- Machine Learning Quick Reference
- Rahul Kumar
- 88字
- 2021-08-20 10:05:06
Least absolute shrinkage and selection operator
The least absolute shrinkage and selection operator (LASSO) is also called L1. In this case, the preceding penalty parameter is replaced by |βj|:

By minimizing the preceding function, the coefficients are found and adjusted. In this scenario, as lambda becomes larger, λ → ∞, the penalty component rises, and so estimates start shrinking and become 0 (it doesn't happen in the case of ridge regression; rather, it would just be close to 0).
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