Principal Components Analysis (PCA) is a common way to study the sources of variation in a high-dimensional data set. Typically, the leading principal components are used to understand the variation in the data or to reduce the dimension of the data for subsequent analysis. The remaining principal components are ignored since they explain little of the variation in the data. However, evolutionary biologists gain important insights from these low variation directions. Specifically, they are interested in directions of low genetic variability that are biologically interpretable. These directions are calle
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Principal Components Analysis (PCA) is a common way to study the sources of variation in a high-dime...
Principal Components Analysis (PCA) is a common way to study the sources of variation in a high-dime...
Abstract Principal Components Analysis (PCA) is a common way to study the sources of variation in a ...
To characterize natural selection, various analytical methods for detecting candidate genomic region...
To characterize natural selection, various analytical methods for detecting candidate genomic region...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
Many fields, including evolutionary biology, collect data in which a curve corresponds to each indiv...
Many fields, including evolutionary biology, collect data in which a curve corresponds to each indiv...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Principal Components Analysis (PCA) is a common way to study the sources of variation in a high-dime...
Principal Components Analysis (PCA) is a common way to study the sources of variation in a high-dime...
Abstract Principal Components Analysis (PCA) is a common way to study the sources of variation in a ...
To characterize natural selection, various analytical methods for detecting candidate genomic region...
To characterize natural selection, various analytical methods for detecting candidate genomic region...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
International audienceTo characterize natural selection, various analytical methods for detecting ca...
Many fields, including evolutionary biology, collect data in which a curve corresponds to each indiv...
Many fields, including evolutionary biology, collect data in which a curve corresponds to each indiv...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...
Most existing methods for modeling trait evolution are univariate, although researchers are often in...