Rewiring What-to-Watch-Next Recommendations to Reduce Radicalization Pathways (Extended Abstract)

Rewiring What-to-Watch-Next Recommendations to Reduce Radicalization Pathways (Extended Abstract)

Francesco Fabbri, Yanhao Wang, Francesco Bonchi, Carlos Castillo, Michael Mathioudakis

Proceedings of the Thirty-Second International Joint Conference on Artificial Intelligence
Sister Conferences Best Papers. Pages 6431-6435. https://doi.org/10.24963/ijcai.2023/715

Recommender systems typically suggest to users content similar to what they consumed in the past. A user, if happening to be exposed to strongly polarized content, might be steered towards more and more radicalized content by subsequent recommendations, eventually being trapped in what we call a "radicalization pathway". In this paper, we investigate how to mitigate radicalization pathways using a graph-based approach. We model the set of recommendations in a what-to-watch-next (W2W) recommender as a directed graph, where nodes correspond to content items, links to recommendations, and paths to possible user sessions. We measure the segregation score of a node representing radicalized content as the expected length of a random walk from that node to any node representing non-radicalized content. A high segregation score thus implies a larger chance of getting users trapped in radicalization pathways. We aim to reduce the prevalence of radicalization pathways by selecting a small number of edges to rewire, so as to minimize the maximum of segregation scores among all radicalized nodes while maintaining the relevance of recommendations. We propose an efficient yet effective greedy heuristic based on the absorbing random walk theory for the rewiring problem. Our experiments on real-world datasets confirm the effectiveness of our proposal.
Keywords:
Sister Conferences Best Papers: AI Ethics, Trust, Fairness
Sister Conferences Best Papers: Data Mining
Sister Conferences Best Papers: Humans and AI