Difference between revisions of "Lasso Regression"
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** [[Ridge Regression]] | ** [[Ridge Regression]] | ||
*** [http://towardsdatascience.com/ridge-and-lasso-regression-a-complete-guide-with-python-scikit-learn-e20e34bcbf0b Ridge and Lasso Regression: A Complete Guide with Python Scikit-Learn | Saptashwa - Towards Data Science] | *** [http://towardsdatascience.com/ridge-and-lasso-regression-a-complete-guide-with-python-scikit-learn-e20e34bcbf0b Ridge and Lasso Regression: A Complete Guide with Python Scikit-Learn | Saptashwa - Towards Data Science] | ||
** [[Elastic Net Regression]] | ** [[Elastic Net Regression]] | ||
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* [[Statistics for Intelligence]] | * [[Statistics for Intelligence]] | ||
* [[Overfitting Challenge]] | * [[Overfitting Challenge]] | ||
Revision as of 01:22, 13 July 2019
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a type of linear regression that uses shrinkage. Shrinkage is where data values are shrunk towards a central point, like the mean. The lasso procedure encourages simple, sparse models (i.e. models with fewer parameters) Lasso Regression: Simple Definition | Statistics How To