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Obtaining predictions as close as possible to $y$ target values requires the calculation of weights from the general
LR equation. The feature matrix does not
have an inverse because it is not square, so it is required to obtain an approximate solution, which can be
obtained using the Gram matrix
(multiplication of feature matrix ($X$) and its transpose ($X^T$)). The vector of weights or coefficients $w$ obtained with this
formula is the closest possible solution to the LR system.