333 results on '"Nott, David J."'
Search Results
102. Variable Selection and Model Averaging in Semiparametric Overdispersed Generalized Linear Models
103. Adaptive Sampling for Bayesian Variable Selection
104. Bayesian projection approaches to variable selection in generalized linear models
105. The ensemble Kalman filter is an ABC algorithm
106. The predictive Lasso
107. Predictive performance of Dirichlet process shrinkage methods in linear regression
108. A sign based loss approach to model selection in nonparametric regression
109. A general approach to heteroscedastic linear regression
110. A semiautomatic method for history matching using sequential Monte Carlo
111. Genetic dissection of gene regulation in multiple mouse tissues
112. Bayesian Spatial Modelling of Gamma Ray Count Data
113. Hierarchical Bayes variable selection and microarray experiments
114. Efficient sampling schemes for Bayesian MARS models with many predictors
115. Assessment and Adjustment of Approximate Inference Algorithms Using the Law of Total Variance
116. Using Prior Expansions for Prior-Data Conflict Checking
117. Smoothing and Change Point Detection for Gamma Ray Count Data
118. Antigen selection in the IgE response of allergic and nonallergic individuals
119. A Semiautomatic Method for History Matching Using Sequential Monte Carlo
120. Marginally Calibrated Deep Distributional Regression
121. High-Dimensional Copula Variational Approximation Through Transformation
122. Robust Bayesian synthetic likelihood via a semi-parametric approach
123. Ecohydrologic Error Models for Improved Bayesian Inference in Remotely Sensed Catchments
124. Marginally Calibrated Deep Distributional Regression.
125. Accelerating Bayesian Synthetic Likelihood with the Graphical Lasso
126. Multi-phase image modelling with excursion sets
127. Gaussian Variational Approximation With a Factor Covariance Structure
128. Approximation of Bayesian Predictive p-Values with Regression ABC
129. Variational Bayes with synthetic likelihood
130. Gaussian variational approximation with sparse precision matrices
131. A variational Bayes approach to a semiparametric regression using Gaussian process priors
132. A simple approach to constructing quasi-Sudoku-based sliced space-filling designs
133. Variational Bayes with synthetic likelihood.
134. Functional models for longitudinal data with covariate dependent smoothness
135. Variational inference for sparse spectrum Gaussian process regression
136. Importance sampling as a variational approximation
137. A Stochastic Variational Framework for Fitting and Diagnosing Generalized Linear Mixed Models
138. A note on approximating ABC-MCMC using flexible classifiers
139. On a generalization of the Laplace approximation
140. A stepwise likelihood ratio test procedure for rare variant selection in case–control studies
141. Approximate Bayesian computation via regression density estimation
142. Generalized likelihood uncertainty estimation (GLUE) and approximate Bayesian computation: What's the connection?
143. Simultaneous variable selection and component selection for regression density estimation with mixtures of heteroscedastic experts
144. The ensemble Kalman filter is an ABC algorithm
145. The predictive Lasso
146. REVIEW OF RECENT RESULTS ON EXCURSION SET MODELS
147. Variational approximation for heteroscedastic linear models and matching pursuit algorithms
148. Analysis of Clustered Binary Data With Unequal Cluster Sizes: A Semiparametric Bayesian Approach
149. A sign based loss approach to model selection in nonparametric regression
150. Confidence interval for the bootstrapP-value and sample size calculation of the bootstrap test
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