multicollinearity and high dimensionality problems, making it impossible to obtain stable estimates through the traditional method of estimation based on ordinary least squares. To overcome such challenges, dimensionality reduction methods have been proposed, because of their simple theory and easy application. We compared three dimensionality reduction methods: Principal Components Regression (PCR), Partial Least Squares (PLS), and Independent Components Regression (ICR). An important step for dimensionality reduction and prediction is selecting the number of components, as it affects the linear combinations of the explanatory variables. The linear combinations are inserted into the model to predict the response based on a reduced number o...
[EN] Dimension reduction techniques are used to explore genomic data. Due to the large number of var...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
Partial Least Squares (PLS) is a highly efficient statistical regression technique that is well suit...
The development of genomic selection (GS) methods has allowed plant breeding programs to select favo...
The development of genomic selection (GS) methods has allowed plant breeding programs to select favo...
The development of genomic selection (GS) methods has allowed plant breeding programs to select favo...
The principal component regression (PCR) and the independent component regression (ICR) are dimensio...
A significant contribution of molecular genetics is the direct use of DNA information to...
A significant contribution of molecular genetics is the direct use of DNA information to identify ge...
Many statistical methods are available for genomic selection (GS) through which genetic values of qu...
A principal contribuição da genética molecular no melhoramento animal é a utilização direta das info...
Nowadays it is common to collect large volumes of data in many fields with an extensive amount of va...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
[EN] Dimension reduction techniques are used to explore genomic data. Due to the large number of var...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
Partial Least Squares (PLS) is a highly efficient statistical regression technique that is well suit...
The development of genomic selection (GS) methods has allowed plant breeding programs to select favo...
The development of genomic selection (GS) methods has allowed plant breeding programs to select favo...
The development of genomic selection (GS) methods has allowed plant breeding programs to select favo...
The principal component regression (PCR) and the independent component regression (ICR) are dimensio...
A significant contribution of molecular genetics is the direct use of DNA information to...
A significant contribution of molecular genetics is the direct use of DNA information to identify ge...
Many statistical methods are available for genomic selection (GS) through which genetic values of qu...
A principal contribuição da genética molecular no melhoramento animal é a utilização direta das info...
Nowadays it is common to collect large volumes of data in many fields with an extensive amount of va...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
[EN] Dimension reduction techniques are used to explore genomic data. Due to the large number of var...
PLS dimension reduction is known to give good prediction accuracy in the context of classification w...
Partial Least Squares (PLS) is a highly efficient statistical regression technique that is well suit...