Questions tagged [cross-validation]

Cross-Validation is a method of evaluating and comparing predictive systems in statistics and machine learning.

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6 views

LOOCV for robust linear discriminant analysis in R

The MASS:lda() R function for linear discriminant analysis implements both classical and robust versions of LDA. But I noticed that the argument for leave-one-out cross-validation does not work for ...
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How can i define model accuracy using accuracy, acc, in histories; getting key error?

Here is my code: I get a "key error" def summarize_diagnostics(histories): for i in range(len(histories)): # plot loss pyplot.subplot(211) pyplot.title('Cross Entropy Loss') ...
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How to do both Data Augmentation and Cross Validation at the same time in NLP?

I have read somewhere that you should not use data augmentation on your validation set, and you should only use it on your training set. My problem is this: I have a dataset which has less number of ...
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Stratified KFold Cross Validation (Keras) ValueError: Found array with dim 4. Estimator expected <= 2

I need to cross validate a keras model using stratified kfold (multiclass task that is imbalanced). Is it possible to use x_train/y_train with imagedatagenerator (flow_from_directory) in (folds = list(...
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Metric for K-fold Cross Validation for Regression models

I wanted to do Cross Validation on a regression (non-classification ) model and ended getting mean accuracies of about 0.90. however, i don't know what metric is used in the method to find out the ...
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1answer
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How to split the dataset into train/ validation / test with cvpartion?

I'm training NNs for classification. However, I only have 525 samples and approximately 300 predictor variables. I know I could try to reduce the number of variables, looking for the ones that are ...
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K-fold cross validation for mixture density networks

I am trying to apply k-fold cross validation to a mixture density model, using MSE and R^2 Score as metrics for computing the cross-validation score. (I was inspired by this article which uses this ...
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1answer
36 views

How to use .fit() with cross validation

I'm pretty new to data science and a bit confused. And just want to ensure that my approach makes sense. I create modells like: lr7 = GaussianNB().fit(X_train,y_train) and using the cross_val_predict(...
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Why is the rbf kernel much faster than linear kernel for sklearn cross validation?

I am doing a cross validation on a sample set of 250(7 dimensions). Like: 55.56,1165,92,12.66,107180,46.92,69.04 1 55.56,1165,92,12.66,107180,46.92,69.04 1 57.78,265,74,3.58,19610,45.25,69.48 1 48....
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R time series - auto.arima xreg 'dimension is zero' error [duplicate]

I'm trying out auto.arima() from the R forecast package to fit a time-series model on stock prices for a learning exercise. I have data for prices for different stocks for each month across decades, ...
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1answer
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Wrong data for cross-validation (doesn't work)

I want to determine the best regularization coefficient α in the regression problem in the process of 5-fold cross-validation. And when I run the following simple code for this, the error is thrown: ...
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R - auto.arima can xreg covariates contain missing NA values?

I'm trying out auto.arima() from the R forecast package to fit a time-series model on stock prices for a learning exercise. I have data for prices for different stocks for each month across decades, ...
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36 views

Cross-Validation Across models in h2o in R

I am planning to run glm, lasso and randomForest across different sets of predictors to see which model combination is the best. I am going to be doing v-fold cross validation. To compare the ML ...
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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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Scoring metric for multi-class cross validation

I have a DataFrame X in which there is a column called target with 10 different labels: [0,1,2,3,4,5,6,7,8,9]. I have a Machine Learning model, let's say: model=AdaBoostClassifier() I would like to ...
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shuffle parameter in sklearn.model_selection.StratifiedKFold?

I'm trying to understand what the shuffle parameter does in StratifiedKFold from sklearn.model_selection. I've read the documentation but still don't understand what shuffle=True does. Can someone ...
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GridSearchCV with condition on CrossValidation in Python

I need to fine-tune the hyperparameters of my model to find the best ones. In this process, I thought about using GridSearchCV. Nonnetheless, I need to specify a condition on the gridSearch: I need ...
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1answer
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Dataset size and the need for cross-validation (medical domain)?

I am currently envisioning a deep-learning model that classifies pulse waveforms (normal vs. pathologic). At this time, the no. of pulse dataset is about 2,000,000, and the balance of normal and ...
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1answer
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207 classes ( many with one object) , Movie

Xtrain, Xtest, ytrain, ytest = train_test_split(X, y, test_size=1/3, random_state=85) models = [ RandomForestClassifier(n_estimators=100, max_depth=5, random_state=42), LinearSVC(), ...
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1answer
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Missing values Imputation with five fold cross validation using python

I have a dataset of 165 instances and 49 features with target 1 and 0. This dataset has missing values so i am trying KNNimputer with the five fold cross validation. Here is the code: from numpy ...
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How to change Grid Search CV scoring function and display?

I am trying to tune my hyperparameters using grid search. What I have originally is this: from sklearn.model_selection import GridSearchCV param_grid = {'alpha': [0.1,1,10], 'l1_ratio':[0,0.2,0.5,0.7,...
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K-fold Cross Validation error in Tensorflow sklearn

I am using following code for semantic segmentation (image, and mask), this code was working fine with simple training and testing, but when i tried to implement k-fold cross validation. this code has ...
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1answer
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Python - cross_val_score on regression problem is not working - 'ValueError: continuous is not supported'

I am trying to use kFold on an XGBoost regression problem. A sample of the data is this: When I use the following code: df = pd.read_csv('../data/df_samp.csv').head(1000) cat_columns = ['primary_use'...
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2answers
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cross_val_score default scoring not consistent?

According to the docs, for the cross_val_score's scoring parameter: If None, the estimator’s default scorer (if available) is used. For a DecisionTreeRegressor, the default criterion is mse. So why am ...
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53 views

How to use Cross Validation to Determine a Final Model using Training, Validation, & Test Sets

I am having trouble understanding which datasets: training, validation, and test need to be used for the model selection phase vs the Final Model testing phase. I try to explain as much of it in ...
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1answer
31 views

How to find accuracy, precision, recall, f1 score for my word2vec model?

I am working on a project to find similarity among products. The model splits the excel data sheet into 90% training / 10% validation. When I check manually for validation the model works pretty well. ...
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1answer
26 views

AttributeError: 'numpy.ndarray' object has no attribute '_iter_test_masks' [closed]

I am trying to use sklearn GridSearchCV to perform K-fold cross-validation to select a bandwidth for KernelDensity estimation. When I implement grid.fit(data), I receive the error: Traceback (most ...
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1answer
11 views

Same accuracy while running cross validation on different features of a dataset in python

I am doing a 10 fold cross validation on 6 features of a csv file. the first 3 features' accuracy are 82,76 and 80 respectively. but running CV on the rest 3 features returns exactly the same value as ...
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34 views

Python error in GridSearchCV: “Only one class present in y_true. ROC AUC score is not defined in that case.”

I am using GridSearchCV to find the best parameters (number of components) of a PLS-DA model (partial least squares discriminant analysis). y_train is a np array that looks like [1111....0000], so ...
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K-Fold Cross validation in PyTorch

I have implemented a feed forward neural network in PyTorch to classify image dataset using K-fold cross val. I have some problems during training. For every fold, the accuracy and loss of the ...
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28 views

When using the five-fold cross validation to train the network, some folds perform well and some perform poorly, how can I do

I am trying to create a binary CNN classifier for a dataset (class 0 = 77 images, class 1 = 41 images), which I want to do 5-Fold cross validation. In each fold, using the validation sets to save best ...
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How to get evaluation metrics of class 0 in cross validation in sklearn

I have dataset which contains 0 and 1 as the labels. I am using randomforest classifier to do the classification as follows. clf = RandomForestClassifier(random_state = 42, class_weight="balanced&...
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25 views

Performance testing with custom summaryFunction

I'm tuning parameters with custom summaryFunction in caret. I originally thought that if I set K-fold cross validation and input data has N points, performance will be measured with N/K data points. ...
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24 views

How to do scipy.interpolate-rbf with cross validation in python

I want to use scipy.rbf to interpolate a surface(geography). Now i have a few data which is lon, lat, and depth. For rbf function have 'multiquadric', 'gaussian', 'inverse-multiquadric'... How can i ...
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34 views

Is there an example of k-fold stratified group splitting in multiple variables? [closed]

Is there an example on how to split a data set into k-folds that respects potentially multiple group affiliations? For example: Each data point in my dataset has a class label (cat, dog, bird) and two ...
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15 views

Python sklearn learning_curve produces different result than standard classification model

I've built a RandomForestClassifier that seems to perform pretty well on both my train and test data (train set accuracy = 94%, test set accuracy = 91%). X_rf_train, X_rf_test, y_train, y_test = ...
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xgb.cv only seems to use training data for xfold validation?

I am fairly new to ml in R and a trying to build a 10-fold cross validated xgboost model. I have come across the docs here: https://www.rdocumentation.org/packages/xgboost/versions/1.1.1.1/topics/xgb....
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47 views

How to best determine the accuracy of a model? Repeated train/test splits or cv?

I'm creating a classifier that takes vectorized book text as input and as output predicts whether the book is "good" or "bad". I have 40 books, 27 good and 13 bad. I split each ...
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How can I use cross validation/Leave one out in matlab algorithm

How can I use cross validation/Leave one out in following example https://in.mathworks.com/help/deeplearning/ug/train-stacked-autoencoders-for-image-classification.html
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Interpreting classification report scores [migrated]

I have been working with multi-class classification where the labels have four classes in total. I have used Random forest classifier and also performed cross validation and was able to obtain ...
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1answer
63 views

How to determine best parameters and best score for each scoring metric in GridSearchCV

I am trying to evaluate multiple scoring metrics to determine the best parameters for model performance. i.e., to say: To maximize F1, I should use these parameters. To maximize precision, I should ...
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How to cross validate degrees and df in glmnet

I'd like to cross-validate the degrees of splines as well as degrees of freedom. I wonder if including different variations df and degrees I want to examine in the formula is the right way to do it. ...
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1answer
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GridserachCV, make_scorer in python, for class specific F1

I am working with a highly imbalanced dataset (more values in class 0 and few in class 1). To analyse the performance of the classifier I am using the F1 metric. I set average = None in the F1 ...
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2answers
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How to predict with the test dataset while using cross validation?

I would like to use Cross Validation for the prediction model. I would like to keep 20% of my data as a test set, and use the rest of my data to fit my model with Cross Validation. It would like to be ...
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How to visualize the effect various max_depth parameter for data in decision tree regressor

I needed to determine the optimal max_depth for DecisionTreeRegressor, then I tried to visualize the data to show how the optimal max_depth fit my data as shown in the figure below. I used this code ...
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How to averages models using scikitlearn Cross Validation

I've always read that Cross Validation can be used to create multiple splits, then average the model to avoid overfitting, but have not been able to find an example doing that. Looking at scikitlearn, ...
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39 views

Custom estimator for GridSearchCV in sklearn

I'm trying to implement a custom estimator and optimise four parameters using GridSearchCV. I haven't fully understood this yet and am having some problems (see update below). Here is my estimator ...
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37 views

How to perform nested Cross Validation (LightGBM Regression) with Bayesian Hyperparameter optimization and TimeSeriesSplit?

I want to do predictions with a Regression model. I try to optimize my LightGBM model for the best hyperparameters while aiming for the lowest generalization RMSE score without overfitting/...
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28 views

Getting different results when using gam from mgcv package directly and when using with wrapper (train function in caret)

I am trying to identify socio-economic variables determining livestock depredation by reintroduced tigers in India. I split my data into 70-30 train-test and then ran gam(), but there was a huge ...
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1answer
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Using cross-validation to determine weights of machine learning algorithms (GridSearchCv,RidgeCV,StackingClassifier)

My question has to do with GridSearchCV, RidgeCV, and StackingClassifier/Regressor. Stacking Classifier/Regressor-AFAIK, it first trains the whole train set individually for each base estimator. Then,...

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