regularization involves introducing additional information in order to solve an ill-posed problem or to prevent overfitting

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Good MSE doesnt imply good prediction in logistic regression?

I am writing some code for regularized logistic regression. I observe this interesting phenomena and wonder if it is a normal thing or just my code is wrong. For loss function, I am using the ...
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149 views

R - how to estimate prediction error using k-fold cross validation for ridge regression

How would I go about using cross-validation to measure the prediction error on a ridge regression model I have created. Example using iris dataset X_inputs <- ...
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91 views

glmnet: variable standarization in regularized logistic regression

I have a question concerning regularized logistic regression. According to the description of the glmnet algorithm (http://www.jstatsoft.org/v33/i01/paper), in each loop of Newton- Raphson procedure ...
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73 views

Weird phenomenon with SVM: negative examples score higher

I use the VL-Feat and LIBLINEAR to handle the 2-category classification. The #(-)/#(+) for the training set is 35.01 and the dimension of each feature vector is 3.6e5. I have around 15000 examples. ...
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83 views

Choosing the regularization parameter

When applying regularized logistic regression: I split my data into training, cross-validation and test sets. I want to apply regularization and am working on choosing the regularization parameter ...
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3answers
752 views

Improving a badly conditioned matrix

I have a badly conditioned matrix, whose rcond() is close to zero, and therefore, the inverse of that matrix does not come out to be correct. I have tried using pinv() but that does not solve the ...
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51 views

regularization path for SVM in python

I have looked around to find a R's svmpath equivalent for sklearn or python. Did I overlook it or do I need to go with R for this task. Thanks
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90 views

How to set intercept_scaling in scikit-learn LogisticRegression

I am using scikit-learn's LogisticRegression object for regularized binary classification. I've read the documentation on intercept_scaling but I don't understand how to choose this value ...
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199 views

what should be the parametric form of the l2 regularization in a Bayesian setting? [closed]

In a Bayesian setting for parameter estimation, what should be the parametric form of the prior distribution in order to perform l2 regularization?
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261 views

optimization and regularization

I am trying to use total variation minimization for an image reconstruction problem. Essentially, I am trying to penalize different in the intensity of the two pixels in the reconstructed image. For ...
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284 views

SVD matrix conditioning - how to project from original space to conditioned space?

A classic method of denoising data is to create a matrix, perform SVD, set small singular values to zero, then multiply the decomposed matrix parts to create a new matrix. This is one way of ...
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1k views

R glmnet family = binomial predict values outside of 0-1

I'm trying to find a package in R for regularized logistic regression that predicts values between 0 - 1. I haven't had much luck though, having tried the lars package and now the glmnet package. ...