Questions tagged [logistic-regression]

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

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Relationship between logistic regression and linear regression

I've encountered a problem where I need to analyze the relationship between a movie's length, a movie's price and it's sale on a video streaming platform. Now I have two choices to quantify sale as my ...
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Getting ValueError while using fit_transform method from sklearn

I have a data-set(breast-cancer detection) with all numerical data and have divided the data-set into X(containing all features) and y(output class).After splitting the data into training and test ...
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What does “Logistic Regression supports only penalties in ['l1', 'l2', 'elasticnet', 'none'], got 12” mean? [closed]

I am currently going through Stephen Klosterman's Data Science Project with Python book. When trying to fit the data using the scikit-learn's logistic regression fit method (see page 73 of the book), ...
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Different results with Cross Validation using LogisticRegression and LogisticRegressionCV in Scikit-Learn [closed]

Until now I have been using LogisticRegression with model_selection.cross_val_predict to train a model using Cross Validation with 10 folds. Here is the code: model = LogisticRegression() kfold = ...
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how to predict the output value using logistic regression?

I simulated successfully my classification function to predict the single value of output binary by ANN utilizing pandas and sklearn libraries. Now I want to simulate my model to predict another ...
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Why is Statsmodels Multinomial Logistic Regression wald_test() throwing a decoding to str error?

I'm (a Python newbie) writing Python code to mimic outputs in SAS and want to run a multinomial logistic regression on the SAS Wallet data set. I've done normal logistic regression previously on other ...
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Can I use logistic regression when my outcome is very unevenly distributed? [closed]

Can I use logistic regression when my outcome is very unevenly distributed? ( DV as 3.7 % YES and 96.3% NO) ? Any suggestions on which algorithm to use?
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Finding the right combination of values of input features at which decision occurs in classification? [closed]

I have a tabular data-set with 4 features and one output which is binary (True or False). I want to find the values of the input features at which the output column data is separable into two classes (...
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Is there a difference between the plot outputs of plot_model(type = “pred”) and effect_plot()?

I'm new to stats and R, and am in the process of creating figures for visualizing a logistic regression model. The documentation for plot_model(type = "pred") specifically says that it plots ...
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24 views

How could I find and automate optimal weighting based on similarity scores

I have the below table after calculating similarity scores using various text comparison methods. I'm trying to set up method for calculating the optimum weighting on each similarity score to achieve ...
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Explain matplotlib contourf function

I am trying to plot a decision region (based on the output of a logistic regression) with matplotlib contourf funtion. The code I am using: subplot.contourf(x2, y2, P, cmap=cmap_light, alpha = 0.8) ...
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Input contains nfinity or a value too large for dtype('float64')

I have taken a dataset, analysed , wrangled it and now while coming to training the model the error shown is this. Input contains NaN, infinity or a value too large for dtype('float64'). I have used ...
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Extract Elastic Net penalized logistic regression Coefficients from mlr

I have read a few other answers but none have worked for me in extracting the penalized logistic regression coefficients from my final trained model. penlrntune = makeLearner("classif.glmnet"...
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PYTHON : IndexError: index 2 is out of bounds for axis 0 with size 2

This was my piece of code initially : Here X is the array of data points with dimensions (m x n) where m is number of data points to predict, and n is number of features without the bias term. y is ...
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ValueError: bad input shape (22373, 2)

Hi Guys I would appreciate your good answers please. I am working on an NlP project and after creating Document matrix with Tfidf vectorizer as shown: vectorizer = TfidfVectorizer(max_features = 5000)....
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Clarification in the calculation of regularized Cost function for logistic regression using python

Below is the code for finding the regularized cost function and the gradient (derivative of cost function wrt theta). I understand the math behind it and what we are trying to do here. def ...
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I try to replicate the results of multinom() function with optim() function in R, but it does not yield the same results. What was wrong?

I want to replicate the results of multinom() function with optim() function in R, but it does not yield the same results. What was wrong? First, I imported a public data as "ml". require(...
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Implementing SGD classifier [error:only size-1 arrays can be converted to Python scalars]

def gradient_dw(x,y,w,b,alpha,N): '''In this function, we will compute the gardient w.r.to w ''' wt=w.transpose() dw=x*(y-sigmoid(np.dot(wt,x)+b))-((alpha/N)*w) return dw def logloss(...
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1answer
16 views

Which model to use for loan_risk_analysis of a company?

Can time series be used to predict a dependent variable (loan_account_score => ranges from (0,1)) which depends on various independent variables (paid_up_capital_of_company, revenues_of_company, ...
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1answer
19 views

Not able to understand the plotting of 2-Dimensional graph in python matplotlib

The data corresponds to 3 rows where the first row is the marks of Exam number one of a particular student and row number two is the marks in Exam number 2 of the student. The third row corresponds to ...
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Logistic Regression Limited Data [closed]

I want to Use Logistic Regression in Rapidminer but I have less than 100 data. I am currently working in an Education Data Mining Project.I only have 94 rows total and this is all I have, is it okey ...
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Decile Analysis for logistic regression and random forest [closed]

I am working on a simple classification problem (bank marketing response data) and trying various evaluation methods for multiple models to compare and understand the output. And I was trying to do a ...
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27 views

Combine ggplot's facet_grid with bmrs conditional_effects

I have a (toy) dataset where each subject did 10 repetitions of a task, where they had to guess the distance between two points shown. In this dataset I have the ratings given by external judges (not ...
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Do I need to convert sklearn predict_proba() return value from logit to probability like I do with glm?

Do I need to convert sklearn predict_proba()return value from logit to probability like I do with glm? This question was prompted by an extremely narrow distribution of probabilities around the .5 ...
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LASSO Regression over Multiple Responses with Same Explanatory Variables

I am trying to reduce the number of my explanatory variables. Now normally if I had only 1 response, then the task would be easier. But, In my case, I have 60 response variables(binary presence/...
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'LogisticClassifier' object is not subscriptable error [closed]

When I call my new model 'selected_words_model this error came. selected_words_model has a field 'coefficients', How can access it . selected_words_model['coefficients']
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Statsmodel logit producing param nans, large std err, warnings, but model performance is fine

I keep getting warnings such as RuntimeWarning: invalid value encountered in greaterreturn (a < x) & (x < b) and my model summary is full of nans and very large standard errors. The model ...
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37 views

Increase the accuracy of LogisticRegression

Here is my code: import pandas as pd import numpy as np import seaborn as sns import matplotlib.pyplot as plt from sklearn.preprocessing import StandardScaler, LabelEncoder from sklearn....
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1answer
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Error with Python: TypeError: fit() missing 1 required positional argument: 'y'

Every time I run the code below, I get an error that says that fit is missing 1 required positional argument (y), but my "y" value is specified in my code. X_var = myData['PredictorName'] y =...
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what is better to train your own model for sentiment analysis or to use pre trained model like vader and textblob?

I have python script that trained a dataset for sentiment analysis and create a model using logisticRegression model with tfidf , cross validation , bigram and GridSearchCV. With performing the pre-...
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1answer
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Performing logistic regression analysis in python using sklearn

I am trying to perform a logistic regression analysis but I don't know which part am i mistaken in my code. It gives error on the line logistic_regression.fit(X_train, y_train). But it seems okay as i ...
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Extract probability calibration parameter from H2o python

I am experimenting some differences as to how to interpret the output of the a GBM/DRF model when the calibrate_model option is enabled in the H2o python API. According to the documentation one has to ...
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I have a problem using clogit() function in R

I want to see the difference between case and control group. Is this clogit(case ~ Frequency.case + Frequency.control + strata(id), dt) a true usage of the clogit (conditional logistic regression) in ...
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Why any of the ml algo would need to learn n+1 features in the sparse vector representaion of each element of the corpus

[Here n = |V| ,then also logistic regression need to learn n+1 features]
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how to add neutral sentiment to the trained dataset ? using sklearn and nltk

I have a python script that works on sentiment analysis in order to predict the sentiment of the text. positive negative neutral The problem is that the trained and tested dataset includes only 2 ...
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1answer
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R code: Error in model.matrix.default(mt, mf, contrasts) : Variable 1 has no levels

I am trying to build a logistic regression model with a response as diagnosis ( 2 Factor variable: B, M). I am getting an Error on building a logistic regression model: Error in model.matrix.default(...
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1answer
33 views

Error message in Firth's logistic regression

I have produced a logistic regression model in R using the logistf function from the logistf package due to quasi-complete separation. I get the error message: Error in solve.default(object$var[2:(...
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Logistic regression clustered by city

Question from a novice in R. I am using glm function for a logistic regression in R. The model predicts income on multiple independent variables. Now, I have to create a new model clustered by "...
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overlaying multiple regression lines R

How can I plot a regression fit for the variable "gre" and "rank" separately on the same graph? library(ggplot2) mydata <- read.csv("https://stats.idre.ucla.edu/stat/data/...
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1answer
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Trying to implement logistic regression but gridsearchCV shows input variables with inconsistent numbers of samples: [60000, 60001]

Trying to implement logistic regression but gridsearchCV shows input variables with inconsistent numbers of samples: [60000, 60001] Here is my code in python 3 environment : import joblib import ...
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1answer
34 views

How many principal component analysis should I conduct for each construct?

I would like to conduct PCA to reduce the number of total 14 items. After getting the principle components, I will use these components as independent variables in a logistic regression. These 14 ...
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Sklearn Lasso regularization not dropping out random variables?

I've been using SelectFromModel from sklearn to reduce features using LASSO regularization and I'm finding that even when I set max_features to quite low (low enough to negatively impact performance) ...
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1answer
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graphing issues in glmer with predicted probabilities and prediction bands

I have a model that I ran in glmer, which is below: multi.sanctions.bust.full.ag <- glmer(allbuster ~ lageutradeshare100 + lagtradeopenP + colonial + ...
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Interpretation ordinal log regression

I used an ordinal log regression (polr) to find if there was a stat correlation between the scores on a likert scale (5 levels, very unlikely-very likely) and a continu variable. I found a p<0,05 ...
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2answers
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Logistic Regression, Gradient Descent Octave implementation

I'm taking the Machine Learning class by Prof. Ng. There is a homework need to implement logistic regression gradient descent. And here is my code: function [J, grad] = costFunction(theta, X, y) %...
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What are the metrics for evaluating ordinal logistic regression in Python?

I need to predict what category, ranging from 1 to 5 and ordered, the record would best belong to. I need help with any metric that would help me understand how accurate or inaccurate the model is? ...
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Logistic Regression with glmnet - structure of input data

I am trying to apply Ridge and Lasso regression to a logistic regression model and am struggling to understand the required structure for the x and y inputs. I am fairly new to R, so apologies, and I ...
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Exception “ValueError: endog must be in the unit interval” raised even though all values in target are [0,1]

Current solutions for this exception are cases where user is attempting to perform a logistic regression with a continuous variable or using a column/Series with nulls for the dependent variable. I am ...
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Stata survey weighted hierarchical logistic regression

If I have data from student performance from schools all over the country, then I need to set it up as a survey in Stata: svyset school_id [ pw=swt ], singleunit(centered) strata( yt1_stratum ) What ...
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1answer
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Using all variables of a data.frame in logistic regression

I am very new to ml in R and am trying to simply add all variables from X_train to predict y_train in the model training. I am running into problem with them not being in the same data.frame. My code ...

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