Large genomic studies are becoming increasingly common with advances in sequencing technology, and our ability to understand how genomic variation influences phenotypic variation between individuals has never been greater. The exploration of such relationships first requires the identification of associations between molecular markers and phenotypes. Here we explore the use of Random Forest (RF), a powerful machine learning algorithm, in genomic studies to discern loci underlying both discrete and quantitative traits, particularly when studying wild or non-model organisms. RF is becoming increasingly used in ecological and population genetics because, unlike traditional methods, it can efficiently analyze thousands of loci simultaneously an...
International audienceSimulation-based methods such as Approximate Bayesian Computation (ABC) are we...
A central challenge in evolutionary biology is to identify genes underlying ecologically important t...
Abstract Background Clustering plays a crucial role in several application domains, such as bioinfor...
Large genomic studies are becoming increasingly common with advances in sequencing technology, and o...
The Random Forests (RF) algorithm has become a commonly used machine learning algorithm for genetic ...
Random Forest is a prediction technique based on growing trees on bootstrap samples of data, in conj...
peer reviewedWe consider two different representations of the input data for genome-wide association...
Transcriptional regulation refers to the molecular systems that control the concentration of mRNA sp...
In the Life Sciences ‘omics ’ data is increasingly generated by different high-throughput technologi...
Association mapping is a statistical approach combining phenotypic traits and ...
In previous nuclear genomic association studies, Random Forests (RF), one of several up-to-date mach...
AbstractRandom forests (RF) is a popular tree-based ensemble machine learning tool that is highly da...
The study of ecological speciation is inherently linked to the study of selection. Methods for estim...
Identifying gene-gene interactions is essential to understand disease susceptibility and to detect g...
This dissertation consists of the analyses of three separate genetic association datasets. Each repr...
International audienceSimulation-based methods such as Approximate Bayesian Computation (ABC) are we...
A central challenge in evolutionary biology is to identify genes underlying ecologically important t...
Abstract Background Clustering plays a crucial role in several application domains, such as bioinfor...
Large genomic studies are becoming increasingly common with advances in sequencing technology, and o...
The Random Forests (RF) algorithm has become a commonly used machine learning algorithm for genetic ...
Random Forest is a prediction technique based on growing trees on bootstrap samples of data, in conj...
peer reviewedWe consider two different representations of the input data for genome-wide association...
Transcriptional regulation refers to the molecular systems that control the concentration of mRNA sp...
In the Life Sciences ‘omics ’ data is increasingly generated by different high-throughput technologi...
Association mapping is a statistical approach combining phenotypic traits and ...
In previous nuclear genomic association studies, Random Forests (RF), one of several up-to-date mach...
AbstractRandom forests (RF) is a popular tree-based ensemble machine learning tool that is highly da...
The study of ecological speciation is inherently linked to the study of selection. Methods for estim...
Identifying gene-gene interactions is essential to understand disease susceptibility and to detect g...
This dissertation consists of the analyses of three separate genetic association datasets. Each repr...
International audienceSimulation-based methods such as Approximate Bayesian Computation (ABC) are we...
A central challenge in evolutionary biology is to identify genes underlying ecologically important t...
Abstract Background Clustering plays a crucial role in several application domains, such as bioinfor...