While a multitude of expressions has been proposed for calculating sample-specific standard errors of prediction when using partial least squares (PLS) regression for the calibration of first-order data, potential generalisations to multiway data are lacking to date. We have examined the adequacy of two approximate expressions when using unfold- or tri-PLS for the calibration of second-order data. The first expression is derived under the assumption that the errors in the predictor variables are homoscedastic, i.e., of constant variance. In contrast, the second expression is designed to also work in the heteroscedastic case. The adequacy of the approximations is tested using extensive Monte Carlo simulations while the practical utility is d...
David Knoke for providing useful comments on an earlier draft of this paper. I am solely responsible...
Using a metabolomics data set with 1057 serum samples, we designed and assessed different procedures...
Partial least squares (PLS) regression has been a very popular method for prediction. The method can...
While a multitude of expressions has been proposed for calculating sample-specific standard errors o...
Partial least squares (PLS) regression is commonly used for multivariate calibration of instruments....
Recently, Bro published a paper on multilinear PLS (J. Chemometrics, 10, 47–61 (1996)) in which he p...
A new method to estimate case specific prediction uncertainty for univariate trilinear partial least...
The prediction uncertainty is studied when using a multivariate partial least squares regression (PL...
A simple approach is described to calculate sample-specific standard errors for the concentrations p...
Prediction performance does not always reflect the estimation behaviour of a method. High error in e...
he standard deviation of prediction errors (SDEP) is used to evaluate and compare the predictive abi...
<p>Calibrations were evaluated as follows (Saeys et al (2005): excellent (R<sup>2</sup>/r<sup>2</sup...
In a recent The American Statistician article, Long and Ervin (2000) provide a convincing case for t...
This paper resumes the discussion in information systems research on the use of partial least square...
This paper resumes the discussion in information systems research on the use of partial least square...
David Knoke for providing useful comments on an earlier draft of this paper. I am solely responsible...
Using a metabolomics data set with 1057 serum samples, we designed and assessed different procedures...
Partial least squares (PLS) regression has been a very popular method for prediction. The method can...
While a multitude of expressions has been proposed for calculating sample-specific standard errors o...
Partial least squares (PLS) regression is commonly used for multivariate calibration of instruments....
Recently, Bro published a paper on multilinear PLS (J. Chemometrics, 10, 47–61 (1996)) in which he p...
A new method to estimate case specific prediction uncertainty for univariate trilinear partial least...
The prediction uncertainty is studied when using a multivariate partial least squares regression (PL...
A simple approach is described to calculate sample-specific standard errors for the concentrations p...
Prediction performance does not always reflect the estimation behaviour of a method. High error in e...
he standard deviation of prediction errors (SDEP) is used to evaluate and compare the predictive abi...
<p>Calibrations were evaluated as follows (Saeys et al (2005): excellent (R<sup>2</sup>/r<sup>2</sup...
In a recent The American Statistician article, Long and Ervin (2000) provide a convincing case for t...
This paper resumes the discussion in information systems research on the use of partial least square...
This paper resumes the discussion in information systems research on the use of partial least square...
David Knoke for providing useful comments on an earlier draft of this paper. I am solely responsible...
Using a metabolomics data set with 1057 serum samples, we designed and assessed different procedures...
Partial least squares (PLS) regression has been a very popular method for prediction. The method can...