NetworkReg-package: Generalized Linear Regression Models on Network-Linked Data...

NetworkReg-packageR Documentation

Generalized Linear Regression Models on Network-Linked Data with Statistical Inference

Description

Linear regression model with nonparametric network effects on network-linked observations. The model is proposed by Le and Li (2022) <arXiv:2007.00803> on observations that are connected by a network or similar relational data structure. The model does not assume that the relational data or network structure to be precisely observed; thus, the method is provably robust to a certain level of perturbation of the network structure. The package contains the estimation and inference function for the model.

Details

Package: NetworkReg
Type: Package
Version: 2.0
Date: 2024-10-10
License: GPL (>= 2)

Author(s)

Jianxiang Wang, Can M. Le, and Tianxi Li.
Maintainer: Jianxiang Wang <jw1881@scarletmail.rutgers.edu>

References

Le, C. M., & Li, T. (2022). Linear regression and its inference on noisy network-linked data. Journal of the Royal Statistical Society Series B: Statistical Methodology, 84(5), 1851-1885.

Wang J, Le C M, Li T. Perturbation-Robust Predictive Modeling of Social Effects by Network Subspace Generalized Linear Models. arXiv preprint arXiv:2410.01163, 2024.


NetworkReg documentation built on Nov. 1, 2024, 9:09 a.m.