. It acts as an expert feedback, service indicator, and is also helpful to enhance the services through a thorough analysis of Indian railways passengers' opinions.
机译:铁路等公共交通领域最大的服务提供商在动态变化方面面临许多挑战。在铁路等以服务为导向的组织中,识别铁路乘客群体对服务质量的感知的异质性以作为指标非常重要。铁路乘客的意见对于监视,增强现有服务以及了解人们的当前需求也具有重要意义。现有的做法是由人们来收集数据,并回应投诉并将其转发给有关负责人。现在的研究集中在利用社交数据(例如twitter,facebook等)进行动态乘客行为分析。本文阐述了动态社会情感分析和情感计算在铁路中的重要性,与数据收集和处理相关的问题。拟议的工作为铁路旅客推文的社会情绪分析提供了一个框架。首先,它识别主题明智的数据,然后提供表达多个主题的情感评分。一种新颖的社交图聚类方法用于根据主题分离数据,并对每个聚类执行情感分析以预期乘客的意见。这项工作将在了解乘客意见的情况下提供指标并评估铁路服务质量。它不仅可以作为专家的反馈和服务指标,还可以通过对印度铁路乘客的意见进行全面分析来增强服务质量。

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