Learning Networks from Random Walk-Based Node Similarities

01/23/2018
by   Jeremy G. Hoskins, et al.
0

Digital presence in the world of online social media entails significant privacy risks. In this work we consider a privacy threat to a social network in which an attacker has access to a subset of random walk-based node similarities, such as effective resistances (i.e., commute times) or personalized PageRank scores. Using these similarities, the attacker's goal is to infer as much information as possible about the underlying network, including any remaining unknown pairwise node similarities and edges. For the effective resistance metric, we show that with just a small subset of measurements, the attacker can learn a large fraction of edges in a social network, even when the measurements are noisy. We also show that it is possible to learn a graph which accurately matches the underlying network on all other effective resistances. This second observation is interesting from a data mining perspective, since it can be expensive to accurately compute all effective resistances. As an alternative, our graphs learned from just a subset of approximate effective resistances can be used as surrogates in a wide range of applications that use effective resistances to probe graph structure, including for graph clustering, node centrality evaluation, and anomaly detection. We obtain our results by formalizing the graph learning objective mathematically, using two optimization problems. One formulation is convex and can be solved provably in polynomial time. The other is not, but we solve it efficiently with projected gradient and coordinate descent. We demonstrate the effectiveness of these methods on a number of social networks obtained from Facebook. We also discuss how our methods can be generalized to other random walk-based similarities, such as personalized PageRank. Our code is available at https://github.com/cnmusco/graph-similarity-learning.

READ FULL TEXT

page 13

page 17

research
05/12/2022

Sampling Online Social Networks: Metropolis Hastings Random Walk and Random Walk

As social network analysis (SNA) has drawn much attention in recent year...
research
02/25/2021

Approximate Privacy-Preserving Neighbourhood Estimations

Anonymous social networks present a number of new and challenging proble...
research
08/12/2019

RWR-GAE: Random Walk Regularization for Graph Auto Encoders

Node embeddings have become an ubiquitous technique for representing gra...
research
08/08/2018

Random Walk Laplacian and Network Centrality Measures

Random walks over directed graphs are used to model activities in many d...
research
02/01/2017

Product Graph-based Higher Order Contextual Similarities for Inexact Subgraph Matching

Many algorithms formulate graph matching as an optimization of an object...
research
03/19/2018

SybilFuse: Combining Local Attributes with Global Structure to Perform Robust Sybil Detection

Sybil attacks are becoming increasingly widespread and pose a significan...
research
06/09/2021

Multi-layered Network Exploration via Random Walks: From Offline Optimization to Online Learning

Multi-layered network exploration (MuLaNE) problem is an important probl...

Please sign up or login with your details

Forgot password? Click here to reset