Computation times¶
00:42.889 total execution time for auto_examples_linear_model files:
Comparing various online solvers ( |
00:21.983 |
0.0 MB |
Robust linear estimator fitting ( |
00:04.994 |
0.0 MB |
Lasso on dense and sparse data ( |
00:02.931 |
0.0 MB |
Lasso model selection: Cross-Validation / AIC / BIC ( |
00:01.993 |
0.0 MB |
Theil-Sen Regression ( |
00:01.563 |
0.0 MB |
L1 Penalty and Sparsity in Logistic Regression ( |
00:01.176 |
0.0 MB |
Bayesian Ridge Regression ( |
00:00.819 |
0.0 MB |
Automatic Relevance Determination Regression (ARD) ( |
00:00.819 |
0.0 MB |
Plot Ridge coefficients as a function of the L2 regularization ( |
00:00.606 |
0.0 MB |
Curve Fitting with Bayesian Ridge Regression ( |
00:00.596 |
0.0 MB |
Lasso and Elastic Net ( |
00:00.552 |
0.0 MB |
Plot multinomial and One-vs-Rest Logistic Regression ( |
00:00.455 |
0.0 MB |
Joint feature selection with multi-task Lasso ( |
00:00.450 |
0.0 MB |
Ordinary Least Squares and Ridge Regression Variance ( |
00:00.408 |
0.0 MB |
Orthogonal Matching Pursuit ( |
00:00.386 |
0.0 MB |
SGD: Penalties ( |
00:00.371 |
0.0 MB |
Sparsity Example: Fitting only features 1 and 2 ( |
00:00.341 |
0.0 MB |
Plot Ridge coefficients as a function of the regularization ( |
00:00.287 |
0.0 MB |
Plot multi-class SGD on the iris dataset ( |
00:00.236 |
0.0 MB |
Regularization path of L1- Logistic Regression ( |
00:00.207 |
0.0 MB |
HuberRegressor vs Ridge on dataset with strong outliers ( |
00:00.192 |
0.0 MB |
SGD: convex loss functions ( |
00:00.187 |
0.0 MB |
Robust linear model estimation using RANSAC ( |
00:00.184 |
0.0 MB |
Lasso and Elastic Net for Sparse Signals ( |
00:00.175 |
0.0 MB |
Logistic function ( |
00:00.165 |
0.0 MB |
Polynomial interpolation ( |
00:00.158 |
0.0 MB |
Lasso path using LARS ( |
00:00.151 |
0.0 MB |
SGD: Maximum margin separating hyperplane ( |
00:00.135 |
0.0 MB |
Logistic Regression 3-class Classifier ( |
00:00.129 |
0.0 MB |
SGD: Weighted samples ( |
00:00.118 |
0.0 MB |
Linear Regression Example ( |
00:00.081 |
0.0 MB |
Tweedie regression on insurance claims ( |
00:00.010 |
0.0 MB |
MNIST classification using multinomial logistic + L1 ( |
00:00.009 |
0.0 MB |
Early stopping of Stochastic Gradient Descent ( |
00:00.009 |
0.0 MB |
Multiclass sparse logistic regression on 20newgroups ( |
00:00.007 |
0.0 MB |
Poisson regression and non-normal loss ( |
00:00.006 |
0.0 MB |