Questions tagged [auc]

The area under the ROC curve can be thought of as a single scalar representation of the ROC curve itself. The AUC of a classifier has the property of being equivalent to the probability that the classifier will rank a randomly chosen positive data point higher than a randomly chosen negative data point.

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How to calculate AUC for random forest model in sklearn?

The label in my data is a (N by 1) vector. The label values are either 0 for negative samples or 1 for positive samples (so, it's a binary classification problem). I use the .fit function of sklearn ...
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5 views

Best Generation of AUC for Neural Network with 2 Outputs representing Binary Classification

So I have a NN whose output for every element is 2 nodes. Each node corresponds to a different class output, since there are two classes there are two nodes. To get "probability" values for each node ...
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lightgbm training with higher auc higher logloss

Several days ago, I try to deal with a problem, but there is something wrong with the model. As is depicted in the picture, the data in my_hand is surely unbalance,so I use the un_balance. But I ...
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52 views

How to calculate area under the curve for multiple geom_line objects

I have a large series of time-course data with various treatments and wish to calculate the area under the curve for each plotted variable. I've managed to plot the data in ggplot after aggregating ...
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33 views

Extracting index of TP and FP samples in AUC evaluation in python?

I have a classificatin problem which I implemented Gradin Boosting algorithm on a very imbalanced data. Since the data is imbalanced, we run the below code to calculate the AUC value to evaluate the ...
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38 views

Calculating AUC of training dataset for glm function in R

I am trying to find AUC on a training data for my logistic regression model using glm I split data to train and test set, fitted a logistic regression model regression model using glm, computed ...
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Problem with multiple predictions at a single threshold in an ROC curve

I have been studying and trying to calculate ROC curves lately on some projects and noticed a quirk in my results. The more values that exist at a single threshold, or cutoff point, the less reliable ...
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22 views

Calculate auc from continuous outcome

I want to compare two neural networks by auc. The predictive value is number of leukocytes in the blood. The first neural network predicts binary outcomes(if the number of leukocytes is over or under ...
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19 views

How to calculate ROC_AUC score having 3 classes

I have a data having 3 class labels(0,1,2). I tried to make ROC curve. and did it by using pos_label parameter. fpr, tpr, thresholds = metrics.roc_curve(Ytest, y_pred_prob, pos_label = 0) By ...
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42 views

got 100% AUC SCORE in logistics regression using Cross validation

I got 100% of AUC Score when using Reression logsitique with cross validation Code ``X_train,X_test,y_train,y_test=train_test_split(X,y,test_size=0.3,random_state=0) model = LogisticRegression(...
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35 views

In Python sklearn.svm.OneClassSvm, how to calculate ROC and AUC only with predicted label and real label?

I am using Python 3.6,sklearn.svm.OneClassSVM to practice OSVM and I want to calculate ROC, AUC. I have used decision_function() to calculate ROC and AUC ,the code is below. I want to evaluate the ...
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21 views

Use XGBoost's implementation of AUC on a test set

I want to be able to use a classifier fitted with XGBoost to compute AUC (Area under the ROC curve) on a test set, but using XGBoost's implementation of AUC (which is used to compute the metric on the ...
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31 views

Performance measure for classification problem with unbalanced dataset

I have an anomaly detection problem with a big difference between healthy and anomalous data (i.e. >20.000 healthy datapoints against <30 anomalies). Currently, I use just precision, recall and f1 ...
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20 views

Problem with 'unused arguments' in auc function

I'm trying to compute area under curve value by using auc function from pROC package. However facing still the same error about 'unused arguments'. sub_2 <- c("No","No","No","No","Yes","Yes","No",...
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74 views

Why do my models keep getting exactly 0.5 AUC?

I am currently doing a project in which I need to predict eye disease in a group of images. I am using the Keras built-in applications. I am getting good results on VGG16 and VGG19, but on the ...
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37 views

F1/AUC epoch-based metrics in Keras

fellow community! I have next problem: I want to evaluate my model after each epoch using F1/AUC or other related scores in Keras. I use Tensorflow as backend. I have searched the internet, but didn'...
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35 views

How to solve these problems about inverted ROC curve, small AUC, and the cutoff?

I am constructing this ROC curve from my SVM model, but the curve came out inverted. Also, although my SVM prediction has high accuracy (~93%), my ROC curve shows that my area under the curve is just ...
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How can I make or compute ROC - AUROC with Decision Tree Classifier?

I try to make ROC with my decision tree classifier, bu then it takes probability estimates of the positive class or confidence values. How can I get either probability or confidence values? The truth ...
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42 views

How to calculate the AUC from a ROC plot without the underlying data?

I am doing a meta-analysis on the performance of certain risk assessment instruments. My goal is to pool the AUC estimates of several validity studies for a particular instrument. However, I came ...
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38 views

How to set subdivisions for the auc() function in the MESS package to prevent getting an error message?

I have time series data from several samples (wildtype (WT) vs. knockout (KO)) for calcium concentrations. In particular, I get 2 peaks for each sample and use the 2nd peak to calibrate the first peak,...
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27 views

Can I change direction of ROC?

I made a model, and I wanted to get AUC with independent test set. So I got AUC which is 0.3. In many writings, high AUC(1-0.3) can appear if i change 'direction'argument of roc function. (i ...
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ROC curve for Isolation Forest

I am trying to plot the ROC curve to evaluate the accuracy of Isolation Forest for a Breast Cancer dataset. I calculated the True Positive rate (TPR) and False Positive Rate (FPR) from the confusion ...
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46 views

Area under the ROC curve using Sklearn?

I can't figure out why the Sklearn function roc_auc_score returns 1 in the following case: y_true = [0, 0, 1, 0, 0, 0, 0, 1] y_scores = [0.18101096153259277, 0.15506085753440857, 0....
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145 views

R: AUC from pROC package

I recently came across pROC package to get AUC. In the help section, they give following example: library("pROC") data(aSAH) auc(aSAH$outcome, aSAH$s100b) In above, outcome is a factor whereas s100b ...
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sklearn classification metric auc return ValueError

I'm building a two class classification model using KNN I tried to calculate auc_score with from sklearn.metrics import auc auc(y_test, y_pred) ------------------------------------------------------...
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68 views

Does this ROC curve make sense?

This code returns and plots the true positive rate, false positive rate, true positive count, false positive count based on predicted and true values : def get_all_stats(y_true , y_pred) : def ...
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R: Confusion matrix indicates Classification method 1 is best, ROC indicates method 2

I may have confused myself doing these calculations, so I would really appreciate the feedback from a fresh set of eyes. I have a 1/0 outcome (let's just call it faulty units in accordance with a ...
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53 views

Is AUC a better metric than accuracy in case of imbalenced datasets in machine learning,If not which is the best metric?

Is auc better in handling imbalenced data. As in most of the cases if I am dealing with imbalenced data accuracy is not giving correct idea. Even though accuracy is high, model has poor perfomance. If ...
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36 views

Measuring performance of the classifiers in imbalanced datasets

I am trying to do classification over an imbalnced dataset (2000 data-points from positive class and 98880 data-points from negative class). I use Precision, Recall, F-Score and AUC to report the ...
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52 views

Convert a vector to density vector in R

I have a vector v = [..., -10, -10, -10, ..., 1, 2, 5, 6, 7, 9, ...] The geom_density plots the histogram of this vector in a smooth fashion, like a density function! How can I use the auc, area ...
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49 views

Measuring ROC and AUC

I have read plenty of articles about ROC and AUC, and I found out we need to measure TPR and FPR for different classification thresholds. Does it mean that ROC and AUC can be measured for only ...
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109 views

Interpretation of AUC NaN values in h2o cross-validation predictions summary

I have noticed that for some runs of: train=as.h2o(u) mod = h2o.glm(family= "binomial", x= c(1:15), y="dc", training_frame=train, missing_values_handling = "Skip", lambda = 0, ...
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75 views

What is the threshold in AUC (Area under curve)

Assume a binary classifier (say a random forest) rfc and I want to calculate the AUC. I struggle to understand how the threshold are being used in the calculation. I understand that you make a plot of ...
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49 views

Computing AUC in SQL

What's the best way to compute AUC in SQL? Here is what I got (assuming table T(label, confid) and label=0,1): SELECT sum(cumneg * label) * 1e0 / (sum(label) * sum(1-label)) AS auc FROM ( SELECT ...
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Use TensorFlow loss Global Objectives (recall_at_precision_loss) with Keras (not metrics)

Background I have a multi-label classification problem with 5 labels (e.g. [1 0 1 1 0]). Therefore, I want my model to improve at metrics such as fixed recall, precision-recall AUC or ROC AUC. It ...
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71 views

Classification with multiple features?

I have: 1) 2 groups of subjects (controls and cancer patients) 2) a group of features, for each of them. I want to find the feature, or which combination of which features, discriminate best ...
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174 views

Area under scatter plot in python

I have two lists of number, xs and ys: xs = [2, 5, 4] ys = [6, 7, 8] and use matplotlib library to plot them: import matplotlib.pyplot as plt plt.plot(xs, ys, 'bo') Now I want to calculate area ...
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56 views

Inverse ROC-AUC value?

I have a classification problem where I need to predict a class of (0,1) given a data. Basically I have a dataset with more than 300 features (including a target value for prediction) and more than ...
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174 views

ROC curve for LSTM model

My data set is like this: Each data point consists of 7 features(A-G) of different length. Group1 Group2............ Group 38 A B F E C A ...
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40 views

Why do I keep having class “1” as the predicted class?

I have the following Convolutional Neural Network (CNN) in Keras, but keep having the prediction on the test images as class "1", provided that the training data is balanced. Any ideas on how I can ...
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81 views

Always getting AUC = 0.5

I'm trying to use a Convolutional Neural Network (CNN) to predict the classes of the test images, as follows: for root, dirs, files in os.walk(test_directory): for file in files: img = ...
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100 views

How to draw ROC of sensitivity and specificity?

For specificity = 1 - FPR I changed the code as follows: plt.plot(1-fpr, tpr, 'b', label = 'AUC = %0.2f' % roc_auc) But the figure seems wrong. This is what I see in paper.
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24 views

high AUC scores on glm fits where the fit fails the Hosmer-Lemeshow test

Is it possible to get high AUC scores but fail the Hosmer-Lemeshow test? This is a very simple logistic fit with just three explanatory variables. I did run the Hosmer-Lemeshow test manually and the ...
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451 views

How to manually calculate AUC of the ROC?

I have a dataset that looks like this: ID Class Predicted Probabilities 1 1 0.592 2 1 0.624 3 0 0.544 4 0 0.194 5 ...
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110 views

How to get H2o deeplearning Multinomial Model accuracy?

When I go for dl_model.show(), it shows me all the information but not the accuracy of the model and as well on the performance of Validation data it also not show the AUC. when I was running this ...
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55 views

AUC of Random forest model is lower after tuning parameters using hypergrid search and CV with 10 folds

The AUC value I received without tuning the hyperparameter was higher. I have used the same training data could there be something I am missing here or some valid explanation. The data is an average ...
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134 views

Calculate AUC manually without using any Numpy or Sklearn library

I have given a set of X, Y coordinate and I need to find the AUC using trapezoidal formula, without using any numpy or sklearn library. (x0,y0) is always (0,0) (xn,yn) is always (1,1) Below diagram ...
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320 views

R - ROC Curves/AUC Specificity vs 1-Specificity

I have created a few predictive models and I am in the process of evaluating them by looking at the ROC Curve and AUC. Currently, I have Specificity on X axis, however, when I researched ROC Curves, ...
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130 views

Plotting ROC curve in python using trapezoidal rule without any library (numpy, sklearn etc.)

I faced this problem where I was asked to calculate area under curve from 2 arrays X & Y in python. I searched over internet and couldn't find any relevant solution / approach. Please guide how ...
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141 views

Individual AUC after multiple imputation using MICE

I have a question about calculating an AUC for every individual in a dataset, after imputation using MICE. I know how I can do it in a complete cases dataset. I have done it as follows: id <- c(...