1
vote
1answer
52 views

How to speed up up Stochastic Gradient Descent?

I'm trying to fit a regression model with an L1 penalty, but I'm having trouble finding an implementation in python that fits in a reasonable amount of time. The data I've got is on the order of 100k ...
0
votes
1answer
72 views

scikit-learn Ridge Regression UnboundLocalError

I'm just a beginner and I'm trying to implement polynomial regression in scikit-learn. The usual regression without regularization works fine regr = linear_model.LinearRegression(copy_X=True) X = ...
0
votes
1answer
37 views

Should elastic net regression be able to regress y=x perfectly?

I have a toy dataset of one independent variable x and one dependent variable y=x. Linear regression can find the right intercept, 0, and coefficient, 1. But the elastic net always gives a non-zero ...
1
vote
2answers
130 views

sklearn linear regression for large data

Does sklearn.LinearRegression support online/incremental learning? I have 100 groups of data, and I am trying to implement them altogether. For each group, there are over 10000 instances and ~ 10 ...
0
votes
1answer
107 views

Python scikit learn Linear Model Parameter Standard Error

I am working with sklearn and specifically the linear_model module. After fitting a simple linear as in import pandas as pd import numpy as np from sklearn import linear_model randn = ...
1
vote
1answer
726 views

OLS Regression: Scikit vs. Statsmodels?

Short version: I was using the scikit LinearRegression on some data, but I'm used to p-values so put the data into the statsmodels OLS, and although the R^2 is about the same the variable coefficients ...
0
votes
1answer
106 views

Linear regression with Lasso penalty needs to increase iterations, Scikit-learn

I am using Linear regression with Lasso implemented in Scikit-learn package. linear_regress = linear_model.Lasso(alpha = 2) linear_regress.fit(X, Y) For X, there is 7827 examples and 758 features. ...
2
votes
1answer
144 views

Linear regression implementation always performs worse than sklearn

I implemented linear regression with gradient descent in python. To see how well it is doing I compared it with scikit-learn's LinearRegression() class. For some reason, sklearn always outperforms my ...
1
vote
1answer
112 views

Which model is suitable for predicting percentages? [closed]

I came across this problem to predict loss on a loan-default, based on various input attributes. You not only have to predict loss/no-loss but also predict what percentage of loan will be lost ...
0
votes
2answers
181 views

Standard errors for multivariate regression coefficients

I've done a multivariate regression using sklearn.linear_model.LinearRegression and obtained the regression coefficients doing this: import numpy as np from sklearn import linear_model ...
8
votes
1answer
520 views

Vector autoregressive model fitting with scikit-learn

I am trying to fit vector autoregressive (VAR) models using the generalized linear model fitting methods included in scikit-learn. The linear model has the form y = X w, but the system matrix X has a ...
2
votes
1answer
323 views

How to do gaussian/polynomial regression with scikit-learn?

Does scikit-learn provide facility to perform regression using a gaussian or polynomial kernel? I looked at the APIs and I don't see any. Has anyone built a package on top of scikit-learn that does ...
1
vote
1answer
285 views

ValueError: negative dimensions are not allowed in scikit linear regression CV model with sparse matrices

I recently competed in a kaggle competition and ran into problems trying to run linear CV models from scikit learn. I am aware of a similar question on stack overflow but I can't see how the accepted ...
1
vote
1answer
79 views

negative value for “mean_squared_error”

I am using scikit and using "mean_squared_error" as a scoring function for model evaluation in cross_val_score. rms_score = cross_validation.cross_val_score(model, X, y, cv=20, ...
0
votes
1answer
2k views

How do I apply scikit-learn's LogisticRegression for some decimal data?

I've the training data set like this: 0.00479616 | 0.0119904 | 0.00483092 | 0.0120773 | 1 0.51213136 | 0.0113404 | 0.02383092 | -0.012073 | 0 0.10479096 | -0.011704 | -0.0453692 | 0.0350773 ...
1
vote
1answer
387 views

What does target mean in Scikit's Linear Regression object?

I am using Scikit to perform ordinary linear regression on some random datapoints. However, I am confused as to what they mean by target values in their documentation of the fit method. I am setting ...
3
votes
1answer
683 views

Normalization in multiple-linear regression

I have a data set for which I would like build a multiple linear regression model. In order to compare different independent variable I normalize them by their standard deviation. I used ...
2
votes
1answer
628 views

Scikit learn linear regression with several outputs

I'm trying to use scikit learn to do linear regression with several outputs code (random data as example): from sklearn import datasets, linear_model import numpy as np X = np.random.rand(300,10) y ...
1
vote
0answers
224 views

What non-negative linear models are supported/planned in scikit-learn?

Scikit-learn offers a large variety of useful linear models. However, I am working on a problem which is linear with non-negativity constraints (i.e. solution variables should be non-negative). I ...
7
votes
4answers
1k views

Why are LASSO in sklearn (python) and matlab statistical package different?

I am using LaasoCV from sklearn to select the best model is selected by cross-validation. I found that the cross validation gives different result if I use sklearn or matlab statistical toolbox. I ...