Questions tagged [logistic-regression]

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

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I'm trying to run a logistic regression model. I am analysing shark tank pitches and have given scores to to parameters to figure out deal or no deal [closed]

Based on those scoring parameters I have to figure out whether the deal was made or not. I am facing a repetitive error, where the row which has the company name is giving this: Value error: could not ...
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Gradients not changing in co-ordinate descent for logistic regression

I am trying to implement a co-ordinate descent algorithm for logistic regression. My gradients are not changing, as a result I end up updating a single co-ordinate for each epoch. Here is the code: ...
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Is there a proper way to apply median imputation by groups in caret?

I'm a beginner in machine learning, and I'm trying to do logistic regression on the titanic data set from Kaggle. I want to impute the Age variable using the titles (Mr, Master, Miss, etc.) contained ...
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Trouble with binary classification using HingeEmbeddingLoss() function

I have 2 datasets which make up the (x,y) coordinates of 2 sine curves and their respective outputs. The sine curves are concentric. The bigger sine curve has an output label of 1 and the smaller sine ...
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Mediation and binary logistic regression - is this even possible with R?

I am a beginner and have my term paper due next week. As I said, I'm carrying out a binary logistic regression with Mediator. I wanted to calculate the effect using mediate(), but I get an error: ...
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Why is P value for all my predictor variables is non-significant in the univariate logistic regression model?

I have run univariate logistic regression model on 5- categorical predictor variables (cat type, age group, rearing, gender, Breed) and also 4- interaction terms to predict one binary outcome variable ...
Mohamed Samir's user avatar
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How do I plot this logistic regression in R?

I'm struggling to get this to work. I can plot it in Graphpad but I'm not sure if my stats are correct there. This is my data. It is # of pupae at a given day over several days. With the varibles of ...
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fitted probabilities for logit regression [closed]

I need to plot a roc curve so I need the vector of probabilities after estimating a vector beta for logistic regression using the famous formula p= exp(X%%Beta)/(1+exp(X%%Beta)) In lasso regression ...
Nadia ASRIR's user avatar
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Logistic Regression using sklearn

I have been working with titanic data set. Where I am getting TypeError when trying to fit data. **Step 4: Train & Test Data**: Build the model on the train and predict the output on the test data....
Kartick Upadhyay's user avatar
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Is there a function or existing script in python which helps to make Quantile Difference in Differences? [closed]

I am trying to estimate a Quantile treatment effect in the context of DID estimation . I did a first DiD using an existing function ( https://www.kaggle.com/code/harrywang/difference-in-differences-in-...
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Custom Logistic Regression Gradient descent coefficients not matching sklearn [closed]

I was hoping for my algorithm to eventually get close to the intercept and weights that sklearn calculates, but I'm not very close as of right now. Any help to make the tweaks that I need to get it to ...
Jared Whitaker's user avatar
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Optuna pruned trial for random forest classifier

I am currently working on Optuna library and I have seen that there is a parameter which allows to prune unpromissing trials. It seems that this parameter can only be used with incremental learning ...
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Python logistic regression in statsmodels using l1 penalty with class weights

I would like to run logistic regression in statsmodels using an l1 penalty (lasso) and class weights due to a class imbalance. There are several posts that explain how to either implement logistic ...
makemyDNA's user avatar
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Statistical Analysis of antibiograms

I'm currently working on a dataset obtained from different antibiograms tests of different people. My aim is to propose a model to predict and study sensibility/resistance of atibiotics. I'll attach ...
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Improve Logistic regression with sklearn

I am doing a logistic regression using sklearn but I saw that the fit is actually very steep, going straight from 0 to 1 (see image). Can anyone tell me which parameter should I work on so the fit ...
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ValueError: shapes (7998,18) and (1498,18) not aligned: 18 (dim 1) != 1498 (dim 0)

I have split my data frame into 80-5-15 for data training, and I also run an Ordinal Logistic regression for it. The training data and OLR are all good, but the accuracy test failed. My code is: ...
Yanke M o's user avatar
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Fit all variables 1 by 1 for Logistic Regression in R

I have a straight-forward question about logistic regression in R. I have a binary response variable y, and let's say 20 predictors (x1-x20). I would like to fit logistic regression model y~x for each ...
Ronald Carlos's user avatar
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Spiral data classification

I have a separable 2 class spiral data, namely blue and red, spiraling out from origin. I know KNN and SVM are suitable for the classification prupose, but i wonder can I achieve not-bad classifying ...
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Logistic Regression from Scratch, Cost is not decreasing

I am trying to perform Logistic Regression from scratch, but the cost is not decreasing. The cost function array is J_all = [0.6931471785599453, 0.7013523852395079, 1.0799382321159159, 1....
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L-BFGS-B Needs Finite Falue of 'fn' (In one step (step) and (step -1 +dstep))

I have tried data fitting to a model including their confidence interval, and it works smoothly without confidence interval. However, when I want to include a confidence interval inside my plot it ...
Ron Raven's user avatar
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Implementing a gradient function using numpy

I am having trouble figuring out how to implement a specific gradient function with NumPy. I am sure my math is correct, but I have failed at coding it. I have attached my work and the parts of the ...
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Fit Partial Proportional Odds Model (Ordered Logit) for Ordinal Response Variable with Big Dataset

I'm seeking advice regarding fitting a Generalized Ordered Logit model with a large dataset. My aim is to understand the effect of the variable "origin_country_code" on the dependent ...
Santi Burone's user avatar
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Weighted logistic function model by total samples (not standard deviation of grouped samples)

I am quite new to R. I gathered data about parasite infection in insects from many references, in which it follows 3 parameters logistic function, with x=parasite count (in concentration), y = ...
Ron Raven's user avatar
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"longer object length is not a multiple of shorter object length" when calling cv.glm function

I have been trying to evaluate the performance of a logistic regression model by cross validation, which I've already done before. I have at my disposal a dataset of over 200 000 rows for 12 variables ...
Dataneko's user avatar
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custom metric in gridsearchcv

I have a churn dataset with a column named "CLTV" which is the client value for the company. I created a custom function : `def penalty(y_test,y_pred): penalties = [] for i in range(...
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having trouble loading numpy array into a different shape

#Start your code #Hint - use pandas to read the Excel file data and then extract the data to a nump array "data" df = pd.read_excel('A3data.xlsx') data = df[['Exam1', 'Exam2','Admission ...
Chris Santos's user avatar
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How to get the fitted values with confidence bands when using PROC NLMIXED

I am analyzing a dataset that contains tree measurements such as the diameter (cm) and whether it is dead or alive (0/1). The measurement collection was irregular, i.e. starting in 1960 and is still ...
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Multinominal Logistic Regression results sensitive to Encodings

I am using the following logistic regression model where I have to select one label from multi-labels: from sklearn.linear_model import LogisticRegression multi_class_prediction_model = ...
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Multiple Logistic Regression

I am currently conducting a multiple logistic regression model to determine the odds ratios associated with being discharged with disbaility or not from a hospital. the results for some reason are not ...
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question about how to compare effect size/magnitude of odds ratios and average marginal effects

If in a logistic regression model with a very large sample (N=2347) I have a variable with a odds ratio of 1.51 and a average marginal effect of 0.18, but in the same model with a smaller sample (N=...
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R - multinomial logistic regression with relative frequencies as response variable [migrated]

my colleagues observed in an experiment involving categorical and continuous independent variables, how the species composition changes. Approximately equal numbers of microbes were used in the ...
Anti's user avatar
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Why is Recursive Feature Elimination (RFE) with Logistic Regression selecting unexpected features in binary classification?

I am working with a dataset of 94 samples each of which belong to 1 of 5 groups and can be described by 610 features. For each of the five groups, I would like to determine the minimum number of ...
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Bootstrapping function error. (Error in eval(mf, parent.frame()) : object 'dTMP' not found)

I am trying to perform a bootstrapped logistic regression with backwards selection using boot.stepAIC() on a multiple imputed dataset (created using mice). The dataset consists of a couple of columns ...
Mozzarella's user avatar
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R is't using my character random effects in a binomial glm

I get this error when I try to run my model using glm. Why won't R use my nested character nested effects? model <- glm(Propotion ~ Parasites_box * Parasites_nest + Day_of_year + Site + (1|Subsite/...
Tovah Kashetsky's user avatar
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nls() throws "step factor reduced below 'minFactor' error even though geom_smooth() using nls() on the same data draws fit curve

I try to get logistic curve fit parameters on following data in fil_dat, I manage to draw curve fit on a plot using ggplot2 geom_curve with nls as method parameter, but when I try to obtain parameters ...
BartekT's user avatar
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R: force number of predictors in stepwise glm regression with stats::step()

I have a Logistic model that I would like to perform stepwise variable regression on, forcing the number of output predictors to be 2 I know I can perform a similar task with regsubset() from leaps ...
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SAS_How to call a cumulative concat in array

I encounter a need to perform the following action but I am not sure how to achieve this. I have a table with variables I need to perform regression and the table looks like Colummn name | Y | X1 | X2 ...
Yao TONG's user avatar
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Logistic Regression Deviance Variance Across Numerical and Categorical Variables

I fitted a Logistic Regression model for a Customer Churn dataset with the following results Logit Results I tested this model with a validation set and calculated the ROC AUC score, which was ...
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Shrinkage factor per variable in logistic regression model using validate in rms package

I made a predictive model using logistic regression and backward selection through the lrm function. To internally validate I used bootstrapping through the validate function of the rms package. The ...
Nynke Verhees's user avatar
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R syntax: manually write logistic model with an if variable

I am trying to manually write a model that corresponds to ROI severity score for burn prognostic value. This is a multivariate logistic regression model described here. Basically models are logistic ...
cccnrc's user avatar
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I got this TypeError: '<' not supported between instances of 'str' and 'NoneType' while fitting the training data for logistic regression. Why?

penalty = ['l1', 'l2'] C = np.logspace(0, 4, 10) grid_model = GridSearchCV(log_model, param_grid={'C':C, 'penalty':penalty}) grid_model.fit(scaled_X_train, y_train) I was getting the error in the ...
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Testing proportional odds assumption in R for ordinal logistic regression on ordinal variable with many categories

I'm trying to run an ordinal logistic regression to predict an ordinal variable with 8 categories (bins of # of days spent recreating) based on a categorical (BIPOC/not) and continuous (urbanicity ...
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Error with polr function in R: initial value in 'vmmin' is not finite

I checked all the questions related to this problem. I found one solution, including changing the start parameters. However, it did not work either. I am trying to run the ordered logit model for ...
Nisa Aslan's user avatar
2 votes
1 answer
87 views

3D plot logistic regression

I have been able to make 4 plots of the predicted proba (binary outcome 0 or 1) in function of one of the 4 variables : Pregnancies, Age, BMI, glucose ; however I don't succeed in applying something ...
Libellule's user avatar
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Why do I get very large (100 percent) confidence intervals for predicted probabilities from logistic regression

I performed this logistic model: Model2i <- glm(Child ~ Age +Age2 + Education + `Place of residence` +`Marital status` + `Multiple birth`+ Region + Period*`Conflict exposure` +`Sexual violence`+ ...
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When do you need to verify the linearity to log-odds assumption in binary logistic regression

To all the statisticians out there: I'm running an exploratory data analysis to understand the relationship between my dependent variable (binary categorical) and all my independent variables. So I am ...
Andy McDill's user avatar
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How do we verify standard error implementation in a PyTorch-based logistic regression code?

I am currently implementing a logistic regression code using PyTorch and running it on a GPU. Below, I have provided a portion of the code. Following the model training, my objective is to obtain the ...
Beautiful Mind's user avatar
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How can I solve continuous data being treated as separate entities when running logistic regression in R? [duplicate]

I am trying to run a logistic regression in R (purely for practice purposes). However I am encountering a few issues. My main issue is that when I run the actual model, it treats my continuous ...
Matt W's user avatar
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How to rejoin scikit-learn Logistic Regression predicted probabilities at same indices?

I've successfully ran a logistic regression on some data that I have using scikit-learn's Logistic Regression and I simply want to get predictions on a dataframe appended to the frame. I have reason ...
Wyatt M.'s user avatar
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Why does my LogReg model output a lower accuracy after hyperparameter tuning?

import pandas as pd import numpy as np from sklearn.linear_model import LogisticRegression from sklearn.preprocessing import MinMaxScaler from sklearn.model_selection import KFold, GridSearchCV import ...
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