Uncovering Correlations Between Urban Road Network Centrality and Human Mobility
Online veröffentlicht: 21. Mai 2023
Seitenbereich: 99 - 105
DOI: https://doi.org/10.21307/ijanmc-2021-039
Schlüsselwörter
© 2021 Yury Halavachou et al., published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Urban spaces are typically highly localized but they are globally connected [1]. In particular, the urban space consists of local patchwork, which serve some specific functionality. Nevertheless, these patchwork are linked by the urban street network into a whole at a global scale. While the structure of urban space is greatly influenced by the history of each city [2], researchers have long been analyzing its properties in order to facilitate planning functionalities, such as resource allocation and transportation planning. Human activities in urban environments, such as business and travel, are often shaped and constrained by the geographical distance to and accessibility of the resources.
The urban street network functioning as the backbone of urban space. plays a vital role in connecting urban neighborhoods together and supporting the local/global movement in/between urban areas. Its structural properties, such as centrality and accessibility, can reveal many implications on human activities. Centrality [3], which is a network-based metric measuring the structural. importance of nodes in complex networks is often utilized to capture the importance of different parts of road networks. Former studies [4, 5] indicate that the structural properties of urban road networks as captured by the betweenness centrality can explain the observed traffic flow. Another form of centrality, closeness centrality is shown to be highly correlated with the intensity of economic activities [6] and land use [7]. Furthermore, the aggregated human travel flow on streets is shown through simulations to be mainly shaped by the underlying street structure [8].
In this work, we conduct a study on the correlation between the centrality of the urban street network and the intensity of human movement over it using data from Pittsburgh and NYC. Our results imply that different centrality metrics correlate with the intensity of human movement at different levels. The correlation strength further differs in the two cities examined.
In this section we will introduce the network structures that capture the intensity of human movements and the urban road network as well as the data that drive their realizations in Pittsburgh and NYC.
In the human transition network
In order to obtain the structure of
Figure 1
Street network in selected urban areas of two cities

Where a=0.85 and
This work will also use a second simple centrality metric for
This paper will model the street network through a graph
Figure 2
Street network in selected urban areas of two cities

Where
Where,
Where,
Finlly, we calculate three global and nine local indices of street centralities. The global in indices,
1
Our goal is to examine the relation between the central areas in a city as captured through the mobility of people, and the central areas of the city as captured through the street network. For that, we will utilize the Spearman's rank correlation coefficient
We take the urban street network as an directed network without consideration of the traffic accessibility in two directions. Table 1 presents the correlation results for Pittsburgh and NYC. We can see that the global closeness centrality
Correlation ρ(*indicates a p-value<0.05; ** indicates p-value<0.01)between the street centrality and the intensity of human movement.
Pittsburgh | NYC | |||
---|---|---|---|---|
0.021 | 0.020 | 0.078 | 0.074 | |
−0.223** | −0.228** | −0.085 | −0.093 | |
−0.043 | −0.046 | 0.012 | 0.004 | |
0.024 | 0.0189 | −0.044 | −0.047 | |
−0.001 | −0.128* | 0.009 | −0.127* | |
0.017 | 0.026 | −0.072 | −0.070 | |
0.106* | 0.112* | −0.014 | −0.014 | |
0.105* | 0.104* | |||
0.028 | 0.026 | |||
−0.031 | −0.031 |
This research further consider the urban street network as a directed graph based on the direction accessibility for three types of movements including driving biking and walking. In this case, there are two different calculation or closeness and straightness centrality based on two types of shortest paths between nodes. The first one is outgoing shortest path
Correlation results by considering the road network as a directed network based on the accessibility of driving, biking and walking in either directions.
PageRank | driving | biking | walking | |||
---|---|---|---|---|---|---|
Pittsburgh | NYC | Pittsburgh | NYC | Pittsburgh | NYC | |
−0.053 | 0.061 | 0.200** | 0.301** | 0.212** | 0.313** | |
−0.002 | 0.083 | 0.231** | 0.303** | |||
−0.253** | −0.143** | −0.250** | −0.087 | −0.241** | 0.042 | |
−0.282** | −0.142** | −0.253** | −0.069 | |||
−0.133** | −0.170* | −0.123** | −0.117* | 0.103* | −0.012 | |
−0.067 | 0.003 | −0.103* | −0.012 | |||
−0.053 | −0.215** | −0.024 | −0.178** | 0.011 | −0.078 | |
−0.039 | −0.204** | −0.077 | −0.171** | |||
0.042 | 0.100* | 0.044 | −0.066 | 0.041 | −0.081 | |
0.061 | 0.125* | 0.072 | −0.035 | 0.062 | −0.044 | |
0.140** | 0.100* | 0.161** | 0.009 | 0.143** | 0.002 | |
0.248* | 0.053 | 0.324** | 0.002 | 0.362** | 0.094 | |
0.248** | 0.053 | 0.324** | 0.002 | |||
0.306** | 0.046 | 0.363** | −0.020 | 0.396** | 0.032 | |
0.306** | 0.046 | 0.363** | −0.020 | |||
0.349** | 0.003 | 0.386** | −0.051 | 0.423** | −0.023 | |
0.349** | 0.003 | 0.386** | −0.051 |
In this paper we examined the correlations between the centrality of street networks with the intensity of human movement in urban areas and we found that the correlation level differs with different centrality metrics, of which some further depend on different cities. Our work provides an illuminating way to study the relationship between urban structure and human movement in a large-scale way.
We would like to emphasize that our analysis methods may suffer from a variety of biases. For example, we examine the correlation by aggregating the road network centrality and human movement in each neighborhood area, while a microscopic study might give a different view. Also, the rectangle urban area we pick may introduce edge effects on the correlation results. Furthermore, the large-scale available dataset used here may have some noises and biases. For instance, the street networks in OpenStreetMap might not that accurate especially for cities that are not that popular, since all the information is crowd sourced y the public. Also, the nature of voluntarily sharing may only give a partial information of human movement captured by geo-tagged tweets, of which the quality depends on many other factors, such as demographic biases, spam tweets and fake location information.
In the future, we plan to examine the levels of correlation by considering the temporal and contextual information of human movement such as the time and type. Furthermore, we aim to examine the centralities of a directed road network by considering the accessibility of different transportation modes (e.g., driving, biking and walking) in two directions on the street. For network centralities, we want to further investigate other practical factors, such as the max flow on a street (number of available lanes), the fastest path and the density/type of resources surrounding a street intersection.