Questions tagged [cross-validation]

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

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Scikit Learn- Decision Tree with KFold Cross Validation

I'm relatively new to scikit learn/machine learning. I have to create a decision tree using the Titanic dataset, and it needs to use KFold cross validation with 5 folds. Here's what I have so far: cv ...
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7 views

How to partition observations with preset indices for cross-validation by sample donor?

I have a dataset with 1000 observations from 25 donors being classified into three groups. Each donor provides between roughly 20 and 100 observations. I want to split my data by donor for cross ...
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26 views

Can't implement the cross_validation in python

I am a beginner in Python Machine Learning,I was practicing stock prediction program in python but according to tutorial "from sklearn import cross_validation" is used.But in my compiler Intellij IDEA ...
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1answer
28 views

How can I use k-fold cross-validation in scikit-learn to get precision-recall per fold?

Let's say I have this scenario: from sklearn import model_selection from sklearn.linear_model import LogisticRegression kfold = model_selection.KFold(n_splits=5, random_state=7) acc_per_fold = ...
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14 views

Obtain AUC and probabilities from nested cross-validation with feature selection

I would like to build a predictive model for a binary classification problem and do the following: Within a nested cross validation: Perform feature selection (using SelectFromModel from a Random ...
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21 views

crossvalidation weighted sum

I'm working on "weighted sum models" of the form w1*a + w2*b + w3*c. I have several objects with parameters a,b,c and I know for example that object 1 with a = 50, b = 100 and c = 150 belongs to class ...
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25 views

K-fold cross validation with condition

I have a classifier that takes a person's image as input. I test the accuracy of this classifier using 10-fold cross-validation like so: cv = ShuffleSplit(n_splits=10, test_size=0.1, random_state=0) ...
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1answer
47 views

Creating jack-knife data partitions over a selected range of data to be fed into caret::train function for cross-validation

I want to create jack-knife data partitions for the data frame below, with the partitions to be used in caret::train (like the caret::groupKFold() produces). However, the catch is that I want to ...
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22 views

added Standardscaler but receive errors in Cross Validation and the correlation matrix

This is the code I built to apply a multiple linear regression. I added standard scaler to fix the Y intercept p-value which was not significant but the problem that the results of CV RMSE in the end ...
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26 views

How come cross-validation is not picking up on an overfitted model?

I'm running RandomForestClassifier() without parameter tuning, on a dataset that has a balanced number of examples per class (2 classes overall), and I'm using cross_val_score with StratifiedKFold(...
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1answer
25 views

R caret package, Error: Please make sure `y` is a factor or numeric value

I'm trying to use the caret package to cross validate a model that I made. It depends on 3 variables, but the data set I used has many more than that. To reproduce a more precise example, I made ...
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22 views

Is there a way to do early-stopping and cross validation in CNTK?

As asked in the title, i would like to know if it is possible to make a model early-stop the epochs during training when the error is reduced enough, so i can avoid overfitting and guessing the right ...
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144 views

Early Stopping with a Cross-Validated Metric in Keras

Is there a way in Keras to cross-validate the early stopping metric being monitored EarlyStopping(monitor = 'val_acc', patience = 5)? Before allowing training to proceed to the next epoch, could the ...
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1answer
23 views

Kfold cross validation in sklearn gives different folds each time

I want to implement KFold cross validation on my model. Since I want to share my results with others, I want to have fixed results each time. I am using an xgboost model as my classification model. ...
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16 views

Sklearn decision_funtion (threshold) choice

According to sklearn documentation one can change the decision_function method in some models to improve results. For instance, if you want a higher recall in a binary classification problem you could ...
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35 views

How to do cross validation of linear model with transformed variable in R

I'm trying to do cross validation of a linear model with transformed independent variable, but most CV functions(DAAG::cvLm(), cvTools::repCV(), etc) cannot process because it cannot find x3 or x4 in ...
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1answer
36 views

Reproducible splitting of data into training and testing in R

A common way for sampling/splitting data in R is using sample, e.g., on row numbers. For example: require(data.table) set.seed(1) population <- as.character(1e5:(1e6-1)) # some made up ID names ...
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20 views

CrossValidation/TrainValidationSplit with multiple pipelines in PySpark

I'm trying to evaluate multiple pipelines in PySpark. I'm able to do it in a separate CV/TVS for each one, but I would like to do it in just one so it gives me the best model directly and I can't find ...
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49 views

Error in cross validation with factor value

I have this code: # Define training control set.seed(123) train.control <- trainControl(method = "cv", number = 10) # Train the model model <- train(is_nocnv ~., data = mydata, method = "lm", ...
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23 views

Trying to use cross validation to identify the best regression model out of models of different sizes

I could really use some help. I am trying to use crossvalidation technique to find the best model. I used the reference code from this website. https://github.com/asadoughi/stat-learning/blob/...
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1answer
35 views

Multinomial Naive Bayes + neg_log_loss + Machine Learning + Python : How to use neg_log_loss with cross_val_score()

I am finding the optimal value of hyperparameter alpha for my Multinpmial Naive Bayes model which uses cross validation and neg_log_loss as metric. I wrote thie code: alphas = list(range(1, 500)) #...
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3answers
47 views

Random forest sklearn

I am confused if explicit cross validation is necessary for Random Forest? In random forest we have Out of Bag samples and this can be used for computing test accuracy. Is explicit cross validation ...
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0answers
11 views

Conceptual problem in CVPARTITION understanding

I have split my entire dataset X and the label set Y into Xtrain_val and Xtest. The corresponding label sets are denoted by Ytrain_val and Ytest respectively. I should again further split Xtrain_val ...
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1answer
74 views

Python + Scikit-learn:How to plot the curves of training score and validation score against the additive smoothing parameter alpha

I am using k-fold cross validation to compute the optimal value of Additive Smoothing parameter alpha. Also, I want to plot the curves of training accuracy and validation accuracy against the values ...
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1answer
41 views

Machine Learning + Python : Drawing Validation curve

I want to draw a validation curve for my Naive Bayes estimator like this: http://scikit-learn.org/stable/auto_examples/model_selection/plot_validation_curve.html I failed to understand what training ...
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22 views

Predictive accuracy (AIC, BIC, MSE, MSPE) by cross-validation in R

I am trying to use Cross-validation to evaluate my model (n=45). The cross-validation in R Caret package provides RMSE, R-squared and MAE. How to calculate other measures such as AIC, BIC, MSE, ...
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24 views

Cross validation for mixed logistic regression (glmer) in R?

I'm struggling to find a method to use 10-fold cross validation (or other validation methods) for a mixed effects logistic regression, using the glmer function in R. The model is as follows, with the ...
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20 views

Use of the Tune Model Hyperparameters module when constructing stacking ensembles in AML Studio

When using stacking in AML Studio experiments, it is usual to find published experiments in which the base models are constructed in this way: The 1st Split Data module holds out a test dataset for ...
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38 views

How to draw a ROC curve on leave-one-out cross validation

By python 3 on jupyter, I create predictive model with random forest. As a cross validation, I apply leave-one-out method to the model. When leave-one-out method was used, is it be impossible to draw ...
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1answer
36 views

post-process cross-validated prediction before scoring

I have a regression problem, where I am cross-validating the results and evaluating the performance. I know beforehand that the ground truth cannot be smaller than zero. Therefore, I would like to ...
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Time Series Cross Cross Validation using grid/randomized search

I need a help. I am trying to perform time series cross validation using grid search, for a Multinomial Naive Bayes classification. Below is the code I have used to do it. alphas = np.logspace(-5, 4, ...
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Tuning regularization hyperparameter or number of hidden nodes in CNN (Matlab)

When I used Support Vector Machine, I applied cross-validation approach to tune the hyperparameter (box-constraint, C) value. I thought that in CNN, in options for the ValidationData name-value pair ...
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The training set does not contain points from all groups when using Stratify option to split data in Matlab

My dataset is skewed and I have learned that using the stratify option, we can guarantee the dataset that are split to contain samples from each class. Please correct me if wrong. I am not very keen ...
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1answer
82 views

Why K-fold cross validation will built K+1 models?

I have read the general step for K-fold cross validation under https://machinelearningmastery.com/k-fold-cross-validation/ It describe the general procedure is as follows: Shuffle the dataset ...
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1answer
22 views

Does using the same trainControl object for cross-validation when training multiple models with caret allow for accurate model comparison?

I have been delving into the R package caret recently, and have a question about reproducibility and comparison of models during training that I haven't quite been able to pin down. My intention is ...
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35 views

Removing Outliers Linear Regresion with Python

this is the code I created for a simple linear regression. This is the code and I have several questions which I am looking for answers. how to detect and delete outliers from X and Y maybe an example ...
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32 views

Adjusting test size of K-Fold Cross Validation

I am looking to use k-fold cross validation on a random forest regressor in Python. I understand that k refers to the number of folds in the data-set, but how can I adjust the test-set size? Say I ...
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1answer
95 views

GridSeachCV with separate training & validation sets erroneously takes also into account the training results for finally choosing the best model

I have a dataset of 3500 observations x 70 features which is my training set and I also have a dataset of 600 observations x 70 features which is my validation set. The target is to classify ...
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2answers
12 views

Why ROC's plotting function perfcurve of MATLAB is yielding 3 ROC curves in case of cross validation?

I plotted 5 fold cross-validation data as a cell array to perfcurve function with positive class=1. Then it generated 3 curves as you can see in the diagram. I was expecting only one curve. [X,Y,T,...
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15 views

testing a classification algorithm

I'm implementing a classifier to distinguish malware from trusted files. to test the algorithm I was suggested to calculate a cross-validation of k-fold and to produce a confusion matrix. if k = 10, ...
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1answer
34 views

Variant of K-fold CV where size(test_set) > N/K

I have a binary classification problem that has a huge imbalance in the label 0 and 1 (minority). Because the testing set has too few rows with label 1, I make the train-test at least 70-30 or 60-40, ...
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2answers
50 views

RandomForest, how to choose the optimal n_estimator parameter

I want to train my model and choose the optimal number of trees. codes are here from sklearn.ensemble import RandomForestClassifier tree_dep = [3,5,6] tree_n = [2,5,7] avg_rf_f1 = [] search = [] ...
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0answers
36 views

Need assistance fixing r code for cross-validation

I need help fixing this code. I'm trying to conduct cross-validation. The error generated is: 'newdata' had 19 rows but variables found have 77 rows Based on previous questions, the issue seems ...
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1answer
41 views

Perform cross-validation on training or validation partition to tune parameters

I have a large dataset which is partitioned into three chuncks (train-validate-test). And I want to perform cross-validation (CV) , since I have a large dataset it will take too long to perform CV on ...
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13 views

Is there a way to output all the cross validation models results in spark scala

I am using cross validation for model and parameter selection in Spark. because of application need, I am not only need to know the best model, but the results for all models. When I worked with ...
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32 views

Instead of k-fold cross validation, why not just randomize the random_state?

Before I knew about k-fold cross validation, I would just set a random_state like so: X_train, X_test, y_train, y_test = train_test_split(X, y, random_state=np.random.randint(1000), ...
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33 views

K-fold & variance-bias trade-off: Variance = 0

When doing k-fold cross validation, when splitting the full dataset for every fold, it seems to me that the variance term in the Bias-Variance trade-off in equation (7.9) in Hastie et al's Elements of ...
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1answer
27 views

How does Caret generate an OLS model with K-fold cross validation?

Let's say I have some generic dataset for which an OLS regression is the best choice. So, I generate a model with some first-order terms and decide to use Caret in R for my regression coefficient ...
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1answer
38 views

The correct way to tune the C parameter of SVM

I have a dataset which has three splits (training-validation-testing). What is the best way to tune the C parameter? Do i train on the training and evaluate on the validation partition? Is it correct ...
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1answer
28 views

R - cross validation error handling— “dims product do not match the length of object”

I have been working through some examples of statistical learning models via the ISLR package. The code is available here (https://rpubs.com/davoodastaraky/subset) so anyone can see. I also put it ...