Graph data are extensively utilized in social networks, collaboration networks, geo-social networks, and communication networks. Their growing usage in cyberspaces poses daunting security and privacy challenges. Data publication requires privacy-protection mechanisms to guard against information breaches. In addition, access control mechanisms can be used to allow controlled sharing of data. Provision of privacy-protection, access control, and data integrity for graph data require a holistic approach for data management and secure query processing. This thesis presents such an approach. In particular, the thesis addresses two notable challenges for graph databases, which are: i) how to ensure users\u27 privacy in published graph data under ...
As the Internet evolves, we find more applications that involve data originating from multiple sourc...
Computer systems contain vital information that must be protected. One of the crucial aspects of pro...
Conventional private data publication schemes are targeted at publication of sensitive datasets with...
Graph data are extensively utilized in social networks, collaboration networks, geo-social networks,...
This dissertation addresses the challenge of enabling accurate analysis of network data while ensuri...
The application of graph analytics to various domains has yielded tremendous societal and economical...
In graph machine learning, data collection, sharing, and analysis often involve multiple parties, ea...
As data collection and storage techniques being greatly improved, data analysis is becoming an incre...
With the advances of data analytics, preserving privacy in publishing data about individuals becomes...
Nowadays, more and more people join social networks, such as Facebook, Linkedin, and Livespace, to s...
Graph-structured data is pervasive. Modeling large-scale network-structured datasets require graph p...
© 2019 Leyla RoohiThere are many examples of graph-structured data, like records of friendships in s...
Graph Neural Networks (GNNs) are essential for handling graph-structured data, often containing sens...
In the real world, many phenomena can be naturally modeled as a graph whose nodes represent entities...
The thesis considers a systematic approach to design and develop techniques for preventing personal ...
As the Internet evolves, we find more applications that involve data originating from multiple sourc...
Computer systems contain vital information that must be protected. One of the crucial aspects of pro...
Conventional private data publication schemes are targeted at publication of sensitive datasets with...
Graph data are extensively utilized in social networks, collaboration networks, geo-social networks,...
This dissertation addresses the challenge of enabling accurate analysis of network data while ensuri...
The application of graph analytics to various domains has yielded tremendous societal and economical...
In graph machine learning, data collection, sharing, and analysis often involve multiple parties, ea...
As data collection and storage techniques being greatly improved, data analysis is becoming an incre...
With the advances of data analytics, preserving privacy in publishing data about individuals becomes...
Nowadays, more and more people join social networks, such as Facebook, Linkedin, and Livespace, to s...
Graph-structured data is pervasive. Modeling large-scale network-structured datasets require graph p...
© 2019 Leyla RoohiThere are many examples of graph-structured data, like records of friendships in s...
Graph Neural Networks (GNNs) are essential for handling graph-structured data, often containing sens...
In the real world, many phenomena can be naturally modeled as a graph whose nodes represent entities...
The thesis considers a systematic approach to design and develop techniques for preventing personal ...
As the Internet evolves, we find more applications that involve data originating from multiple sourc...
Computer systems contain vital information that must be protected. One of the crucial aspects of pro...
Conventional private data publication schemes are targeted at publication of sensitive datasets with...