Principal components analysis has been used for decades to summarize genetic variation across geographic regions and to infer population migration history. More recently, with the advent of genome-wide association studies of complex traits, it has become a commonly-used tool for detection and correction of confounding due to population structure. However, principal components are generally sensitive to outliers. Recently there has also been concern about its interpretation. Motivated from geometric learning, we describe a method based on spectral graph theory. Regarding each study subject as a node with suitably defined weights for its edges to close neighbors, one can form a weighted graph. We suggest using the spectrum of the associated g...
International audienceWright’s inbreeding coefficient, F ST , is a fundamental measure in population...
Learning a suitable graph is an important precursor to many graph signal processing (GSP) tasks, suc...
When attempting to develop wavelet transforms for graphs and networks, some researchers have used gr...
Principal-component analysis (PCA) has been used for decades to summarize the human genetic variatio...
Identification of a small panel of population structure informative markers can reduce genotyping co...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Phylogenetic trees are central to many areas of biology, ranging from population genetics and epidem...
AbstractWe present the spectrum of the (normalized) graph Laplacian as a systematic tool for the inv...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Motivation Laplacian matrices capture the global structure of networks and are widely used to stu...
We present a mathematical model, and the corresponding mathematical analysis, that justifies and qua...
Current methods for inferring population structure from genetic data do not provide formal significa...
Principal component analysis is a popular dimension reduction technique often used to visualize high...
<p>Summarized by: (a) the top two Principal Components; (b) the top two Laplacian eigenfunctions usi...
The graph Laplacian, a typical representation of a network, is an important matrix that can tell us ...
International audienceWright’s inbreeding coefficient, F ST , is a fundamental measure in population...
Learning a suitable graph is an important precursor to many graph signal processing (GSP) tasks, suc...
When attempting to develop wavelet transforms for graphs and networks, some researchers have used gr...
Principal-component analysis (PCA) has been used for decades to summarize the human genetic variatio...
Identification of a small panel of population structure informative markers can reduce genotyping co...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Phylogenetic trees are central to many areas of biology, ranging from population genetics and epidem...
AbstractWe present the spectrum of the (normalized) graph Laplacian as a systematic tool for the inv...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Motivation Laplacian matrices capture the global structure of networks and are widely used to stu...
We present a mathematical model, and the corresponding mathematical analysis, that justifies and qua...
Current methods for inferring population structure from genetic data do not provide formal significa...
Principal component analysis is a popular dimension reduction technique often used to visualize high...
<p>Summarized by: (a) the top two Principal Components; (b) the top two Laplacian eigenfunctions usi...
The graph Laplacian, a typical representation of a network, is an important matrix that can tell us ...
International audienceWright’s inbreeding coefficient, F ST , is a fundamental measure in population...
Learning a suitable graph is an important precursor to many graph signal processing (GSP) tasks, suc...
When attempting to develop wavelet transforms for graphs and networks, some researchers have used gr...