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Extension to mixed models of the Supervised Component-based Generalised Linear Regression

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Academic year: 2021

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Figure

Figure 1: Polar representation of φ l (u) according to the value of l, in the elementary case of four coplanar variables.
Table 1: Optimal regularisation parameter values obtained by cross-validation over 500 simulations
Figure 2: Correlation scatterplots given by Mixed-SCGLR method on the simulated data.
Figure 3: AveNRMSE’s as a function of the number of components, obtained by a cross- cross-validation procedure
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