A Regression Framework for Studying Relationships among Attributes under Network Interference
收藏Taylor & Francis Group2025-10-01 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/A_Regression_Framework_for_Studying_Relationships_among_Attributes_under_Network_Interference/30257141/1
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资源简介:
To understand how the interconnected and interdependent world of the twenty-first century operates and make model-based predictions, joint probability models for networks and interdependent outcomes are needed. We propose a comprehensive regression framework for networks and interdependent outcomes with multiple advantages, including interpretability, scalability, and provable theoretical guarantees. The regression framework can be used for studying relationships among attributes of connected units and captures complex dependencies among connections and attributes, while retaining the virtues of linear regression, logistic regression, and other regression models by being interpretable and widely applicable. On the computational side, we show that the regression framework is amenable to scalable statistical computing based on convex optimization of pseudo-likelihoods using minorization-maximization methods. On the theoretical side, we establish convergence rates for pseudo-likelihood estimators based on a single observation of dependent connections and attributes. We demonstrate the regression framework using simulations and an application to hate speech on the social media platform X.
提供机构:
Hunter, David R.; Fritz, Cornelius; Schweinberger, Michael; Bhadra, Subhankar
创建时间:
2025-10-01



