Extracting Dynamic Urban Mobility Patterns from Mobile Phone Data

  title={Extracting Dynamic Urban Mobility Patterns from Mobile Phone Data},
  author={Yihong Yuan and Martin Raubal},
The rapid development of information and communication technologies (ICTs) has provided rich resources for spatio-temporal data mining and knowledge discovery in modern societies. Previous research has focused on understanding aggregated urban mobility patterns based on mobile phone datasets, such as extracting activity hotspots and clusters. In this paper, we aim to go one step further from identifying aggregated mobility patterns. Using hourly time series we extract and represent the dynamic… CONTINUE READING
Highly Cited
This paper has 49 citations. REVIEW CITATIONS

From This Paper

Topics from this paper.


Publications citing this paper.
Showing 1-10 of 29 extracted citations

Enhancing traffic model of big cities: Network skeleton & reciprocity

2018 10th International Conference on Communication Systems & Networks (COMSNETS) • 2018
View 9 Excerpts
Highly Influenced

Population mobility chat based on multi-sensor data fusion

2018 IEEE International Conference on Applied System Invention (ICASI) • 2018
View 1 Excerpt


Publications referenced by this paper.
Showing 1-10 of 21 references

Measure similarity of time series • Dynamic time warping – Construct a DTW grid – Calculate a distance measure of for each grid cell (here we use absolute differences)

Y. Yuan, M. Raubal
Weekdays • 2013
View 1 Excerpt

Intra - Urban Human Mobility Patterns : An Urban Morphology Perspective

C. Kang, X. Ma, D. Tong, Y. Liu
Physica A : Statistical Mechanics and its Applications • 2012

Outlier detection • Detect ‘abnormal’ activities based on similarity measure • Hierarchical classification numCluster

bars, etc. Polygon • 2008

Seasonal tourism spaces in Estonia : Case study with mobile positioning data

Rein Ahasa, Anto Aasaa, Ülar Markb, Taavi Paea, Ain Kulla

Similar Papers

Loading similar papers…