Partial least squares (PLS) has become a respected and meaningful soft modeling analysis technique that can be applied to very large datasets where the number of factors or variables is greater than the number of observations. Current biometric studies (e.g., eye movements, EKG, body movements, EEG) are often of this nature. PLS eliminates the multiple linear regression issues of over-fitting data by finding a few underlying or latent variables (factors) that account for most of the variation in the data. In real-world applications, where linear models do not always apply, PLS can model the non-linear relationship well. This tutorial introduces two PLS methods, PL...
The standard analysis approach in neuroimaging genetics studies is the mass-univariate linear modeli...
The standard analysis approach in neuroimaging genetics studies is the mass-univariate linear modeli...
This dissertation applies two statistical analysis techniques for neuroimaging data. The first aim o...
Abstract Partial least squares (PLS) has become a respected and meaningful soft modeling analysis t...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Item does not contain fulltextIt has recently been shown that robust decoding of motor output from e...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
Multivariate analysis methods have been widely applied to decode brain states from functional magnet...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
AbstractPLS initially creates uncorrelated latent variables which are linear combinations of the ori...
Partial Least Squares (PLS) is a wide class of methods for modeling relations between sets of observ...
This thesis focuses on the investigation of partial least squares (PLS) method- ology to deal with h...
In many areas of research and industrial situations, including many data analytic problems in chemis...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
The standard analysis approach in neuroimaging genetics studies is the mass-univariate linear modeli...
The standard analysis approach in neuroimaging genetics studies is the mass-univariate linear modeli...
This dissertation applies two statistical analysis techniques for neuroimaging data. The first aim o...
Abstract Partial least squares (PLS) has become a respected and meaningful soft modeling analysis t...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Item does not contain fulltextIt has recently been shown that robust decoding of motor output from e...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
Multivariate analysis methods have been widely applied to decode brain states from functional magnet...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
AbstractPLS initially creates uncorrelated latent variables which are linear combinations of the ori...
Partial Least Squares (PLS) is a wide class of methods for modeling relations between sets of observ...
This thesis focuses on the investigation of partial least squares (PLS) method- ology to deal with h...
In many areas of research and industrial situations, including many data analytic problems in chemis...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
The standard analysis approach in neuroimaging genetics studies is the mass-univariate linear modeli...
The standard analysis approach in neuroimaging genetics studies is the mass-univariate linear modeli...
This dissertation applies two statistical analysis techniques for neuroimaging data. The first aim o...