A BAYESIAN TIME-VARYING EFFECT MODEL FOR BEHAVIORAL MHEALTH DATA.
暂无分享,去创建一个
Matthew D. Koslovsky | Marina Vannucci | Emily T. Hebert | Michael S. Businelle | M. Vannucci | M. Businelle | M. Koslovsky | Emily T. Hébert
[1] Minxing Chen,et al. Predicting quit attempts among homeless smokers seeking cessation treatment: an ecological momentary assessment study. , 2014, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[2] Daniel L. Oberski,et al. Shrinkage priors for Bayesian penalized regression , 2018 .
[3] Deepayan Sarkar,et al. Detecting differential gene expression with a semiparametric hierarchical mixture method. , 2004, Biostatistics.
[4] James G. Scott,et al. Handling Sparsity via the Horseshoe , 2009, AISTATS.
[5] Nicholas G. Polson,et al. Lasso Meets Horseshoe: A Survey , 2017, Statistical Science.
[6] S Shiffman,et al. Dynamic effects of self-efficacy on smoking lapse and relapse. , 2000, Health psychology : official journal of the Division of Health Psychology, American Psychological Association.
[7] Zoubin Ghahramani,et al. Bayesian Cluster Analysis: Point Estimation and Credible Balls (with Discussion) , 2015, Bayesian Analysis.
[8] Matthew D. Koslovsky,et al. Bayesian variable selection for multistate Markov models with interval‐censored data in an ecological momentary assessment study of smoking cessation , 2018, Biometrics.
[9] Francis Tuerlinckx,et al. Diagnostic checks for discrete data regression models using posterior predictive simulations , 2000 .
[10] Stanley R. Johnson,et al. Varying Coefficient Models , 1984 .
[11] Marina Vannucci,et al. Spiked Dirichlet Process Prior for Bayesian Multiple Hypothesis Testing in Random Effects Models. , 2009, Bayesian analysis.
[12] J. Berger,et al. Optimal predictive model selection , 2004, math/0406464.
[13] M. Escobar,et al. Markov Chain Sampling Methods for Dirichlet Process Mixture Models , 2000 .
[14] D. Rubin,et al. Inference from Iterative Simulation Using Multiple Sequences , 1992 .
[15] D. Dunson,et al. Random Effects Selection in Linear Mixed Models , 2003, Biometrics.
[16] Aki Vehtari,et al. Practical Bayesian model evaluation using leave-one-out cross-validation and WAIC , 2015, Statistics and Computing.
[17] P. Müller,et al. Semiparametric Bayesian Inference for Multilevel Repeated Measurement Data , 2007, Biometrics.
[18] G. Chapman,et al. Relations among affect, abstinence motivation and confidence, and daily smoking lapse risk. , 2014, Psychology of addictive behaviors : journal of the Society of Psychologists in Addictive Behaviors.
[19] P. X. Song,et al. Varying Index Coefficient Models , 2015 .
[20] W. Nilsen,et al. Health behavior models in the age of mobile interventions: are our theories up to the task? , 2011, Translational behavioral medicine.
[21] L. Fahrmeir,et al. Spike-and-Slab Priors for Function Selection in Structured Additive Regression Models , 2011, 1105.5250.
[22] Ricardo Carretero-González,et al. A Markov approach for increasing precision in the assessment of data-intensive behavioral interventions , 2018, J. Biomed. Informatics.
[23] Saul Shiffman,et al. Immediate antecedents of cigarette smoking: an analysis from ecological momentary assessment. , 2002, Journal of abnormal psychology.
[24] Marina Vannucci,et al. Bioinformatics Original Paper Bayesian Variable Selection for the Analysis of Microarray Data with Censored Outcomes , 2022 .
[25] Katie Witkiewitz,et al. Repeated measures latent class analysis of daily smoking in three smoking cessation studies. , 2016, Drug and alcohol dependence.
[26] E. George,et al. Journal of the American Statistical Association is currently published by American Statistical Association. , 2007 .
[27] M. Escobar,et al. Bayesian Density Estimation and Inference Using Mixtures , 1995 .
[28] Ambuj Tewari,et al. Just-in-Time Adaptive Interventions (JITAIs) in Mobile Health: Key Components and Design Principles for Ongoing Health Behavior Support , 2017, Annals of behavioral medicine : a publication of the Society of Behavioral Medicine.
[29] Peter Verboon,et al. Predicting Smoking Lapses in the First Week of Quitting: An Ecological Momentary Assessment Study , 2017, Journal of addiction medicine.
[30] Samuel Mueller,et al. Hierarchical selection of fixed and random effects in generalized linear mixed models , 2017 .
[31] Alan E. Gelfand,et al. Model Determination using sampling-based methods , 1996 .
[32] Darla E Kendzor,et al. An Ecological Momentary Intervention for Smoking Cessation: Evaluation of Feasibility and Effectiveness , 2016, Journal of medical Internet research.
[33] Hugh Chipman,et al. Bayesian variable selection with related predictors , 1995, bayes-an/9510001.
[34] Timothy B Baker,et al. Have we lost our way? The need for dynamic formulations of smoking relapse proneness. , 2002, Addiction.
[35] Marina Vannucci,et al. Variable Selection for Nonparametric Gaussian Process Priors: Models and Computational Strategies. , 2011, Statistical science : a review journal of the Institute of Mathematical Statistics.
[36] Michael R. Kosorok,et al. Estimating Dynamic Treatment Regimes in Mobile Health Using V-Learning , 2016, Journal of the American Statistical Association.
[37] Runze Li,et al. Advancing the understanding of craving during smoking cessation attempts: a demonstration of the time-varying effect model. , 2013, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[38] C. Mascolo,et al. A Context-Sensing Mobile Phone App (Q Sense) for Smoking Cessation: A Mixed-Methods Study , 2016, JMIR mHealth and uHealth.
[39] Sylvia Richardson,et al. Markov Chain Monte Carlo in Practice , 1997 .
[40] Donald Hedeker,et al. Smoking antecedents: separating between- and within-person effects of tobacco dependence in a multiwave ecological momentary assessment investigation of adolescent smoking. , 2014, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[41] Runze Li,et al. Using the Time-Varying Effect Model (TVEM) to Examine Dynamic Associations between Negative Affect and Self Confidence on Smoking Urges: Differences between Successful Quitters and Relapsers , 2012, Prevention Science.
[42] Timothy B Baker,et al. Smoking withdrawal dynamics: II. Improved tests of withdrawal-relapse relations. , 2003, Journal of abnormal psychology.
[43] Runze Li,et al. TIME-VARYING COEFFICIENT MODELS FOR JOINT MODELING BINARY AND CONTINUOUS OUTCOMES IN LONGITUDINAL DATA. , 2016, Statistica Sinica.
[44] James G. Scott,et al. Bayesian Inference for Logistic Models Using Pólya–Gamma Latent Variables , 2012, 1205.0310.
[45] T. Fearn,et al. Multivariate Bayesian variable selection and prediction , 1998 .
[46] S. Lang,et al. Bayesian P-Splines , 2004 .
[47] Runze Li,et al. Nicotine-dependence-varying effects of smoking events on momentary mood changes among adolescents. , 2015, Addictive behaviors.
[48] Jacob Bishop,et al. Analyzing latent state-trait and multiple-indicator latent growth curve models as multilevel structural equation models , 2013, Front. Psychol..
[49] Satkartar K. Kinney,et al. Fixed and Random Effects Selection in Linear and Logistic Models , 2007, Biometrics.
[50] Michael I. Jordan,et al. Dimensionality Reduction for Supervised Learning with Reproducing Kernel Hilbert Spaces , 2004, J. Mach. Learn. Res..
[51] Dipankar Bandyopadhyay,et al. Bayesian semiparametric variable selection with applications to periodontal data , 2017, Statistics in medicine.
[52] Marina Meila,et al. Comparing Clusterings by the Variation of Information , 2003, COLT.
[53] J. S. Rao,et al. Spike and slab variable selection: Frequentist and Bayesian strategies , 2005, math/0505633.
[54] Peter Müller,et al. CENTER-ADJUSTED INFERENCE FOR A NONPARAMETRIC BAYESIAN RANDOM EFFECT DISTRIBUTION. , 2011, Statistica Sinica.
[55] A. Lijoi,et al. On the Pitman–Yor process with spike and slab base measure , 2017 .
[56] S. Shiffman,et al. First lapses to smoking: within-subjects analysis of real-time reports. , 1996, Journal of consulting and clinical psychology.
[57] James G. Scott,et al. Shrink Globally, Act Locally: Sparse Bayesian Regularization and Prediction , 2022 .
[58] Matthew D Koslovsky,et al. The Time-Varying Relations Between Risk Factors and Smoking Before and After a Quit Attempt , 2018, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[59] Runze Li,et al. Time-varying processes involved in smoking lapse in a randomized trial of smoking cessation therapies. , 2014, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[60] D. Hall. Models for Intensive Longitudinal Data , 2007 .
[61] Marina Vannucci,et al. Spiked Dirichlet Process Priors for Gaussian Process Models. , 2010, Journal of probability and statistics.
[62] Ambuj Tewari,et al. Microrandomized trials: An experimental design for developing just-in-time adaptive interventions. , 2015, Health psychology : official journal of the Division of Health Psychology, American Psychological Association.
[63] Jeremy Mennis,et al. Time-varying effects of a text-based smoking cessation intervention for urban adolescents. , 2015, Drug and alcohol dependence.
[64] Runze Li,et al. Modeling complexity of EMA data: time-varying lagged effects of negative affect on smoking urges for subgroups of nicotine addiction. , 2014, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[65] S. Shiffman. Conceptualizing analyses of ecological momentary assessment data. , 2014, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[66] Runze Li,et al. Functional data analysis for dynamical system identification of behavioral processes. , 2014, Psychological methods.
[67] S de Haan-Rietdijk,et al. On the Use of Mixed Markov Models for Intensive Longitudinal Data , 2017, Multivariate behavioral research.
[68] Runze Li,et al. A time-varying effect model for intensive longitudinal data. , 2012, Psychological methods.
[69] J. Smyth,et al. Ecological momentary interventions: incorporating mobile technology into psychosocial and health behaviour treatments. , 2010, British journal of health psychology.
[70] D. Rivera,et al. Using engineering control principles to inform the design of adaptive interventions: a conceptual introduction. , 2007, Drug and alcohol dependence.
[71] S. Müller,et al. Model Selection in Linear Mixed Models , 2013, 1306.2427.
[72] Megan E. Piper,et al. A dynamical systems approach to understanding self-regulation in smoking cessation behavior change. , 2013, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[73] Stephen J Finch,et al. Developmental trajectories of cigarette smoking from adolescence to the early thirties: personality and behavioral risk factors. , 2008, Nicotine & tobacco research : official journal of the Society for Research on Nicotine and Tobacco.
[74] Jing Cheng,et al. Real longitudinal data analysis for real people: Building a good enough mixed model , 2010, Statistics in medicine.
[75] Radford M. Neal. Markov Chain Sampling Methods for Dirichlet Process Mixture Models , 2000 .
[76] Runze Li,et al. Modeling intensive longitudinal data with mixtures of nonparametric trajectories and time-varying effects. , 2015, Psychological methods.
[77] Melissa L Anderson,et al. Evaluating an Adaptive and Interactive mHealth Smoking Cessation and Medication Adherence Program: A Randomized Pilot Feasibility Study , 2016, JMIR mHealth and uHealth.
[78] Donald Hedeker,et al. Latent trait shared‐parameter mixed models for missing ecological momentary assessment data , 2018, Statistics in medicine.
[79] F. Scheipl. spikeSlabGAM: Bayesian Variable Selection, Model Choice and Regularization for Generalized Additive Mixed Models in R , 2011, 1105.5253.
[80] Mingan Yang,et al. Bayesian variable selection for logistic mixed model with nonparametric random effects , 2012, Comput. Stat. Data Anal..
[81] D. Dunson,et al. Bayesian Selection and Clustering of Polymorphisms in Functionally Related Genes , 2008 .
[82] E. George,et al. APPROACHES FOR BAYESIAN VARIABLE SELECTION , 1997 .
[83] Gary K Grunwald,et al. Continuous Time Markov Models for Binary Longitudinal Data , 2006, Biometrical journal. Biometrische Zeitschrift.