利用大学的学期联系网络模拟城市规模

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES Environment and Planning B: Urban Analytics and City Science Pub Date : 2024-03-05 DOI:10.1177/23998083241237310
Anthony FJ van Raan
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引用次数: 0

摘要

在本文中,我们试图加深对城市缩放现象的理解。我们的目的是研究如果网络规模扩大,超线性扩展是如何出现的,以及这种扩展如何取决于构成网络的元素的出现。为此,我们将城市视为一个复杂的网络结构,并通过一所研究密集型大学的所有出版物网络来模拟这一结构。在这个模拟中,出版物扮演城市居民的角色,出版物中的概念(术语和关键词)代表居民的各种能力和素质。我们在实验中使用了莱顿大学 2022 年科学出版物中所有由作者和数据库提供的术语。我们计算术语的共同出现率,并在这些联系的基础上创建一个网络,然后通过从全部出版物中陆续添加出版物,让这个网络不断扩大。这样,我们就得到了一系列不同规模的网络,从而模拟了一系列不同居民数量的城市。这一过程针对不同的术语出现阈值进行。然后,我们分析了四个重要的网络参数,即术语数、聚类数、链接数和总链接强度是如何随着网络规模的增大而增加的。我们认为,网络链接数和网络总链接强度尤其是主导缩放现象的参数,可被视为对城市社会经济实力(即城市生产总值)的模拟。我们发现,这些网络参数与网络规模之间存在明显的幂律关系,最低出现阈值的幂律指数也在城市扩展的典型范围内。在我们的方法中,聚类的数量可以解释为网络内部复杂性的衡量标准。由于出现阈值决定了术语的多样性,我们可以预期出现阈值与聚类数量之间存在特殊关系。事实的确如此:对于其他三个网络参数,随着出现阈值的增加,缩放指数也会增加,而聚类数是唯一一个随着出现阈值的增加,缩放指数会减少的网络参数。最后,我们将讨论我们的出版术语网络方法与城市中的缩放现象之间的关系。
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Simulating urban scaling with a term linkages network of a university
In this paper, we make an attempt to increase our understanding of the urban scaling phenomenon. The aim is to investigate how superlinear scaling emerges if a network increases in size and how this scaling depends on the occurrence of elements that constitute the network. To this end, we consider a city as a complex network structure and simulate this structure by the network of all publications of a research intensive university. In this simulation, the publications take the role of the city inhabitants and the concepts (terms and keywords) in the publications represent all kinds of abilities and qualities of the inhabitants. We use in this experiment all author- and database-given terms of the scientific publications of Leiden University from 2022. We calculate the co-occurrence of terms, and on the basis of these connections, we create a network and let this network grow by successively adding publications from the total set of publications. In this way, we get a series of networks with different sizes and this simulates a series of cities with different number of inhabitants. This procedure is performed for different values of the term occurrence threshold. We then analyze how four important network parameters, namely, number of terms, number of clusters, number of links, and total link strength increase with increasing size of the network. Particularly the number of network links and the total network linkage strength are in our opinion the parameters that dominate the scaling phenomenon and can be considered as a simulation of the socioeconomic strength of a city, that is, its gross urban product. We find a significant power law dependence of these network parameters on network size and the power law exponents for the lowest occurrence threshold are within the range that is typical for urban scaling. In our approach, the number of clusters can be interpreted as a measure of complexity within the network. Since the occurrence threshold determines the diversity of terms, we may expect a special relation between the occurrence threshold and the number of clusters. This is indeed the case: whereas for the three other network parameters the scaling exponent increases with increasing occurrence threshold, the number of clusters is the only network parameter of which the scaling exponent decreases with increasing occurrence threshold. Finally, we discuss how our publication term network approach relates to scaling phenomena in cities.
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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