In the simultaneous estimation of a large number of related quantities, multilevel models provide a formal mechanism for efficiently making use of the ensemble of information for deriving individual estimates. In this article we investigate the ability of the likelihood to identify the relationship between signal and noise in multilevel linear mixed models. Specifically, we consider the ability of the likelihood to diagnose conjugacy or independence between the signals and noises. Our work was motivated by the analysis of data from high-throughput experiments in genomics. The proposed model leads to a more flexible family. However, we further demonstrate that adequately capitalizing on the benefits of a well fitting fully-specified likeliho...
International audienceWe evaluate the performance of maximum likelihood (ML) analysis of allele freq...
Understanding evolution at the sequence level is one of the major research visions of bioinformatics...
A genome-wide association study (GWAS) aims to determine genetic variants statistically associated w...
In the simultaneous estimation of a large number of related quantities, multilevel models provide a ...
This thesis develops a new exploratory approach suitable for application to large high-dimensional d...
Over the past several decades, dimensionalities of many datasets have grown exponentially as technol...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
Several applications necessitate an unbiased determination of relatedness, be it in linkage or assoc...
Natural variation in biological evidence leads to uncertain genotypes. Forensic comparison of a prob...
Analysis of genomic data requires an efficient way to calculate likelihoods across very large number...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
In this document I present statistical methods for use in analyses of human genetics. The methods pr...
Among the goals of statistical genetics is to find sparse associations of genetic data with binary p...
Full likelihood-based inference for modern population genetics data presents methodological and comp...
International audienceWe evaluate the performance of maximum likelihood (ML) analysis of allele freq...
Understanding evolution at the sequence level is one of the major research visions of bioinformatics...
A genome-wide association study (GWAS) aims to determine genetic variants statistically associated w...
In the simultaneous estimation of a large number of related quantities, multilevel models provide a ...
This thesis develops a new exploratory approach suitable for application to large high-dimensional d...
Over the past several decades, dimensionalities of many datasets have grown exponentially as technol...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
Several applications necessitate an unbiased determination of relatedness, be it in linkage or assoc...
Natural variation in biological evidence leads to uncertain genotypes. Forensic comparison of a prob...
Analysis of genomic data requires an efficient way to calculate likelihoods across very large number...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
In this document I present statistical methods for use in analyses of human genetics. The methods pr...
Among the goals of statistical genetics is to find sparse associations of genetic data with binary p...
Full likelihood-based inference for modern population genetics data presents methodological and comp...
International audienceWe evaluate the performance of maximum likelihood (ML) analysis of allele freq...
Understanding evolution at the sequence level is one of the major research visions of bioinformatics...
A genome-wide association study (GWAS) aims to determine genetic variants statistically associated w...