Objective Bayesian Edge Screening and Structure Selection for Ising Networks

被引:0
作者
M. Marsman
K. Huth
L. J. Waldorp
I. Ntzoufras
机构
[1] University of Amsterdam,
[2] Psychological Methods,undefined
[3] Centre for Urban Mental Health,undefined
[4] Athens University of Economics and Business,undefined
来源
Psychometrika | 2022年 / 87卷
关键词
Bayesian model selection; ising model; spike and slab prior; depression; alcohol use disorder;
D O I
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中图分类号
学科分类号
摘要
The Ising model is one of the most widely analyzed graphical models in network psychometrics. However, popular approaches to parameter estimation and structure selection for the Ising model cannot naturally express uncertainty about the estimated parameters or selected structures. To address this issue, this paper offers an objective Bayesian approach to parameter estimation and structure selection for the Ising model. Our methods build on a continuous spike-and-slab approach. We show that our methods consistently select the correct structure and provide a new objective method to set the spike-and-slab hyperparameters. To circumvent the exploration of the complete structure space, which is too large in practical situations, we propose a novel approach that first screens for promising edges and then only explore the space instantiated by these edges. We apply our proposed methods to estimate the network of depression and alcohol use disorder symptoms from symptom scores of over 26,000 subjects.
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页码:47 / 82
页数:35
相关论文
共 138 条
  • [1] Barber RF(2015)High dimensional Ising model selection with Bayesian information criteria Electronic Journal of Statistics 9 567-607
  • [2] Drton M(2004)Optimal predictive model selection Annals of Statistics 32 870-897
  • [3] Barbieri MM(1975)Statistical analysis of non-lattice data Journal of the Royal Statistical Society. Series D (The Statistician) 24 179-195
  • [4] Berger JO(2013)Network analysis: An integrative approach to the structure of psychopathology Annual Review of Clinical Psychology 9 91-121
  • [5] Besag J(2014)High-dimensional statistics with a view toward applications in biology Annual Reviews of Statistics and Its Applications 1 255-278
  • [6] Borsboom D(2009)Objective Bayesian model selection in Gaussian graphical models Biometrika 96 497-512
  • [7] Cramer AOJ(2018)Prior distributions for objective Bayesian analysis Bayesian Analysis 13 627-679
  • [8] Bühlmann P(2019)Stability and variability of personality networks: A tutorial on recent developments in network psychometrics Personality and Individual Differences 136 68-78
  • [9] Kalisch M(1972)The analysis of multivariate binary data Journal of the Royal Statistical Society. Series B (Applied Statistics) 21 113-120
  • [10] Meier L(2016)Major depression as a complex dynamic system PLoS One 11 1-20