Conference Proceedings
Link prediction by de-anonymization: How We Won the Kaggle Social Network Challenge
A Narayanan, E Shi, BIP Rubinstein
Proceedings of the International Joint Conference on Neural Networks | Published : 2011
Abstract
This paper describes the winning entry to the IJCNN 2011 Social Network Challenge run by Kaggle.com. The goal of the contest was to promote research on real-world link prediction, and the dataset was a graph obtained by crawling the popular Flickr social photo sharing website, with user identities scrubbed. By de-anonymizing much of the competition test set using our own Flickr crawl, we were able to effectively game the competition. Our attack represents a new application of de-anonymization to gaming machine learning contests, suggesting changes in how future competitions should be run. We introduce a new simulated annealing-based weighted graph matching algorithm for the seeding step of d..
View full abstract