Ridge regularization adds a ________ penalty to the loss function, which helps to constrain the coefficients.
- L1
- L1 and L2
- L2
- nan
Ridge regularization adds an L2 penalty to the loss function, which helps to reduce the coefficients' magnitude without setting them to zero.
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