Analyzing The Density of Residents in Shanghai to Examine the Role of Big Data in the Development of Smart Cities

R. Sikka
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Abstract

A significant amount of study has been done in recent decades to evaluate data from social networks based on the region in order to emphasize their applicability. This social networking data based on geography may be used to create models and predictions. methods for analyzing and reproducing spatiotemporal patterns and user activity symmetry, as well as volume estimates. Distinct density estimation methods are used in the present research to examine the number of times people checking in in a certain period of time depth using a database of social networks depending on region obtained from Sina-Weibo, commonly known as Weibo, during a particular time time in ten distinct Shanghai areas, China. The goal of this research is to look at the density of users in Shanghai based on Weibo geolocation data and compare it to other cities using univariate and bivariate thickness estimate methods, such as point density and kernel density estimation (KDE). The study's main findings include: I geographical aspects of users' behavior, such as check-in-based activity centers, (ii) the practicality of employing checkin data to describe the interaction between users and social networks, and (iii) the
分析上海人口密度,考察大数据在智慧城市发展中的作用
近几十年来,为了强调其适用性,大量的研究基于区域来评估来自社交网络的数据。这种基于地理位置的社交网络数据可以用来创建模型和预测。分析和再现时空模式和用户活动对称性的方法,以及体积估计。本研究采用不同密度估计方法,利用从新浪微博(通常称为微博)获取的基于区域的社交网络数据库,对中国上海10个不同区域在特定时间深度内的签到次数进行检验。本研究的目的是研究基于微博地理定位数据的上海用户密度,并使用单变量和双变量厚度估计方法(如点密度和核密度估计(KDE))将其与其他城市进行比较。该研究的主要发现包括:用户行为的地理方面,例如基于签到的活动中心,(ii)使用签到数据来描述用户与社交网络之间交互的实用性,以及(iii)
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