Abstract

The quality of life for people in urban regions can be improved by predicting urban human mobility and adjusting urban planning accordingly. In this study, we compared several possible variables to verify whether a gravity model (a human mobility prediction model borrowed from Newtonian mechanics) worked as well in inner-city regions as it did in intra-city regions. We reviewed the resident population, the number of employees, and the number of SNS posts as variables for generating mass values for an urban traffic gravity model. We also compared the straight-line distance, travel distance, and the impact of time as possible distance values. We defined the functions of urban regions on the basis of public records and SNS data to reflect the diverse social factors in urban regions. In this process, we conducted a dimension reduction method for the public record data and used a machine learning-based clustering algorithm for the SNS data. In doing so, we found that functional distance could be defined as the Euclidean distance between social function vectors in urban regions. Finally, we examined whether the functional distance was a variable that had a significant impact on urban human mobility.

Highlights

  • The latest models used to predict intra-city traffic employ physical factors, such as the population size and the distance-of-travel, as driving variables

  • After determining the best-fitting model, we expanded it to application in functional distances, which are defined as the Euclidean distance between social function vectors of the inner regions of the city

  • We examined the effect of functional distance on traffic volume between urban regions by allowing the extended model to take into consideration the functional characteristics of these urban regions

Read more

Summary

RESEARCH ARTICLE

Enhancing human mobility prediction using local functions based on public records and SNS data. Graduate School of Culture Technology, Korea Advanced Institute of Science and Technology, Daejeon, South Korea a1111111111 a1111111111 a1111111111 a1111111111 a1111111111

OPEN ACCESS
Introduction
Human mobility prediction using local functions
Related studies Human mobility in city
The function of urban regions
Tax Administration
Gravity equations
Functional distance
Functional distance using public record data
Functional distance using SNS data
Modified gravity models using the calculated functional distance
Conclusion
Findings
Author Contributions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call