[2509.19084] Bridging Computational Social Science and Deep Learning: Cultural Dissemination-Inspired Graph Neural Networks
About this article
Abstract page for arXiv paper 2509.19084: Bridging Computational Social Science and Deep Learning: Cultural Dissemination-Inspired Graph Neural Networks
Computer Science > Machine Learning arXiv:2509.19084 (cs) [Submitted on 23 Sep 2025 (v1), last revised 4 Mar 2026 (this version, v2)] Title:Bridging Computational Social Science and Deep Learning: Cultural Dissemination-Inspired Graph Neural Networks Authors:Asela Hevapathige View a PDF of the paper titled Bridging Computational Social Science and Deep Learning: Cultural Dissemination-Inspired Graph Neural Networks, by Asela Hevapathige View PDF HTML (experimental) Abstract:Graph Neural Networks (GNNs) have become vital in applications like document classification in citation networks, epidemic forecasting, viral marketing, user recommendation in social networks, and network monitoring. However, their deployment faces three key challenges: feature oversmoothing in deep architectures, poor handling of heterogeneous relationships, and monolithic feature aggregation. To address these, we introduce AxelGNN, a novel architecture based on Axelrod's cultural dissemination model that incorporates three key innovations: (1) similarity-gated interactions that adaptively promote convergence or divergence based on feature similarity, (2) segment-wise feature copying that enables fine-grained aggregation of semantic feature groups rather than monolithic vectors, and (3) global polarization that maintains multiple distinct representation clusters to prevent oversmoothing. This model demonstrates empirically the capability to handle both homophilic and heterophilic graphs within a single...