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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One AUC for each folder or Average AUC of all folders in Cross Validation?

Suppose I am running a leave-one-folder-out cross-validation (binary). The sample size of each folder is unbalanced. E.g., folder 1: X1 = [x11, x12, x13], y1 = [0,1,1] folder 2: X2 = [x21, x22], y2 = ...
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How to calculate a partial area under the curve (AUC)?

I want to calculate a AUC from a data sample with values from day 1 to day 15. My data looks like this: AUC <- structure(list(day = c(1L, 2L, 3L, 4L, 5L, 6L, 7L, 14L, 15L,16L), Leukos = structure(c(...
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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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Is there a way to calculate the number of peaks above a threshold for multiple dependent variables in R?

I apologize if this question has been asked already. I'm a beginner to R and do not have an advanced stats background. I am trying to determine the number of peaks (maximums) for my data in R. For ...
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AUC based on Rehimann Sum in R

I am dealing with a dataset with dates and various response values at different time intervals as shown below Id Date Response 1 2008-03-12 4.88 1 2009-06-06 5.39 2 2015-...
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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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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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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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How to calculate area under the curve (AUC) in several data series?

I have the data of blood parameters from around 400 patients and from each patient I collected the parameter on 30 consecutive days. So each patient has around 30 values. It looks like this: So from ...
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Interpreting AUC, accuracy and f1-score on the unbalanced dataset

I am trying to understand how AUC is a better metric than classification accuracy in the case when the dataset is unbalanced. Suppose a dataset is containing 1000 examples of 3 classes as follows: a =...
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How to plot AUC for best hyper parameters through grid search

I am using below code to get best hyper parameter which will give the maximum AUC value through grid search. but i am not able to plot it. model = KNeighborsClassifier() #Hyper Parameters Set ...
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Tensorflow 2 Metrics produce wrong results with 2 GPUs

I took this piece of code from tensorflow documentation about distributed training with custom loop https://www.tensorflow.org/tutorials/distribute/custom_training and I just fixed it to work with the ...
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How to calculate f1 score using multiprocessing in python?

I've got an array of paired binary labels: y_true, y_pred. My array contains ~50 million elements, and I wish to evaluate success using f1 score preferably, or AUC. However, calculating f1 using ...
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35 views

Multi class AUC ROC score in python

I would like to calculate AUC ROC score for three classes 0, 1, 2. After I get the prediction probability using predict_proda, I use roc_auc_score(y_test_over, y_prob, multi_class="ovo", ...
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How to replicate GridSearchCV result?

Using GridSearchCV, I try to maximize AUC for a LogisticRegression Classifier clf_log = LogisticRegression(C=1, random_state=0).fit(X_train, y_train) from sklearn.model_selection import GridSearchCV ...
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37 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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LSTM - bad results of AUC

I have trouble understanding why my LSTM has a high accuracy (80%) but a bad AUC (50%). I thought the problem was the imbalanced classes, but it isn't. I have tried GridSearchCV with diferent ...
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35 views

AUC of Propensity Score Matching in R

Here is how I do propensity score matching in R: m.out <- matchit(treat ~ x1+x2, data = Newdata, method = "subclass", subclass=6) dta_m <- match.data(m.out) propensity <- glm.nb(y ~ treat+x1+...
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strange behavior of roc_auc_score, 'roc_auc', 'auc'

While optimizing parameters for xgboost I encountered a problem with the roc_auc_score metric. I get significantly different results during cross-validation compared to the results on the training ...
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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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33 views

How get the best threshold for classification using H2o Python

I have a classification model using H2o in Python for which the AUC = 71% But the accuracy based on confusion Matrix is only 61%. I Understand that confusion matrix is based on .5 threshold How do ...
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H2o Model Classification - Confusion Matrix Vs AUC

I am running a Classification Model in Python using H2o When I checked the model Performance on test dataset I got ModelMetricsBinomial: gbm ** Reported on test data. ** MSE: 0.2166007413446628 ...
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keras load_model cannot recognize new AUC metric tf.keras.metrics.AUC()

I am using new tensorflow version and it has auc metric defined as tf.keras.metrics.AUC(). The model compiles and runs fine but when I load the model it cannot recognize auc metric function. I have ...
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How to combine the results of different metrics and generate a score out of them?

I have the following dataframe that shows the performance of my 6 models using different metrics. I want to generate a score out of the result of all the metrics, and then detect the best model. I ...
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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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38 views

Load models in Keras

I use this code to load a model in Keras using a customer metric (AUC) but this does not work. Could you help me to solve that problem ? train_datagen = ImageDataGenerator(rescale=1/255) val_datagen ...
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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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22 views

AUC for unbalanced classes

I am training a neural network for a binary classification problem using Keras, and the metric I'm interested in is the AUC score. Because my data is unbalanced I cannot set small values for the batch ...
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2answers
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Calculation of AUC 95 % CI from Cross Validation (Python, sklearn)

I am looking for the right way to calculate the AUC 95 % CI from my 5-fold CV. n = 81 of my Training Dataset So, if I apply 5-fold CV that equals a mean of approx . n = 16 in every fold in the test ...
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Plotting AUC score for multiple model for multiclass classification in Python

I am doing a multiclass classification problem. There are a total of 46 unique classes in my dataset. I have computed the AUC sore for all the class and plot it but I want to plot my AUC score for ...
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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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Area under ROC in R

Is there a way of calculating or estimating the area under the curve as an external metric, using base R, from confusion matrices alone? If not, how would I do it, given the clustering object? e.g. ...
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34 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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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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How to create a dynamic column and column name in dataframe for every iteration of a row in for loop

def compute_AOC(df): TPR = [] FPR = [] threshold = int df.sort_values(by='proba', ascending=False ) for every row create a new dynamically column based on values in proba column ...
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Is standard error the same as standard deviation in the context of AUC?

I am trying to make sense of standard deviation and standard error in the context of AUC. I understand that SD is a measure of dispersion (square root of variance) and SE a measure of the uncertainty ...
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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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How to calculate auc_score and f_score?

I want to calculate and print auc_score, f_score and others metrics using scickit learn in python? I am doing NLP, in the beginning my set are list of words, i vectorize them to do some prediction. My ...
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How to match CatBoost GPU metrics to CPU metrics?

I have been using CatBoost on CPU and got good results, but wanted to speed it up by using GPU. However, all metrics from GPU are worse than those from CPU. I did search around and found a suggestion ...
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166 views

How to calculate TPR and FPR in Python without using sklearn?

Initialize the list of lists: data = [[1.0, 0.635165,0.0], [1.0, 0.766586,1.0], [1.0, 0.724564,1.0], [1.0, 0.766586,1.0],[1.0, 0.889199,1.0],[1.0, 0.966586,1.0], [1.0, 0.535165,0.0],[...
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How can I implement a R code for AUC in genetic algorithm

I am doing research on applying a genetic algorithm to binary logistic regression. I have a few questions to be clarified. Can you please help me? Can I use AIC or BIC as the fitness function in the ...
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Develop AUC as the fitness function in logistic regression model

I tried a R code to apply Genetic Algoritham in Logistic Regression. Fitness function is to maximize AUC. But it gives this error Error in UseMethod("predict") : no applicable method for '...
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ROC Curve Ranger

I am trying to calculate ROC Curve and AUC using ranger for a binomial classification problem (0 and 1), where the response variable is defined as BiClass. Suppose I cast a data frame to Train_Set ...
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53 views

LightGBM : validation AUC score during model fit differs from manual testing AUC score for same test set

I have a LightGBM Classifier with following parameters: lgbmodel_2_wt = LGBMClassifier(boosting_type='gbdt', num_leaves= 105, max_depth= 11, ...
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31 views

Why roc_auc produces weird results in sklearn?

I have a binary classification problem where I use the following code to get my weighted avarege precision, weighted avarege recall, weighted avarege f-measure and roc_auc. df = pd.read_csv(...
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64 views

In Classification, what is the difference between the test accuracy and the AUC score?

I am working on a classification-based project, and I am evaluating different ML models based on their training accuracy, testing accuracy, confusion matrix, and the AUC score. I am now stuck in ...
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43 views

Calculating p-values for AUC; multiclass predictions

I use python, mainly make use of functions from the sklearn package. I have a developed a few models that predict outcomes (either binary, or multiclass), in 5x5 nested crossvalidation, which gives ...
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28 views

Invalid argument: ValueError: Input contains NaN, infinity or a value too large for dtype('float32')

I am trying to train an LSTM model on my dataset using AUC as metric. I am defining this metric as a function that makes use of SKLearn's rocc_auc_score function. Here is my code for doing so: from ...
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54 views

Cannot calculate roc_auc_score, only one class present in y_true

I want to print sklearn roc_auc_score and I have this error : ValueError: Only one class present in y_true. ROC AUC score is not defined in that case. I use random forest to predict topics in text. ...

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