Questions tagged [roc]

ROC (Receiver Operating Characteristic) curve is a graphical plot comparing the true positive and false positive rates of a classifier as its discrimination threshold is varied.

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How to plot the ROC curve for ANN for 10 fold Cross validation in Keras using Python?

I was just trying to find ROC plot for all the 10 experiments for 10 fold cross-validation for ANN in Keras. I got stuck with it for a week and can not find a solution. Could anyone help with this? I ...
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How to create ROC - AUC curves for multi class text classification problem in Python [closed]

I am working on a multiclass text classification problem and trying to plot ROC Curve but no success so far. Tried many solutions available but didn't work. Kindly please someone help me out with the ...
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39 views

module 'sklearn.metrics' has no attribute 'plot_roc_curve'

I am trying to plot ROC curve for stratifiedKfold validation. Heres the code- from sklearn import metrics # Run classifier with crossvalidation and plot ROC curves cv = StratifiedKFold(n_splits=10) ...
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How to define molecular docking score in R to plot ROC curve using ROCR package?

I trying get ROC curve and AUC value for my Molecular docking results using ROCR package in R studio. (About my data, X-axis: variable name is Title which consist the 2010 decoys name followed by ...
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Creating Plot containing ROC Curve for multiclass Keras Classifier

I am trying to create an ROC Curve for how well my CNN classified images in three classes. Below are the outputs of my model when predicting on the test data. My challenge is that I'm trying to create ...
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21 views

Calculating the AUC for the PR curve yields different results based on different approaches

Good day, I am struggling to reconcile different results from various approaches to the same calculation. Specifically, I would like to calculate the area under the curve (AUC) for the precision ...
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20 views

How can I calculate TP Rate and FP Rate?

I am new in image processing so I don't know much. I have used the feature detection algorithms like Harris, ORB, MSER, FAST to detect features in a set of images. The images were taken from drones ...
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Can you cross validate a regression model using supervised learning? [migrated]

Our team created a regression model based on a select data size/parameter and achieved a good C-statistic (area under ROC curve). We faced a few difficulties with submission for publication, so I ...
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Loop to plot multiple ROC curves in one unique plot using ROCR

I am using ROCR package to generate ROC curves. I already have a loop to generate multiple ROC plots from multiple files. I have 30 files. But I would like to combine all 30 ROC curves in one plot (...
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38 views

What's the simplest way in pandas to comparatively plot the ROC curve for different binary classifiers?

I have three binary classification models and I arrived up to the following point trying to assemble them into a final comparative ROC plot. import pandas as pd import numpy as np import sklearn....
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26 views

ROC curve from y_true and y_pred

I have not worked much with ROC. Is it possible to plot the ROC curve with just y_true = ['A','B','A','B'] and y_pred=['A','B','A','A']? Or is it necessary to have the model to be able to get the ...
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How to calculate true positive rate?

I have made model that predicts late arrival of flights.I want to see the true positive rate, given a false positive rate of 50%. I can see this in a ROC curve I plot. But I want to calculate the ...
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21 views

High AUC score and low accuracy of kNN classifier

I apply 5 different classifiers on the same data. Random Forest, logistic, 2 SVMs and kNN. I have 900 samples and 12 predictors. The trainset has 643 samples (377 0's and 266 1's). As you can see in ...
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Predictions function of ROCR package gives Error: 'predictions' contains NA

I have been following the Edx course The Analytics Edge and I am currently in the logistic regression section: Framingham Heart Study part. Here they use the predictions function of the ROCR package ...
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Plot ROC curve ANN model

I am working on my ANN model and trying to make the ROC plot of the results. My input for the ROC code is the y_test and the predictions. How the Y_test looks: [0.5875 0.48229167 0.58125 ... ...
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21 views

ROC curve for neural networks

I am trying to plot the roc curve for binary image classification problem trained using CNN model. I have used the following python codes but it resulted in error. The command predict_proba(x_test) ...
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25 views

ROC Curve in R with rpart for a decision tree

I have an issue with creating a ROC Curve for my decision tree created by the rpart package. My goal was to predict "y" the success of the bank's marketing campaign. In the end, you can get a "yes" ...
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17 views

Subscript out of bound error in predict function of LASSO model [duplicate]

I am using LASSO model for prediction and in the prediction, I get the following error when running predict function. Can someone help me to overcome this? ERROR MSG: Error in predict(lasso_model, x, ...
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How can I plot ROC curves for BERT implemented with tensorflow?

I'm using pretrained bert to train a multiclass classifier. I wanted to evaluate the performance of my model using ROC curves. I tried implementing my own one-vs-rest classifier but I'm having some ...
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How can I plot ROC curve inside Stratified K Fold (for each fold) in a multiclass classification problem in python?

I want to plot ROC curve for multiclass classification problem, also use stratified k fold. As I am very new in this sector, could anyone please suggest how can I plot the curves? The following ...
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2answers
35 views

Issues with ROC curves of logistic regression model in R

I did some analysis with my data but I found that all the ROC plots have the threshold points consolidated at the base of the graphs. Is the issue from the data itself or from the package used? ...
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1answer
36 views

How to interpret this ROC AUC curve which does not start a zero

I have a ROC curve which strangely does not start at 0 and was wondering what does this signify? This ROC curve was generated from a Naive Bayes Classifier Dataset can be downloaded from here: https:/...
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Is it possible for PR and ROC curves for multiclass case to “turn back”?

I have a problem with my ROC and PR curve. I'm using JRip algorithm from RWeka package. This is the dataset: https://www.kaggle.com/uciml/student-alcohol-consumption/data The goal is to find how does ...
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21 views

Why don't the false positive rate and true positive rate add up to one in a roc-auc curve?

The false positive rate is the x-axis spanning from 0 to 1. The true positive rate is the y-axis spanning from 0 to 1. And the graphs show data points like (.8,.8). Which if the tpr is .8 and the fpr ...
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1answer
27 views

ROC curve in ggplot calculation [r]

I am trying to create a ROC curve in ggplot I wrote function myself, however when I compare my results to results from roc_curve function from community (that I believe more) I get different results. ...
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1answer
33 views

Calculate the ROC curve from the binary classification output

I must be able to plot the ROC curve on a binary classification problem, but as a predictor a numerical or ordered vector must be inserted and since I have performed the classification my predictor is ...
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28 views

Performance across folds in random forest

I'm trying to get sensitivity, specificity, ppv, and npv (or a confusion matrix can also work) across all of my folds when I train a random forest using caret, but specifically if I change the ...
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ROC_CURVE- IndexError: too many indices for array

classification, when I input numpy arrays having test label and test probabilities, it throws the following error dataset = read_csv('C:/.../dataset/KDDREAL.csv') dataset = dataset.values X = dataset[...
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28 views

Precision-Recall curve strange shape

Anyone have similar Precision-Recall curve? Why my precision starts from 0? This is LightGBM algorithm used on 3GB data, 55 million rows times 11 columns. This is my results:
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1answer
34 views

What prediction format should be the input for ROC function

I am trying to calculate the ROC of a target variable that is binary(0,1) versus a decision tree prediction. When I set the prediction value to be binary, it gives me the following error: > roc(...
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71 views

How to get p value after ROC analysis with pRoc package?

After ROC analysis of a set of data, how to calculate p-value? With the same statistics, I saw that the p-value can be output in SPSS. The sample code is as follows: library(pROC) data(aSAH) head(...
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Filling in Area under ROC Curve with ggplot in R

I was performing logistic regression as per this guide: http://r-statistics.co/Logistic-Regression-With-R.html I plotted my ROC curve with plotROC from the "InformationValue" library but wanted to ...
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Pyspark multiple ROC curves for multi class algorithms using OvR

I was wondering if anyone could point in the right direction about producing a code that would allow me to plot multiple ROC curves for multiple classes. While I understand ROC curves are used for ...
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optime-free c statistic with R

I'm curently trying to build a prediction model to predict a risk of death. I use a backward stepwise selection to obtain the final model. The goal is to obtain a c statistic free of optimism by ...
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FROC Implementation in Python

I have one system which predicts the location of boxes in the page. In the image below, the green rectangular is the correct location (label) and the red ones are the predicted. It is clear that the ...
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how to optimise my roc_auc_score function?

I am trying to implement the roc_auc_score function and managed to reflect the same result as http://scikit-learn.org/stable/modules/generated/sklearn.metrics.roc_auc_score.html but my code is taking ...
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How to plot roc curve of Logistic Regression model if the weight of classes are different

I always got the same ROC value (0.81) no matter how the class_weight and confusion matrix change. How to plot and get the correct ROC,AUC value? from sklearn.linear_model import LogisticRegression ...
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1answer
39 views

Probabilities from cross_val_predict using RepeatedStratifiedKFold 5*10

My Goal is to calculate the AUC, Specificity, Sensitivity with 95 % CI from a 5*10 StratifiedKfold CV. I also need the Specificity and Sensitivity for a Threshold of 0.4 to maximize the Sensitivity. ...
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How to plot AUC ROC for different caret training models?

Here's a reprex library(caret) library(dplyr) set.seed(88, sample.kind = "Rounding") mtcars <- mtcars %>% mutate(am = as.factor(am)) test_index <- createDataPartition(mtcars$am, times =...
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45 views

R codes to extract ROC from Logistic regression model in 10 CV

I fitted a logistic regression model in 10-fold cv. I can use the pROC package to get the AUC but it seems the AUC is not for the 10-fold CV because the cvAUC library gave a different AUC. I suspect ...
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How to Plot the ROC Curve in rStudios from the given values?

Confusion Matrix Values Cut-off / TP / FP / TN / FN 0.1 100 50 500 450 0.2 ...
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1answer
32 views

Adding text to AUC labels using pROC

I wonder if there is a way to annotate the printed AUCs further on my ROC plots? Currently, it's not clear which line the AUCs belong to in my plot (below). I would like to add more description so ...
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1answer
42 views

AUC for Random Forest - different methods, different answers?

I'm trying to find a single method to give me AUC for a random forest model for both the training and testing sets without using MLeval. Here's a good example for ROC on training data, and here's a ...
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23 views

Finding a range of classification metrics using ROCR in R when output doesn't show all the results

Good afternoon, I am trying to develop a logistic classification with a good logistic cutoff percentage in order to predict whether an email is spam. The data comes from the Spam csv file. I am using ...
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10 views

pROC best point values different from bootstrapped medians in R

I am using the pROC package to calculate confidens intervals for the best point related values (Youdens index). The bootstrapped medians (except sensitivity) of the values are generally slightly ...
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29 views

Plot ROC curve using sklearn

I tried to create an ROC curve with sklearn, below is my code from sklearn.metrics import roc_curve fpr_keras, tpr_keras, thresholds_keras = roc_curve(validation_generator.classes, ...
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45 views

Area under ROC for the multiclass problem in scikit-learn

I working on Sentiment Analysis program. But I manage to include "neutral" in the category beside "positive" and "negative". And it makes the category multiclass. So can I make roc_auc_score work in ...
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Struggling to render visualisation in PyCharm - anyone out there who can assist?

having done a classification algo, comparing NB and RF models on their abilities to classify data, I'd also like to evaluate, e.g. applying a ROCAUC plot. But several attempts appear in vain. I may be ...
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34 views

how to plot the ROC curve in Ant colony optimization ( Basic Ant miner)

I am using a Basic Ant miner( Ant colony optimization algorithm). I want to find the F-score and ROC and Auc score. In the Ant miner code, I have found the value of false positive rate and true ...
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27 views

Eliminating Predictor Variables and Comparing Classification methods to find the best model

I am currently working with a dataset with a binary response variable with 2 levels. I have approx 32 predictor variables - some factors and some numeric. I used glm and based on the p values removed ...

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