TY - GEN
T1 - Privacy preserving visualization for social network data with ontology information
AU - Chou, Jia Kai
AU - Bryan, Chris
AU - Ma, Kwan Liu
N1 - Funding Information: This research is supported in part by the UC Davis RISE program, U.S. National Science Foundation via grants NSF IIS-1528203 and NSF IIS-1320229, and the U.S. Department of Energy through grant DE-FC02-12ER26072. Publisher Copyright: © 2017 IEEE.
PY - 2017/9/11
Y1 - 2017/9/11
N2 - Analyzing social network data helps sociologists understand the behaviors of individuals and groups as well as the relationships between them. With additional ontology information, the semantics behind the network structure can be further explored. Unfortunately, creating network visualizations with these datasets for presentation can inadvertently expose the private and sensitive information of individuals that reside in the data. To deal with this problem, we generalize conventional data anonymization models (originally designed for relational data) and formally apply them in the context of privacy preserving ontological network visualization. We use these models to identify the privacy leaks that exist in a visualization, provide graph modification actions that remove and/or perceptually minimize the effect of the identified leaks, and discuss strategies for what types of privacy actions to choose depending on the context of the leaks. We implement an ontological visualization interface with associated privacy preserving operations, and demonstrate with two case studies using real-world datasets to show that our approach can identify and solve potential privacy issues while balancing overall graph readability and utility.
AB - Analyzing social network data helps sociologists understand the behaviors of individuals and groups as well as the relationships between them. With additional ontology information, the semantics behind the network structure can be further explored. Unfortunately, creating network visualizations with these datasets for presentation can inadvertently expose the private and sensitive information of individuals that reside in the data. To deal with this problem, we generalize conventional data anonymization models (originally designed for relational data) and formally apply them in the context of privacy preserving ontological network visualization. We use these models to identify the privacy leaks that exist in a visualization, provide graph modification actions that remove and/or perceptually minimize the effect of the identified leaks, and discuss strategies for what types of privacy actions to choose depending on the context of the leaks. We implement an ontological visualization interface with associated privacy preserving operations, and demonstrate with two case studies using real-world datasets to show that our approach can identify and solve potential privacy issues while balancing overall graph readability and utility.
UR - http://www.scopus.com/inward/record.url?scp=85030680508&partnerID=8YFLogxK
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U2 - 10.1109/PACIFICVIS.2017.8031573
DO - 10.1109/PACIFICVIS.2017.8031573
M3 - Conference contribution
T3 - IEEE Pacific Visualization Symposium
SP - 11
EP - 20
BT - 2017 IEEE Pacific Visualization Symposium, PacificVis 2017 - Proceedings
A2 - Wu, Yingcai
A2 - Weiskopf, Daniel
A2 - Dwyer, Tim
PB - IEEE Computer Society
T2 - 10th IEEE Pacific Visualization Symposium, PacificVis 2017
Y2 - 18 April 2017 through 21 April 2017
ER -