Bootstrap inference for network vector autoregression in large-scale social network

被引:0
作者
Manho Hong
Eunju Hwang
机构
[1] Gachon University,Department of Applied Statistics
来源
Journal of the Korean Statistical Society | 2021年 / 50卷
关键词
Network vector autoregression; Stationary bootstrap; Residual bootstrap; Prediction intervals; Primary 62M10; Secondary 62F40;
D O I
暂无
中图分类号
学科分类号
摘要
A large amount of online social network data such as Facebook or Twitter are extensively generated by the growth of social network platforms in recent years. Development of a network time series model and its statistical inference are as important as the rapid progress on the social network technology and evolution. In this work we consider a network vector autoregression for the large-scale social network, proposed by Zhu et al. (Ann Stat 45(3):1096–1123, 2017), and study its bootstrap estimation and bootstrap forecast. In order to suggest a bootstrap version of parameter estimates in the underlying model, two bootstrap methods are combined together: stationary bootstrap and classical residual bootstrap. Consistency of the bootstrap estimator is established and the bootstrap confidence intervals are constructed. Moreover, we obtain bootstrap prediction intervals for multi-step ahead future values. A Monte-Carlo study illustrates better finite-sample performances of our bootstrap technique than those by the standard method.
引用
收藏
页码:1238 / 1258
页数:20
相关论文
共 47 条
  • [1] Can U(2019)A new direction in social network analysis: Online social network analysis problems and applications Physica A: Statistical Mechanics and Its Applications 535 122372-267
  • [2] Alatas B(2001)Bootstrapping prediction intervals for autoregressive models International Journal of Forecasting 17 247-898
  • [3] Clements MP(2014)Nonparametric Bayes dynamic modelling of relational data Biometrika 101 883-495
  • [4] Taylor N(2012)Strong consistency of the stationary bootstrap under Statistics and Probability Letters 82 488-96
  • [5] Durante D(2013)-weak dependence Communications for Statistical Applications and Methods 20 85-52
  • [6] Dunson DB(2013)New bootstrap method for autoregressive models Communications for Statistical Applications and Methods 20 41-1087
  • [7] Hwang E(2001)Stationary bootstrap prediction intervals for GARCH( Journal of American Statistical Association 96 1077-2312
  • [8] Shin DW(2006)) Computational Statistics and Data Analysis 50 2293-375
  • [9] Hwang E(2009)Estimation and prediction for stochastic block structures Econometric Reviews 28 372-1313
  • [10] Shin DW(1994)Bootstrap prediction for returns and volatilities in GARCH models Journal of the American Statistical Association 89 1303-70