Abstract
Smart city promotes the unification of conventional urban infrastructure and information technology (IT) to improve the quality of living and sustainable urban services in the city. To accomplish this, smart cities necessitate collaboration among the public as well as private sectors to install IT platforms to collect and examine massive quantities of data. At the same time, it is essential to design effective artificial intelligence (AI) based tools to handle healthcare crisis situations in smart cities. To offer proficient services to people during healthcare crisis time, the authorities need to look closer towards them. Sentiment analysis (SA) in social networking can provide valuable information regarding public opinion towards government actions. With this motivation, this paper presents a new AI based SA tool for healthcare crisis management (AISA-HCM) in smart cities. The AISA-HCM technique aims to determine the emotions of the people during the healthcare crisis time, such as COVID-19. The proposed AISA-HCM technique involves distinct operations such as pre-processing, feature extraction, and classification. Besides, brain storm optimization (BSO) with deep belief network (DBN), called BSO-DBN model is employed for feature extraction. Moreover, beetle antenna search with extreme learning machine (BAS-ELM) method was utilized for classifying the sentiments as to various classes. The use of BSO and BAS algorithms helps to effectively modify the parameters involved in the DBN and ELM models respectively. The performance validation of the AISA-HCM technique takes place using Twitter data and the outcomes are examined with respect to various measures. The experimental outcomes highlighted the enhanced performance of the AISA-HCM technique over the recent state of art SA approaches with the maximum precision of 0.89, recall of 0.88, F-measure of 0.89, and accuracy of 0.94.
Highlights
In recent times, Smart Cities is dynamically giving support for quick response in healthcare crisis management
The performance validation of the AISA-HCM technique takes place using Twitter data and the outcomes are examined with respect to different measures
Once the input tweets are preprocessed, they are fed into the brain storm optimization (BSO)-deep belief network (DBN) model for feature extraction purposes
Summary
Smart Cities is dynamically giving support for quick response in healthcare crisis management. The current disaster is because COVID19 is generating a socially innovative scenario which is sensational for healthcare communities [8] They live in an exceedingly globalized world, in which free travel among nations, relocation adaptability, utilization of Information and Communication Technologies (ICTs), and the turn of events are significantly evolved. In the latter half of May, when this worldwide outbreak has continually affected the lives of millions of people in many nations, and they have no other solution to resort to overall lockdowns [10] Such tweets create an easy way for the user to exchange and share their ideas, opinions, and points of view regarding a provided topic. This paper presents a new AI based SA tool for healthcare crisis management (AISA-HCM) in smart cities.
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