基于社会感知的智慧城市警务权力绩效情感分析

T. Malik, Ahsen Tahir, Ahsan Bilal, K. Dashtipour, M. Imran, Q. Abbasi
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引用次数: 0

摘要

智能城市中的高科技服务、智能手机的无处不在以及社交媒体平台的激增,使得社会感知成为可能,无论是通过直接的人类观察者,还是通过人类作为传感器的载体和操作员,比如通过使用智能手机、相机等。我们进行了情感分析(SA),挖掘了智慧城市的公务员和警察当局的民意。在巴基斯坦拉合尔建立的高科技警务机构,即旁遮普安全城市管理局(PSCA),以及综合指挥控制中心和各种设备,如8000个摄像头、监控传感器等,导致了对其绩效评估和社会媒体支持的意见挖掘的需求,以确定对社区的更广泛影响。通过PSCA在Facebook、Twitter、YouTube和网络电视上的出现,实现了对公务员的社会感知。如果不考虑当地语言,就不可能有当地公务员的SA。在本文中,我们利用机器学习技术以当地语言乌尔都语和英语对警察当局和所提供的公务员进行多类民意分析。支持向量机为积极、消极和中性情绪提供了最高性能的多分类准确率86.87%。从2020年1月至2021年7月的时间跨度来看,总体的正面情绪为62.40%,负面情绪为13.51%,显示出对警察当局和提供的公务员的高度满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Sensing for Sentiment Analysis of Policing Authority Performance in Smart Cities
High-tech services in smart cities, ubiquity of smart phones, and proliferation of social media platforms have enabled social sensing, either through direct human observers or through humans as sensor carriers and operators, such as through the use of smart phones, cameras, etc. We performed a sentiment analysis (SA) and mined public opinion on the civil services and policing authority in a smart city. The establishment of high-tech policing in Lahore, Pakistan, known as the Punjab Safe Cities Authority (PSCA), Lahore, along with integrated command and control centers and various equipments, such as 8,000 cameras, monitoring sensors, etc., has resulted in a requirement for its performance evaluation and social media–enabled opinion mining to determine the broader impact on communities. Social sensing of civil services has been enabled through the presence of the PSCA on Facebook, Twitter, YouTube, and Web TV. The SA of the local civil services is not possible without taking into account the local language. In this article, we utilize machine learning techniques to perform multi-class SA of public opinion on policing authority and the provided civil services in both the local languages Urdu and English. The support vector machine provides the highest performance multi-classification accuracy of 86.87% for positive, negative, and neutral sentiments. The temporal sentiments are determined over time from January 2020 to July 2021, with an overall positive sentiment of 62.40% and a negative sentiment of 13.51%, which shows high satisfaction of policing authority and the provided civil services.
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CiteScore
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