Bayesian data analysis, 3rd edition A Gelman, JB Carlin, HS Stern, DB Dunson, A Vehtari, DB Rubin Chapman & Hall/CRC, 2013 | 39879* | 2013 |
Inference from iterative simulation using multiple sequences A Gelman, DB Rubin Statistical science 7 (4), 457-472, 1992 | 19485 | 1992 |
Data analysis using regression and multilevel/hierarchical models A Gelman Cambridge university press, 2007 | 19334 | 2007 |
Stan: A probabilistic programming language B Carpenter, A Gelman, MD Hoffman, D Lee, B Goodrich, M Betancourt, ... Journal of statistical software 76, 2017 | 8279 | 2017 |
General methods for monitoring convergence of iterative simulations SP Brooks, A Gelman Journal of computational and graphical statistics 7 (4), 434-455, 1998 | 8127 | 1998 |
The No-U-Turn sampler: adaptively setting path lengths in Hamiltonian Monte Carlo. MD Hoffman, A Gelman J. Mach. Learn. Res. 15 (1), 1593-1623, 2014 | 5841 | 2014 |
Prior distributions for variance parameters in hierarchical models (comment on article by Browne and Draper) A Gelman | 5651 | 2006 |
Practical Bayesian model evaluation using leave-one-out cross-validation and WAIC A Vehtari, A Gelman, J Gabry Statistics and computing 27, 1413-1432, 2017 | 5193 | 2017 |
Handbook of markov chain monte carlo S Brooks, A Gelman, G Jones, XL Meng CRC press, 2011 | 3587 | 2011 |
Posterior predictive assessment of model fitness via realized discrepancies A Gelman, XL Meng, H Stern Statistica sinica, 733-760, 1996 | 3098 | 1996 |
Scaling regression inputs by dividing by two standard deviations A Gelman Statistics in medicine 27 (15), 2865-2873, 2008 | 2674 | 2008 |
Weak convergence and optimal scaling of random walk Metropolis algorithms A Gelman, WR Gilks, GO Roberts The annals of applied probability 7 (1), 110-120, 1997 | 2444 | 1997 |
A weakly informative default prior distribution for logistic and other regression models A Gelman, A Jakulin, MG Pittau, YS Su | 2391 | 2008 |
Understanding predictive information criteria for Bayesian models A Gelman, J Hwang, A Vehtari Statistics and computing 24, 997-1016, 2014 | 2374 | 2014 |
Why high-order polynomials should not be used in regression discontinuity designs A Gelman, G Imbens Journal of Business & Economic Statistics 37 (3), 447-456, 2019 | 2191 | 2019 |
R2WinBUGS: a package for running WinBUGS from R S Sturtz, U Ligges, A Gelman Journal of Statistical software 12, 1-16, 2005 | 2085 | 2005 |
Efficient Metropolis jumping rules A Gelman, GO Roberts, WR Gilks Bayesian statistics 5 (599-608), 42, 1996 | 1608 | 1996 |
Why we (usually) don't have to worry about multiple comparisons A Gelman, J Hill, M Yajima Journal of research on educational effectiveness 5 (2), 189-211, 2012 | 1534 | 2012 |
Rank-normalization, folding, and localization: An improved R ̂ for assessing convergence of MCMC (with discussion) A Vehtari, A Gelman, D Simpson, B Carpenter, PC Bürkner Bayesian analysis 16 (2), 667-718, 2021 | 1459 | 2021 |
Beyond power calculations: Assessing type S (sign) and type M (magnitude) errors A Gelman, J Carlin Perspectives on psychological science 9 (6), 641-651, 2014 | 1458 | 2014 |