TY - GEN
T1 - Location-Based Social Network Data Generation Based on Patterns of Life
AU - Kim, Joon Seok
AU - Jin, Hyunjee
AU - Kavak, Hamdi
AU - Rouly, Ovi Chris
AU - Crooks, Andrew
AU - Pfoser, Dieter
AU - Wenk, Carola
AU - Zufle, Andreas
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/6
Y1 - 2020/6
N2 - Location-based social networks (LBSNs) have been studied extensively in recent years. However, utilizing real-world LBSN data sets yields several weaknesses: sparse and small data sets, privacy concerns, and a lack of authoritative ground-Truth. To overcome these weaknesses, we leverage a large-scale LBSN simulation to create a framework to simulate human behavior and to create synthetic but realistic LBSN data based on human patterns of life. Such data not only captures the location of users over time but also their interactions via social networks. Patterns of life are simulated by giving agents (i.e., people) an array of 'needs' that they aim to satisfy, e.g., agents go home when they are tired, to restaurants when they are hungry, to work to cover their financial needs, and to recreational sites to meet friends and satisfy their social needs. While existing real-world LBSN data sets are trivially small, the proposed framework provides a source for massive LBSN benchmark data that closely mimics the real-world. As such, it allows us to capture 100% of the (simulated) population without any data uncertainty, privacy-related concerns, or incompleteness. It allows researchers to see the (simulated) world through the lens of an omniscient entity having perfect data. Our framework is made available to the community. In addition, we provide a series of simulated benchmark LBSN data sets using different synthetic towns and real-world urban environments obtained from OpenStreetMap. The simulation software and data sets, which comprise gigabytes of spatio-Temporal and temporal social network data, are made available to the research community.
AB - Location-based social networks (LBSNs) have been studied extensively in recent years. However, utilizing real-world LBSN data sets yields several weaknesses: sparse and small data sets, privacy concerns, and a lack of authoritative ground-Truth. To overcome these weaknesses, we leverage a large-scale LBSN simulation to create a framework to simulate human behavior and to create synthetic but realistic LBSN data based on human patterns of life. Such data not only captures the location of users over time but also their interactions via social networks. Patterns of life are simulated by giving agents (i.e., people) an array of 'needs' that they aim to satisfy, e.g., agents go home when they are tired, to restaurants when they are hungry, to work to cover their financial needs, and to recreational sites to meet friends and satisfy their social needs. While existing real-world LBSN data sets are trivially small, the proposed framework provides a source for massive LBSN benchmark data that closely mimics the real-world. As such, it allows us to capture 100% of the (simulated) population without any data uncertainty, privacy-related concerns, or incompleteness. It allows researchers to see the (simulated) world through the lens of an omniscient entity having perfect data. Our framework is made available to the community. In addition, we provide a series of simulated benchmark LBSN data sets using different synthetic towns and real-world urban environments obtained from OpenStreetMap. The simulation software and data sets, which comprise gigabytes of spatio-Temporal and temporal social network data, are made available to the research community.
KW - Data Generation
KW - Location-Based Social Networks
KW - Patterns of Life
KW - Social Network Data Generation
KW - Social Simulation
KW - Temporal Social Network Data
KW - Trajectory Data Generation
UR - http://www.scopus.com/inward/record.url?scp=85090392365&partnerID=8YFLogxK
U2 - 10.1109/MDM48529.2020.00038
DO - 10.1109/MDM48529.2020.00038
M3 - Conference contribution
AN - SCOPUS:85090392365
T3 - Proceedings - IEEE International Conference on Mobile Data Management
SP - 158
EP - 167
BT - Proceedings - 2020 21st IEEE International Conference on Mobile Data Management, MDM 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 21st IEEE International Conference on Mobile Data Management, MDM 2020
Y2 - 30 June 2020 through 3 July 2020
ER -