Bayesian mixed-effects inference on classification performance in hierarchical data sets

被引:0
|
作者
机构
[1] [1,2,Brodersen, Kay H.
[2] 1,Mathys, Christoph
[3] Chumbley, Justin R.
[4] 1,Daunizeau, Jean
[5] Ong, Cheng Soon
[6] Buhmann, Joachim M.
[7] 1,Stephan, Klaas E.
来源
Brodersen, K.H. (BRODERSEN@BIOMED.EE.ETHZ.CH) | 1600年 / Microtome Publishing卷 / 13期
关键词
Hierarchical systems - Random processes - Classification (of information) - Bayesian networks - Inference engines;
D O I
暂无
中图分类号
学科分类号
摘要
Classification algorithms are frequently used on data with a natural hierarchical structure. For instance, classifiers are often trained and tested on trial-wise measurements, separately for each subject within a group. One important question is how classification outcomes observed in individual subjects can be generalized to the population from which the group was sampled. To address this question, this paper introduces novel statistical models that are guided by three desiderata. First, all models explicitly respect the hierarchical nature of the data, that is, they are mixed-effects models that simultaneously account for within-subjects (fixed-effects) and across-subjects (random-effects) variance components. Second, maximum-likelihood estimation is replaced by full Bayesian inference in order to enable natural regularization of the estimation problem and to afford conclusions in terms of posterior probability statements. Third, inference on classification accuracy is complemented by inference on the balanced accuracy, which avoids inflated accuracy estimates for imbalanced data sets. We introduce hierarchical models that satisfy these criteria and demonstrate their advantages over conventional methods usingMCMC implementations for model inversion and model selection on both synthetic and empirical data. We envisage that our approach will improve the sensitivity and validity of statistical inference in future hierarchical classification studies. © 2012.
引用
收藏
相关论文
共 50 条
  • [31] Joint inference for nonlinear mixed-effects models and time to event at the presence of missing data
    Wu, Lang
    Hu, X. Joan
    Wu, Hulin
    BIOSTATISTICS, 2008, 9 (02) : 308 - 320
  • [32] Bayesian inference on mixed-effects varying-coefficient joint models with skew-t distribution for longitudinal data with multiple features
    Lu, Tao
    Huang, Yangxin
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2017, 26 (03) : 1146 - 1164
  • [33] Benefits of Bayesian Model Averaging for Mixed-Effects Modeling
    Heck D.W.
    Bockting F.
    Computational Brain & Behavior, 2023, 6 (1) : 35 - 49
  • [34] Bayesian truncated beta nonlinear mixed-effects models
    Mota Paraiba, Carolina Costa
    Bochkina, Natalia
    Ribeiro Diniz, Carlos Alberto
    JOURNAL OF APPLIED STATISTICS, 2018, 45 (02) : 320 - 346
  • [35] Bayesian wavelet shrinkage for nonparametric mixed-effects models
    Huang, SY
    Lu, HHS
    STATISTICA SINICA, 2000, 10 (04) : 1021 - 1040
  • [36] Bayesian Analysis of Semiparametric Mixed-Effects Models for Zero-Inflated Count Data
    Xue-Dong, Chen
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2009, 38 (11) : 1815 - 1833
  • [37] A Bayesian approach to the mixed-effects analysis of accuracy data in repeated-measures designs
    Song, Yin
    Nathoo, Farouk S.
    Masson, Michael E. J.
    JOURNAL OF MEMORY AND LANGUAGE, 2017, 96 : 78 - 92
  • [38] A Bayesian Based Functional Mixed-Effects Model for Analysis of LC-MS Data
    Befekadu, Getachew K.
    Tadesse, Mahlet G.
    Ressom, Habtom W.
    2009 ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOLS 1-20, 2009, : 6743 - +
  • [39] Estimating anatomical trajectories with Bayesian mixed-effects modeling
    Ziegler, G.
    Penny, W. D.
    Ridgway, G. R.
    Ourselin, S.
    Friston, K. J.
    NEUROIMAGE, 2015, 121 : 51 - 68
  • [40] Bayesian Inference of Interaction Effects in Item-Level Hierarchical Twin Data
    Schwabe, Inga
    BAYESIAN STATISTICS AND NEW GENERATIONS, BAYSM 2018, 2019, 296 : 115 - 122