Privacy-Preserving Graph Machine Learning from Data to Computation: A Survey

07/10/2023
by   Dongqi Fu, et al.
0

In graph machine learning, data collection, sharing, and analysis often involve multiple parties, each of which may require varying levels of data security and privacy. To this end, preserving privacy is of great importance in protecting sensitive information. In the era of big data, the relationships among data entities have become unprecedentedly complex, and more applications utilize advanced data structures (i.e., graphs) that can support network structures and relevant attribute information. To date, many graph-based AI models have been proposed (e.g., graph neural networks) for various domain tasks, like computer vision and natural language processing. In this paper, we focus on reviewing privacy-preserving techniques of graph machine learning. We systematically review related works from the data to the computational aspects. We first review methods for generating privacy-preserving graph data. Then we describe methods for transmitting privacy-preserved information (e.g., graph model parameters) to realize the optimization-based computation when data sharing among multiple parties is risky or impossible. In addition to discussing relevant theoretical methodology and software tools, we also discuss current challenges and highlight several possible future research opportunities for privacy-preserving graph machine learning. Finally, we envision a unified and comprehensive secure graph machine learning system.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/30/2022

Privacy-preserving Graph Analytics: Secure Generation and Federated Learning

Directly motivated by security-related applications from the Homeland Se...
research
11/20/2020

Survey and Open Problems in Privacy Preserving Knowledge Graph: Merging, Query, Representation, Completion and Applications

Knowledge Graph (KG) has attracted more and more companies' attention fo...
research
05/18/2023

Free Lunch for Privacy Preserving Distributed Graph Learning

Learning on graphs is becoming prevalent in a wide range of applications...
research
09/30/2022

SoK: On the Impossible Security of Very Large Foundation Models

Large machine learning models, or so-called foundation models, aim to se...
research
08/27/2020

Every Query Counts: Analyzing the Privacy Loss of Exploratory Data Analyses

An exploratory data analysis is an essential step for every data analyst...
research
07/30/2020

Privacy Enhancing Machine Learning via Removal of Unwanted Dependencies

The rapid rise of IoT and Big Data has facilitated copious data driven a...
research
04/20/2023

Censoring chemical data to mitigate dual use risk

The dual use of machine learning applications, where models can be used ...

Please sign up or login with your details

Forgot password? Click here to reset