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Priority Based Sentiment Analysis for Quick Response to Citizen Complaints

机译:基于优先级的情感分析,可快速响应公民投诉

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Today metropolitan citizens need a common platform to register their complaints. In the traditional telephonic system task of complaint registration is very time-consuming process so, citizen have to wait until call is received by the service executive. The proposed framework is developed for Pune Municipal corporation (PMC) will be very helpful for registering queries in natural language and get immediate response. Understanding the short text is the main challenge of the system as short text do not follow syntax of the written language, short text does not have sufficient statistics to support approach of text mining, short text is noisy and ambiguous. So, traditional Part-of-Speech (POS) tagging tools cannot be easily applied. In proposed framework for understanding natural language semantic knowledge provided by well-known knowledgebase WordNet is used. In prequery citizens inserts complaint to system and get immediate response to query with the help of knowledgebase and machine learning algorithm. In postquery system analyses the citizen sentiment to handle grievance level and accordingly prioritize the citizens by sentiment analysis. The proposed framework will help many organizations to ensure quality service provision and customer satisfaction with less human efforts.
机译:如今,大城市市民需要一个共同的平台来记录他们的投诉。在传统的电话系统中,投诉注册的任务非常耗时,因此市民必须等到服务执行人员收到呼叫后才能进行。拟议的框架是为浦那市政公司(PMC)开发的,它对于以自然语言注册查询并获得即时响应非常有帮助。理解短文本是系统的主要挑战,因为短文本不遵循书面语言的语法,短文本没有足够的统计数据来支持文本挖掘的方法,短文本嘈杂而模棱两可。因此,传统的词性(POS)标记工具无法轻松应用。在提出的用于理解由知名知识库提供的自然语言语义知识的框架中,使用了WordNet。在预查询中,市民可以在知识库和机器学习算法的帮助下将投诉插入系统,并立即获得对查询的响应。在后查询系统中,分析公民情绪以处理不满程度,并通过情绪分析对公民进行优先排序。拟议的框架将帮助许多组织以较少的人力来确保提供优质的服务和客户满意度。

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