Logistic regression is a statistical classification model used for making categorical predictions.

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Are there faster ways to do a stepwise logistic regression? [on hold]

I am finding that trying to do a stepwise logistic regression is far too slow on my data set (6 hours). Is anyone aware of any faster solutions out there? Perhaps one that takes advantage of the ...
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24 views

why doesn't logistic regression use unit-norm constraint [on hold]

Why some linear classifier mode doesn't use the unit norm constraint? For example logistic regression, softmax regression. When the samples is linear separated, The weight will to be ...
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5 views

Logistic Regression Using Mahout

I've just read this interesting article about logistic regression using Mahout. The tutorial is clear to me... but how would a real use case looks like? For instance, when a [web] application first ...
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1answer
38 views

plot multiple ROC curves for logistic regression model in R

I have a logistic regression model (using R) as fit6 <- glm(formula = survived ~ ascore + gini + failed, data=records, family = binomial) summary(fit6) I'm using pROC package to draw ROC curves ...
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64 views

Why are the logistic regression results different between statsmodels and R?

I am trying to compare the logistic regression implementations in python's statsmodels and R. Python version: import statsmodels.api as sm import pandas as pd import pylab as pl import numpy as np ...
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30 views

Loss function for ordinal target on SoftMax over Logistic Regression

I am using Pylearn2 OR Caffe to build a deep network. My target is ordered nominal. I am trying to find a proper loss function but cannot find any in Pylearn2 or Caffe. I read a paper "Loss ...
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43 views

C# Regression Curve Fitting to Forecast Future Growth [closed]

I was given a problem by a local small business owner that I need some help with. He wants me to take his past sales/revenue data and create a model to help forecast future data. I know that I need ...
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42 views

How to predict probability in logistic regression in SAS?

I am very new to SAS and trying to predict probabilities using logistic regression in SAS. I got the code below from SAS Support web site: data vaso; length Response $12; input Volume Rate ...
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32 views

Statsmodels logistic regression convergence problems

I'm trying to run a logistic regression in statsmodels on a large design matrix (~200 columns). The features include a number of interactions, categorical features and semi-sparse (70%) integer ...
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1answer
68 views

Different Robust Standard Errors of Logit Regression in Stata and R

I am trying to replicate a logit regression from Stata to R. In Stata I use the option "robust" to have the robust standard error (heteroscedasticity-consistent standard error). I am able to replicate ...
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2answers
38 views

Scikit: calculate precision and recall using cross_val_score function

I'm using scikit to perform a logistic regression on spam/ham data. X_train is my training data and y_train the labels('spam' or 'ham') and I trained my LogisticRegression this way: classifier = ...
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20 views

Logistic regression coefficients in weka LMT tree

How can I obtain the coefficients of the regression function in the LMT leave nodes? Thanks!
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22 views

Python regression with bounded Y values?

I have a regression problem where the target variable's values lie between 0 and 1. Currently I have simply fit a linear regression model to the data, but this is problematic because the model is ...
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12 views

How to measure classification accuracy of logistic regression in python?

I am trying to implement a k-fold cross validation and I'm having problems with estimating the error of my classification. I have been struggling with implementing a classification accuracy function, ...
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11 views

R: fitting a multilevel model with a binary DV

As the title implies, I am trying to fit a multilevel model with a binary DV. I only have limited experience with multilevel modeling, and I'm also relatively new to R. To make this question general, ...
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24 views

Class Order for Logistic Regression in Matlab

I am using the mnrfit method in Matlab to fit a multinomial logistic regression model to my data. After fitting the model, I pass in my validation set and get a list of probabilities that is NxK, ...
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1answer
36 views

R - Logistic Regression - Sparse Matrix

I have a dataset which has about 1000 features and about 30,000 rows. Most of the data is 0's. I am currently storing this information in a sparse matrix. Now what I would like to do is perform column ...
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1answer
14 views

vglm: how to loop with variables strings in model?

I've found a handy solution in order code a loop calling vglm() but only with a single variable: R: varlist [1] "X2" "X7" "X17" "X18" "X33" models <- lapply(varlist, function(x) { ...
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1answer
56 views

glmnet: how to set reference category for multinomial logit

Following my question in Cross Validate glmnet: which is the reference category or class in multinomial regression?, can someone explain how can we set the reference category in glmnet for multinomial ...
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21 views

Regressing/Predicting on a 'Group' Level in a denormalized data set

Sorry if this question if convoluted/trivial but I'm having trouble understanding how to handle this scenario. Say I have the data frame d: grouping var1 var2 response a 1 6 1 a ...
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1answer
46 views

Can you perform a Kernel Logistic Regression in R [closed]

I am trying to perform a Kernel Logistic Regression in R. Is there a package that does this?
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9 views

Creating confidence intervals around predicted probabilities from a culmulative logit model

I have a series of predicted probabilities based on an ordinal logit model. I want to put confidence intervals around them. Attempts using "predict" have failed (e.g. by setting se.fit = TRUE). ...
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21 views

Handling Sparse Data Frames - algorithm selection

I am new to machine learning/statistical modelling. I am trying to run a classification on a highly sparse dataset with 100 features, most of which are categorical (TRUE/FALSE) with the remaining ...
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123 views

Inference for Mixed Effects Logistic Regression in R

I'm trying to fit Mixed Effects Logistic Regression in R. The code is given below. Now I want to make want to compare different treatments at each Date Level (here at Date1 and Date2). Any help will ...
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1answer
156 views

Survival Analysis for Telecom Churn using R

I am working on Telecom Churn problem and here is my dataset. http://www.sgi.com/tech/mlc/db/churn.data Names - http://www.sgi.com/tech/mlc/db/churn.names I'm new to survival analysis.Given the ...
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27 views

R: Error with mlogit Conjoint modelling - system singularity

I am building choice models on a dates about coffee preferences. I have 5 alternatives: Brand, Cup, Price, Certification and Local Community Support. The data looks like this: RespNum Question ...
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38 views

How to ensemble SVM and Logistic Regression with python

I am doing a task of text classification(7000 texts evenly distributed by 10 labels). And by exploring SVM and and Logistic Regression clf1 = svm.LinearSVC() clf1.fit(X, y) clf1.predict(X_test) ...
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36 views

Plot of observed values vs fitted values

I want to plot the observed X's vs observed and fitted Y's. Here is my code: conc <- c(1.6907, 1.7242, 1.7552, 1.7842, 1.8113, 1.8369, 1.8610,1.8839) number <- c(59,60,62,56,63,59,62,60) dead ...
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70 views

R - glmnet - logistic regression - cross validation - print final auc value

I have just started working with the glmnet package in R. I have s a dataset which has about 130,000 features and about 32000 rows of data. Here is the code to create the model myModel = ...
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1answer
53 views

problems with cross validation code - r -

I'm writing a function to perform logistic regression on two columns of a dataframe. I can't get around the errors... I am trying to use 10-fold cross validation. Here's the code I'm using: SAdata = ...
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1answer
27 views

Running stepwise regression producing errorn in model

I am trying to run a stepwise regression model. I keep receiving this message: Error in step(cdc.fit, direction = "backward") : number of rows in use has changed: remove missing values? In ...
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18 views

Multi-class logistic regression

What would be the steps in computing the logistic regression for a multiclass problem using softmax, if possble K =3? Please can someone provide the psuedo steps along with dimensions of the matrices ...
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43 views

In PROC LOGISTIC which value of the parameter is modelled?

My colleague and I are running exactly the same SAS PROC LOGISTIC, but with different input files. SAS models ooX = 1 when I do it, and ooX = 0 when he does it. We've checked record counts and FREQ ...
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Logistic Regression Confidence Intervals for a specific value

I have a logistic regression model in which I am predicting the size at which a crab has a 50% chance of being mature (probability=0.5) and I've built confidence intervals for the whole model, ...
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26 views

logistic regression with sparse predictor variables

I am currently modeling some data using a binary logistic regression. The dependent variable has a good number of positive cases and negative cases - it is not sparse. I also have a large training set ...
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1answer
39 views

How does Support Vector Machine compare to Logistic Regression?

Support Vector Machine (SVM) and logistic regression (LR) have been discussed widely in machine learning community, I know that both of them achieve pretty good performance. But, I am not sure how in ...
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how to calculate feature's discriminability

guys. we know that the feature we selected should be with some degree of discrimination. That is samples from the same class will have comparatively similar feature values, contrary to the samples ...
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1answer
24 views

Function for Logistic Regression Training Set

I am trying to create a function to test a logistic regression model developed on a training set. For example train <- filter(y, folds != i) test <- filter(y, folds == i) I want to be able ...
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1answer
47 views

Vowpal Wabbit Logistic Regression

I am performing logistic regression using Vowpal Wabbit on a dataset with 25 features and 48 million instances. I have a question on current predict values. Should it be within 0 or 1. average ...
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1answer
54 views

Newton Raphson for logistic regression

I did code for Newton Raphson for logistic regression. Unfortunately I tried many data there is no convergence. there is a mistake I do not know where is it. Can anyone help to figure out what is the ...
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1answer
49 views

how to get probabilities between 0 and 1 using glmnet logistic regression

consider the following example rm(list = ls(all=T)) library(ISLR) library(glmnet) Hitters=na.omit(Hitters) # Binary proble - Logistic regression Hitters$Salary <- ifelse(Hitters$Salary > ...
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16 views

Ridge estimator in Weka's Logistic function

I'm reading the article "Ridge Estimators in Logistic Regression" by le Cessie and van Houwelingen, which is cited in Weka's documentation on the logistic regression function. I have to say, my maths ...
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1answer
37 views

Orange logistic regression doesen't return coefficients

from Orange docs (http://docs.orange.biolab.si/reference/rst/Orange.classification.logreg.html) I'm trying to replicate the results from this part of code: import Orange titanic = ...
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5 views

Logistic Regression for non Linearly separable data

I know how to use Logistic Regression as binary classifier but is it Possible to use Logistic Regression (binary) to separate/classify data as shown in Fig 2 (Attached). There are only 2 ...
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31 views

Passing function parameters to mle() for log likelihood

I'm estimating a logit regression with multiple predictor variables by hand in R using the mle() method. I'm having trouble passing along the additional arguments needed to calculate log likelihood in ...
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48 views

Coefficients from multinomial logistic regression in sklearn

I'm running sklearn.linear_model.LogisticRegression on a multi-class problem. From what I understand, the output of the coef_ attribute are the coefficients for each feature for each class. What I ...
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43 views

predict (glmFit) is return the same probabilities for test and training data

I have a data set and its structure is given below : Id Fail Leverage CumulProfit Liquid OverDueDebt WorkCap OperProfit ShortDebt GuarDebt StateLag FiscalLag InFinan Links CapStruct 1 0 1 0.12911 ...
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116 views

ValueError: data type must provide an itemsize?

My code as follows, every time when I run it , it has an error; "ValueError: data type must provide an itemsize" I can't find the reason why it doesn;t work. I don't know why? from ...
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LogisticRegression: ValueError: setting an array element with a sequence

I am using logisticRegression model, my code is as folows,i don't know why every time after do it there is an error: "ValueError: setting an array element with a sequence." I don't know why? from ...
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53 views

r- glm2 error “singular fit encountered”

I'm trying different methods to do logistic regressions. I use glm and got a warning but still got the coefficients. So the formula works. logit<-glm(flag_compro~.,training, ...