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- Identifying a Timedependent Covariate Effect in the Additive Risk Model
- PERFECT SAMPLING FOR POINT PROCESS CLUSTER MODELLING
- Omnibus Tests for Comparison of Competing Risks with Adjustment for Covariate Effects
- Information bounds for Gibbs samplers Priscilla E. Greenwood \Lambda
- Markov chain Monte Carlo and Rao--Blackwellization
- The Annals of Statistics 2009, Vol. 37, No. 3, 10791111
- A statistical model for signature verification Ian W. McKeague
- Median regression and the missing information principle Ian W. McKeague
- Scandinavian Journal of Statistics, Vol. 36: 839853, 2009 doi: 10.1111/j.1467-9469.2009.00649.x
- Gyres and Jets: Inversion of Tracer Data for Ocean Circulation Structure RADU HERBEI
- Statistics & Probability Letters 76 (2006) 327339 Width-scaled confidence bands for survival functions
- Journal of Multivariate Analysis 92 (2005) 186204 Covariate selection for semiparametric hazard
- Statistica Sinica 14(2004), 1147-1164 BAYESIAN ESTIMATION IN SINGLE-INDEX MODELS
- Workshop on Empirical Likelihood Methods in Survival Analysis
- The Annals of Statistics 2009, Vol. 37, No. 1, 394426
- Logistic Regression With Brownian-Like Predictors Martin A. LINDQUIST and Ian W. MCKEAGUE
- Seasonal Space\GammaTime Models for Climate Systems XuFeng Niu 1 Ian W. McKeague 1 James B. Elsner 2
- Productlimit estimators and Cox regression with missing causeoffailure information
- Bayesian Estimators for Conditional Hazard Functions Ian W. McKeague
- Confidence Sets for Split Points in Decision Trees Moulinath Banerjee
- Efficient Estimation from RightCensored Data when Failure Indicators are Missing at Random
- Comparison of treatments via empirical likelihood
- Perfect sampling for posterior landmark distributions with an application to the detection of disease clusters
- Von Mises type statistics for single site updated local interaction random fields
- Statistical inversion of South Atlantic circulation in an abyssal neutral density layer
- Recovering gradients from sparsely observed functional data