Questions tagged [logistic-regression]

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

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Do random effect levels need observations in each response outcome?

According to my research, it is ok to use a random effect term that has levels containing one observation (only when a minority of the data is this way) explained well by this post: https://stats....
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Error in glm.control(REML = FALSE) : unused argument (REML = FALSE)

I want to utilize Maximum Likelihood fitted logistic regression. R Documentation(https://www.rdocumentation.org/packages/mixlm/versions/1.2.5/topics/glm) says I should use REML=FALSE to invoke it. ...
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Is there an R package or function for tuning logistic regression hyperparameters? [closed]

Is there an R package or function for tuning logistic regression hyperparameters similar to what can be done in Python? As far as I know, the glm function has no hyperparameters available to tune, ...
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20 views

Different AUC-PR scores using Logistic Regression with and without Pipeline

I'm trying to understand why I get different AUC-PR scores using Logistic Regression with and without Pipeline. Here is my code with using Pipeline: column_encoder = ColumnTransformer([ ('...
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FitFailedWarning: Estimator fit failed. The score on this train-test partition for these parameters will be set to nan when using greater int values

I've recently watched a YouTube (DataSchool) video where the guy used only 3 columns from the Titanic dataset and made a pipeline. I wanted to add more columns to get better accuracy so I added Age ...
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1answer
27 views

How to get the OR and 95%CI from lrm()?

I want use rms package to build the logistic model, but how can I get the 95%CI of OR from lrm()? I only know how to get value of OR. My code as below: n <- 1000 # define sample size set.seed(17)...
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Optimizing Numpy Operations

I am trying to train a multi-class classifier with multinomial logistic regression and gradient descent. Specifically, the model will have a trained weights matrix w with shape (C, D) where C is the ...
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Logistic regression only predicts one class

I try to complete one of Kaggle competitions and I do need some help to understand a reason I'm getting predictions of only one class. I use the following code to train my model and make predictions. ...
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how to use optuna liberary with LogisticRegression

I am new in Machine learning I have error when use optuna to predict values of Logistic Regression my code is def optimizeLg (trial,X,y): C = trial.suggest_int('C',1) penalty = trial....
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Find all combinations of explanatory variables that lead to pass/fail [closed]

I am working on a customer purchase problem. I have 150 campaigns sent by email (or adds if you prefer), that I denote C0, C1 ... C149. Moreover, for each user i : Cj= 0 if campaign j is NOT received ...
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How can I solve the error: "The R package "lme4" is not installed when using the pymer4 library within python?

I am trying to follow the example detailed here: Mixed effects logistic regression, but I get a "PackageNotInstalledError: The R package "lme4" is not installed" at the line ...
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How can I ignore a specific factor level when running a GLMER in R?

I am running a common RSF to evaluate landcover type usage by GPS collared deer. I have a factor column named Landcover_Type populated with numbers 1-5 which correspond to a specific landcover type (i....
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How do I conduct hypothesis testing on multinomial logistic regression using SKLearn in python?

I'm trying to do some hypothesis testing on a multinomial logistic model on a multinomial logit. Statsmodels doesn't allow weighting, and GLM doesn't allow multinomial, so I have used SKLearn Logistic ...
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Is there a way to let glm function not drop unused levels of a categorical predictor?

I split an original data set into train and test using the caret package. Then I balanced the data with ROSE using the undersampling method. Now I want to fit a logistic regression model. The problem ...
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Classification metrics can't handle a mix of continuous-multioutput and binary targets in Logistic Regression

While working on the Social Media Ad dataset with Logistic Regression, I've confronted errors in the confusion matrix. Could anyone please guide me out? import pandas as pd import matplotlib.pyplot as ...
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Missing categories in the result of the logistic regression

I am attempting to run a logistic regression on a dataset like this. However, when I run the glm, I observe that some categories are missing. Eg the FAST from the variable SPEED, and EXCELLENT from ...
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Error on prediction in Logistic Regression

Im performing logistic regression on a given dataset after splitting the data into train and test split. Classification works. While doing prediction Im getting the error "Error in model.frame....
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How to generate new rows in a dataframe in R to turn aggregate success/failure counts into individual ones/zeros (logistic regression)?

I know that the dependent variable can be expressed in matrix form with cbind(). That is not what I'm asking. It is also clear to me that the results are identical. However, the ability to generate ...
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1answer
16 views

statsmodels metric for comparing logistic regression models?

I'm learning about logistic regression by building models in statsmodels. I know that if I build a linear regression model in statsmodels, lin_mod = sm.OLS(y_var, X_vars).fit(), I can easily get the ...
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Confusion Matrix - Python

Working on my assignment today. I find that my logistic regression model is predicting 2161 instances correctly and 839 incorrectly. When I use this to calculate my confusion matrix my output is [2161 ...
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Why does the glm function converge and not give an error when all y's are equal to the same value? [migrated]

I need to fit a univariate logistic model with few observations (between 10 and 20). In some cases, y is equal to the same value (example 1) for all observations. Theoretically, the model should not ...
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Control variables in logistic regression (Using Python for the analysis) [closed]

I have major problem in designing logistic regression analysis in my master thesis. I've been working with large panel data related to companies in stock market. My aim is to understand organizational ...
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1answer
25 views

How To convert New Data set according to dummy variables for validation

I am using a logistic regression model to predict a binary outcome. Initially the model had 2 numeric variables which were converted into categorical. And finally dummy variables were created based on ...
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28 views

Logistic regression accounting for temporal correlation (year)

I have as simple logistic model looking at predation of bird nest (predated vs not predated) as a function of the age of the nest. However, the data are collected over several years and there might be ...
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1answer
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Is there a way to suitably adjust this sklearn logistic regression function to account for multiple independent variables and fixed effects?

I would like to adapt the LogitRegression function included below to include additional independent variables and fixed effects. The code below has been adapted from the answer provided here: how to ...
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How to change the reference level for Risk Ratio in logistic regression in R?

Survey.ID Quit Boss Subord Subord2 Subord3 Subord4 1 1 0 0 0 0 1 0 2 2 1 ...
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Loss of significance of variable in multivariate analysis in r

I am running logistic regression analyses in r to get the association of AMU and year with Interp variable (output variable). AMU data in three consecutive year are 289,230 and 206. Interp (binomial ...
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Univariate and multivariate logistic regression analyses that show a very different significative trends in odd ratios in R [migrated]

I have a question about logistic analyses. I want to see weather two variables are associated to the variable response. To do that, I did univariate and multivariate logistic regression analyses. I ...
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1answer
32 views

My level of significance is 1 for all my variables

Basically, I'm trying to run a logistic regression, to predict, if the state and year is given will the birth level in the particular state would be high (1 = high, 0 = otherwise). How the Data looks ...
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1answer
31 views

Comparing Accuracy of different classification models in ML

I am working on a project to test my skills on Classification models but seems like I made a error and am not sure how to solve it. Below is my code and error: Required: Implement different algorithms ...
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1answer
20 views

one hot encoder for the categorical variables of more one word

I have a dataset like below. I want to do one hot encoding for logistic regression for the 'Item' column. There are 313 distinct items in the 'Item' column I'm getting below error. Can you please ...
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To make a forest plot from logistic regression results stratifying for before and after adjusting for covariates

I have a result that I intend to have a forest plot from. This is the result of logistic regression (OR[95%CI]) in which I examined the association of three groups with several treatments before and ...
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1answer
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Logistic Regression in Jupyter Notebook; Input contains NaN, infinity or a value too large for dtype('float64')

I want to create a logistic regression model to predict if the relationship is known or unknown, I've set the known values to 1 and unknown to 0 in the dataset. I have also added several features to ...
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1answer
46 views

I was trying to fit and score logistic Regression model but getting error ,Can anyone help me this error

i am trying to experimenting Logistic Regression machine learning models, but i don't know why m i getting error. models = {"Logistic Regression":LogisticRegression(),} ...
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51 views

How to make a forest plot from logistic regression results before and after adjusting for covariates

I have a result that I intend to have a forest plot from. This is the result of logistic regression (OR[95%CI]) in which I examined the association of three groups with several treatments before and ...
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0answers
8 views

'numpy.ndarray' object is not callable for confusion matrix

confusion_matrix = confusion_matrix(test_y, prediction) print(confusion_matrix) I am calling for the confusion matrix but the error is getting displayed: TypeError: 'numpy.ndarray' object is not ...
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1answer
44 views

Get predictions probability of 1 rather than [0;1] using Logistic Regression model

I fitted a LogisticRegression on a training set and a test set and got accuracies of ~80% Then i wanted to make predictions on the test set, giving scores of each student_id depending on whether they ...
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33 views

Why is my Logistic Regression output same for all inputs?

I made a simple linear regression model with a simple .csv dataset that had 2 categories. For reference, the dataset looks like a larger version of this Basically, it is a hobby classification ...
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Marginal effects for ordered logistic regression models with a complex sampling design in R

We are analysing data from population health surveys that have a complex sampling design. The aim is to compare changes in prevalence in tobacco use and the outcomes of interest are ordinal (non-...
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Enforce binary coefficients in Logistic Regression

I am facing a classification problem in which I need to classify samples based on the presence or absence of features. The data matrix X is a binary scipy.sparse.csr_matrix. I tried to fit a ...
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1answer
34 views

I can't fit Logistic Regression into model. How to solve this?

I ran this code in Google Colab: from sklearn.metrics import confusion_matrix # Initialize logreg model logreg = LogisticRegression() # Fit the model with data logreg.fit(X_train, y_train) # ...
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23 views

How to calculate deviance residuals when performing logistic regression in R

I would like to get the residual deviance of logistic regression in R. When I used glm.fit function, I got the following warning about complete separation. glm.fit: fitted probabilities numerically 0 ...
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'mitml'-package: Is it possible to get ICC in output of multilevel logistic regression with binary outcome variable?

I’m trying to run a series of multilevel logistic regression analyses with the lme4 package. The analyses run fine without imputations and also provide me with the ICC, using the following code: ...
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1answer
62 views

TypeError: scatter() got multiple values for argument 's' (Plot Logistic Regression)

I am trying to plot a decision boundary for logistic regression but i got this error : TypeError: scatter() got multiple values for argument 's' Here is my code : logreg = LogisticRegression() logreg....
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How to do parametric bootstrap and plot confidence interval with 'envelope' and 'boot' in r with logistic regression as the distribution?

I have a datset(data2) that look like this: Z Y 678 -31.42962 0 1734 -31.41468 0 2567 -31.20788 0 1108 -30.43640 0 880 -30.26624 0 1599 -30.25914 0 ...
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how to fix the error ValueError: could not convert string to float in a NLP project in python?

I am writing a python code using jupyter notebook that train and test a dataset in order to return a correct sentiment. The problem that when i try to predict the sentiment of the phrase the system ...
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1answer
31 views

Why does this training loss fluctuates? (Logistic regression from scratch with binary cross entropy loss)

I am trying to implement logistic regression from scratch using binary cross entropy loss function. The loss function implemented below is created based on the following formula. def ...
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161 views

RuntimeError: No training summary available for this LogisticRegressionModel

I am trying to evaluate my Logistic Regression model, going to get the "bestModel" based on the k-fold cross validation, which is also fully upgraded on the whole train_df. This is my ...
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2answers
60 views

Reporting average marginal effects of a survey-weighted logit model with R

I'm working with survey data of a complex sample to estimate binary outcome models. I am trying to report average marginal effects of a logit model, which I estimated through svyglm of the survey ...
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28 views

Why are my grid_scores_ from a RFECV, different from the score of the same cross validated model with the optimal features from the RFECV?

I'm using sklearn's RFECV to come to the optimal set of features for my classification problem. I have X with 217 numerical features, for a binary label y. I determine the optimal set of features like ...

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