Big graphs, such as user interactions in social networks and customer rating matrices in collaborative filters, possess great values for both businesses and research. They are not only big but often keep evolving, which requires a large amount of computing resources to maintain. With the wide deployment of public cloud resources, owners of big graphs may want to use cloud resources to obtain storage and computation scalability. However, privacy and ownership of the graphs in the cloud has become a major concern. In this paper, we study privacy-preserving algorithms for one of the important graph analysis techniques-graph spectral analysis for outsourced graph in the cloud. The core operation: eigendecomposition of large matrix is also impor...
Abstract—Conventional private data publication schemes are targeted at publication of sensitive data...
Confidential algorithm for the approximate graph vertex covering problem is presented in this articl...
Computing the determinant of large matrix is a time-consuming task, which is appearing more and more...
Big graphs, such as user interactions in social networks and customer rating matrices in collaborati...
Large graph datasets have become invaluable assets for studying problems in business applications an...
© 2019 Leyla RoohiThere are many examples of graph-structured data, like records of friendships in s...
Many graph mining and analysis services have been de-ployed on the cloud, which can alleviate users ...
Confidential algorithm for the approximate graph vertex covering problem is presented in this articl...
The growing popularity of storing large data graphs in cloud has inspired the emergence of subgraph ...
Abstract — In the emerging cloud computing paradigm, data owners become increasingly motivated to ou...
The wide presence of large graph data and the increasing popularity of storing data in the cloud dri...
Click on the DOI link to access the article (may not be free).Today's society is collecting a massiv...
Abstract. In this paper, we focus on differential privacy preserving spectral graph analysis. Spectr...
The protection and processing of sensitive data in big data systems are common problems as the incre...
Graph pattern matching (GPM) is an important operation on graph computation. Most existing work assu...
Abstract—Conventional private data publication schemes are targeted at publication of sensitive data...
Confidential algorithm for the approximate graph vertex covering problem is presented in this articl...
Computing the determinant of large matrix is a time-consuming task, which is appearing more and more...
Big graphs, such as user interactions in social networks and customer rating matrices in collaborati...
Large graph datasets have become invaluable assets for studying problems in business applications an...
© 2019 Leyla RoohiThere are many examples of graph-structured data, like records of friendships in s...
Many graph mining and analysis services have been de-ployed on the cloud, which can alleviate users ...
Confidential algorithm for the approximate graph vertex covering problem is presented in this articl...
The growing popularity of storing large data graphs in cloud has inspired the emergence of subgraph ...
Abstract — In the emerging cloud computing paradigm, data owners become increasingly motivated to ou...
The wide presence of large graph data and the increasing popularity of storing data in the cloud dri...
Click on the DOI link to access the article (may not be free).Today's society is collecting a massiv...
Abstract. In this paper, we focus on differential privacy preserving spectral graph analysis. Spectr...
The protection and processing of sensitive data in big data systems are common problems as the incre...
Graph pattern matching (GPM) is an important operation on graph computation. Most existing work assu...
Abstract—Conventional private data publication schemes are targeted at publication of sensitive data...
Confidential algorithm for the approximate graph vertex covering problem is presented in this articl...
Computing the determinant of large matrix is a time-consuming task, which is appearing more and more...