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Dive into the research topics where Chaogui Kang is active.

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Featured researches published by Chaogui Kang.


PLOS ONE | 2014

Uncovering Patterns of Inter-Urban Trip and Spatial Interaction from Social Media Check-In Data

Yu Liu; Zhengwei Sui; Chaogui Kang; Yong Gao

The article revisits spatial interaction and distance decay from the perspective of human mobility patterns and spatially-embedded networks based on an empirical data set. We extract nationwide inter-urban movements in China from a check-in data set that covers half a million individuals within 370 cities to analyze the underlying patterns of trips and spatial interactions. By fitting the gravity model, we find that the observed spatial interactions are governed by a power law distance decay effect. The obtained gravity model also closely reproduces the exponential trip displacement distribution. The movement of an individual, however, may not obey the same distance decay effect, leading to an ecological fallacy. We also construct a spatial network where the edge weights denote the interaction strengths. The communities detected from the network are spatially cohesive and roughly consistent with province boundaries. We attribute this pattern to different distance decay parameters between intra-province and inter-province trips.


Annals of The Association of American Geographers | 2015

Social Sensing: A New Approach to Understanding Our Socioeconomic Environments

Yu Liu; Xi Liu; Song Gao; Li Gong; Chaogui Kang; Ye Zhi; Guanghua Chi; Li Shi

The emergence of big data brings new opportunities for us to understand our socioeconomic environments. We use the term social sensing for such individual-level big geospatial data and the associated analysis methods. The word sensing suggests two natures of the data. First, they can be viewed as the analogue and complement of remote sensing, as big data can capture well socioeconomic features while conventional remote sensing data do not have such privilege. Second, in social sensing data, each individual plays the role of a sensor. This article conceptually bridges social sensing with remote sensing and points out the major issues when applying social sensing data and associated analytics. We also suggest that social sensing data contain rich information about spatial interactions and place semantics, which go beyond the scope of traditional remote sensing data. In the coming big data era, GIScientists should investigate theories in using social sensing data, such as data representativeness and quality, and develop new tools to deal with social sensing data.


EPJ Data Science | 2014

The impact of social segregation on human mobility in developing and industrialized regions

Alexander Amini; Kevin S. Kung; Chaogui Kang; Stanislav Sobolevsky; Carlo Ratti

This study leverages mobile phone data to analyze human mobility patterns in a developing nation, especially in comparison to those of a more industrialized nation. Developing regions, such as the Ivory Coast, are marked by a number of factors that may influence mobility, such as less infrastructural coverage and maturity, less economic resources and stability, and in some cases, more cultural and language-based diversity. By comparing mobile phone data collected from the Ivory Coast to similar data collected in Portugal, we are able to highlight both qualitative and quantitative differences in mobility patterns - such as differences in likelihood to travel, as well as in the time required to travel - that are relevant to consideration on policy, infrastructure, and economic development. Our study illustrates how cultural and linguistic diversity in developing regions (such as Ivory Coast) can present challenges to mobility models that perform well and were conceptualized in less culturally diverse regions. Finally, we address these challenges by proposing novel techniques to assess the strength of borders in a regional partitioning scheme and to quantify the impact of border strength on mobility model accuracy.


Transactions in Gis | 2014

Analyzing Relatedness by Toponym Co‐Occurrences on Web Pages

Yu Liu; Fahui Wang; Chaogui Kang; Yong Gao; Yongmei Lu

This research proposes a method for capturing “relatedness between geographical entities” based on the co-occurrences of their names on web pages. The basic assumption is that a higher count of co-occurrences of two geographical places implies a stronger relatedness between them. The spatial structure of China at the provincial level is explored from the co-occurrences of two provincial units in one document, extracted by a web information retrieval engine. Analysis on the co-occurrences and topological distances between all pairs of provinces indicates that: (1) spatially close provinces generally have similar co-occurrence patterns; (2) the frequency of co-occurrences exhibits a power law distance decay effect with the exponent of 0.2; and (3) the co-occurrence matrix can be used to capture the similarity/linkage between neighboring provinces and fed into a regionalization method to examine the spatial organization of China. The proposed method provides a promising approach to extracting valuable geographical information from massive web pages.


International Journal of Geographical Information Science | 2016

Incorporating spatial interaction patterns in classifying and understanding urban land use

Xi Liu; Chaogui Kang; Li Gong; Yu Liu

ABSTRACT Land use classification has benefited from the emerging big data, such as mobile phone records and taxi trajectories. Temporal activity variations derived from these data have been used to interpret and understand the land use of parcels from the perspective of social functions, complementing the outcome of traditional remote sensing methods. However, spatial interaction patterns between parcels, which could depict land uses from a perspective of connections, have rarely been examined and analysed. To leverage spatial interaction information contained in the above-mentioned massive data sets, we propose a novel unsupervised land use classification method with a new type of place signature. Based on the observation that spatial interaction patterns between places of two specific land uses are similar, the new place signature improves land use classification by trading off between aggregated temporal activity variations and detailed spatial interactions among places. The method is validated with a case study using taxi trip data from Shanghai.


International Journal of Geographical Information Science | 2013

Inferring properties and revealing geographical impacts of intercity mobile communication network of China using a subnet data set

Chaogui Kang; Yi Zhang; Xiujun Ma; Yu Liu

This article provides a novel and practical approach for investigating the characteristics of intercity telecommunication network whose overall and complete information is unavailable. Using a mobile phone call data set covering 4.39 million subscribers registered in a particular region, we construct two intercity mobile communication subnets and infer characteristics of the whole intercity mobile communication network of China. Results confirm that intercity communication intensity is characterized by the gravity model. The communication intensity based on mobile call number decreases along the distance with a scaling exponent 0.5, whereas the scaling exponent for the communication intensity based on mobile call duration is 0.4. Moreover, we uncover the rank-size distribution of tie strength (mobile call number and duration) between a city and its neighbours. The rank-size law of tie strengths between cities is mainly determined by the rank-size distribution of cities. The distance between cities plays a less decisive role than the size distribution in the network, but significantly impacts mobile communication patterns. The call duration of individual intercity mobile communication is generally positively correlated to the communication distance, explaining why the distance decay of communication intensity based on call durations is slower than that based on call numbers. The contribution of this research is twofold. First, we identify the distance decay effect in intercity mobile communications of China and uncover the dominant impact of the rank-size distribution of cities. Second, a method for estimating the properties of the whole network according to the observed interactions of its subnets is developed.


Archive | 2015

Linked Activity Spaces: Embedding Social Networks in Urban Space

Yaoli Wang; Chaogui Kang; Luís M. A. Bettencourt; Yu Liu; Clio Andris

We examine the likelihood that a pair of sustained telephone contacts (e.g. friends, family, professional contacts, called “friends”) uses the city similarly. Using call data records from Jiamusi, China, we estimate a proxy for the daily activity spaces of each individual subscriber by interpolating the points of geo-located cell towers he or she uses most frequently. We then calculate the overlap of the polygonal activity spaces of two established telephone contacts, what we call linked activity spaces.


Journal of Geographical Systems | 2012

Understanding intra-urban trip patterns from taxi trajectory data

Yu Liu; Chaogui Kang; Song Gao; Yu Xiao; Yuan Tian


Physica A-statistical Mechanics and Its Applications | 2012

Intra-urban human mobility patterns: An urban morphology perspective

Chaogui Kang; Xiujun Ma; Daoqin Tong; Yu Liu


knowledge discovery and data mining | 2013

Exploring human movements in Singapore: a comparative analysis based on mobile phone and taxicab usages

Chaogui Kang; Stanislav Sobolevsky; Yu Liu; Carlo Ratti

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Carlo Ratti

Massachusetts Institute of Technology

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Song Gao

University of California

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Stanislav Sobolevsky

Massachusetts Institute of Technology

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Xi Liu

Pennsylvania State University

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