Questions tagged [k-fold]

A technique in cross-validation where the data is partitioned into k subsets (or "folds"), where the first k-1 folds are used for training and the last fold for evaluation. The process is repeated k times, leaving out a different fold for evaluation each time.

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Is there a reason why TensorFlow/Keras don't support K-folding?

Just to be clear: I'm not asking for the "political" reasons as to why the developers at TensorFlow haven't chosen to include K-folding in, say, the .fit function. Rather, I'm asking if ...
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creating folds for cross validation based on data labels in pandas

I have a dataset from a scientific lab study, with columns specyfying an unique number for each person which attended and a time point specyfying which time was each person attending the experiment (a ...
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GridSearch + StratifiedGroupKFold for continous target

I would like to perform a GridSearchCV() using a StratifiedGroupKFold for a dataset where the target y is continuous and my groups are only 2 : Outlier Not outlier I kept having an error because my ...
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Need Guidance on Implementing Stratified K-Fold for Sequence Labeling (NER) Dataset

I'm currently working on a Named Entity Recognition (NER) task and I'm looking to implement Stratified K-Fold cross-validation for my dataset. However, I'm struggling to find specific references or ...
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ValueError: could not convert string to float: 'Curtis RIngraham Directge'

I'm in the process of Data splitting and Cross Validation. For the data splitting, I need to extract ONLY the test dataset and leave the rest of the data as is for cross validation. And I'm geeting an ...
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Problems creating a transformer for a pipeline

Right now I'm trying to create a pipeline that initially use Random Oversampling, and the second step I want to use is a custom outlier remover, but I'm having problems executing that pipeline. That ...
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Kfold validation_data in Keras model.fit using Sci-Kit Learn GridsearchCV

I'm working with Keras, using Sci-Kit Learn gridsearchcv and Kold and SciKeras wrappers. I would to pass the validation folders of Kfold to the fit method of the model, by means of the parameter ...
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Caret package cross-validation summary in R

Assume i have a K-folds list with K=10, each element contains caret classification performance output: dput(transformed_conf_matrices$Fold01) structure(c(1, 1, 1, 1, 1, 1, 1, 0.333333333333333, 0....
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StratifiedKFold results in missing labels?

I was using StratifiedKFold fold from scikit-learn and noticed missing labels. I had 7 labels initially, but after splitting using k fold cross validation, every fold had missed the labels '1', and '5'...
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BrokenProcessPool while running k-fold cross-validation

I have been trying to do k-fold cross-validation for a perception model. There was an error but thanks to someone I was able to resolve it. But then I have encountered a new error message as shown ...
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K-Fold Cross Validation is not working with perceptron? [duplicate]

I was working on a simple perceptron model and k-fold cross-validation. Then I found that the k-fold cross-validation does not work on this model. I tried different approaches from scikit-learn such ...
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Stratified k-fold cross-validation for token-level labeled NER dataset

I have a dataset used for Named Entity Recognition (NER). It is token-level labeled and consider it as list of lists: data = [[["I", "was", "in", "New", "...
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Unusual results when using Bert model for binary text classification and cross validation

I'm working on binary text classification task with several pretrained model (bert, bigbird etc) along with cross validation with KFold. The code works but the result is kinda odd. Take Bert for ...
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Cross-validation using StratifiedKFold with an exogeneous group feature

Good morning/afternoon, I would like to use cross-validation in sklearn for the prediction of a continuous variable. I have refered to the "Visualizing cross-validation behavior in scikit-learn&...
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Optimize code using RepeatedStratifiedKFold

I'm running the following code: import numpy as np import pandas as pd from sklearn.dummy import DummyClassifier from sklearn.model_selection import RepeatedStratifiedKFold, train_test_split from ...
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Manager said, "K fold validation won’t fix the test-train split issue. It is just for post-validation. Kindly read about correct splitting."

Initial 'Logistic Regression_Iris_Hyperparameter Tuning' that is done in the code below because Logistic regression on Iris Data set was giving me the Accuracy score = 1 which is wrong. import pandas ...
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K-fold cross validation in PyTorch, augmenting train and valid data separately

I want to perform k-fold CV, but in my past approach, the augmentations where leaking into the validation dataset. For this, I am using the WrapperDataset class, I found in this post: Augmenting only ...
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Gaussian Naive Bayes gives weird results

This is a basic implementation of Gaussian Bayes using sklearn. Can anyone tell me what I'm doing wrong here, my K-Fold CV results are a bit weird: import numpy as np import pandas as pd from sklearn....
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How to train a model with kfold cv

I want to train an xgboost binary classifier. My training data with labels is in a txt file that has libsvms in it. I am working with an extremely imbalanced dataset, roughly 200 of one class and 66,...
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Splitting a list of folds into training and validation sets

I have created code that splits data into folds (7 in this case). In effect, I have a list of lists of 7 folds of data. I now want to go through these and split into training and validation sets ...
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Using Kfold for cross validation

I am using the following code for 5 fold cross validation. I am getting error as kfold is not iterable. I have tried to use shuffle, writing number of folds different way but still getting error. from ...
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If not chosen all the data in the train partition, is it still k-fold cross validation?

I have a dataset of 900 images, distributed across 6 classes, with 150 images per class. To develop a classifier and assess its performance, I will utilize k-fold cross-validation. In this case, I ...
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StratifiedKFold called from multiprocessing loop gives same results for each process

I'm writing a custom GridSearchCV function by calling StratifiedKFold from my multiprocess loop StratifiedKFold is giving the same accuracy n times, n = number of processes import multiprocessing ...
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Print classification result with k fold classification with sklearn package

I have a dataset that I spilt by the holdout method using sklearn. The following is the procedure from sklearn.model_selection import train_test_split (X_train, X_test, y_train, y_test)=...
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How to identify outliers and drop rows in train splits of each fold, when using StratifiedKFold in GridSearchCV?

For predicting whether a subject has liver disease or not, I'm using StratifiedKFold CV in GridSearch for AdaBoost and RandomForest Classsifiers. For Outlier anlaysis, I've identified all feature ...
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Neural network regression: the Difference between training MAE and cross-validation results

I'm working on a regression task using a neural network implemented in Keras. I trained the model for 1000 epochs, and on the last epoch, I obtained a mean absolute error (MAE) value of 3.8 However, ...
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How to use cross_cal_score for MNIST dataset? How to fix: "ValueError: Shapes (None, 1) and (None, 10) are incompatible"

How to use cross_cal_score for MNIST dataset? Shapes between the output of my model and the y in cross_cal_score are incompatible. I would like to perform k-fold cross validation for MNIST dataset (an ...
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How to save history for k-fold cross-validation Tensorflow model?

I have a Tensorflow workflow set-up to split my training data and use k-fold cross-validation where the script iterates k-times and trains a new model on each subset of the data. However, I'm having ...
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How to use K-Fold cross validation with DenseNet121 model

I am working on classification of images breast cancer using DensetNet121 pretrained model. I split the dataset into training, testing and validation. I want to apply k-fold cross validation. I used ...
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K-fold to train a machine learning model

I have a big question today for which I can't figure out the real solution. I make a stratified K-folding to my gridsearch (to search the good hyperparameter for my ML model). Can I take the best fold ...
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k-fold Cross-validation in segmention by cnn

I wrote a code for the segmentation of iris images and got relatively good results. But I need to do it better. I want to use k-fold cross validation. I wrote a code for the segmentation of iris ...
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Why sklearn's KFold can only be enumerated once (also on using it in xgboost.cv)?

Trying to create a KFold object for my xgboost.cv, and I have import pandas as pd from sklearn.model_selection import KFold df = pd.DataFrame([[1,2,3,4,5],[6,7,8,9,10]]) KF = KFold(n_splits=2) kf = ...
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How to perform a k-fold cross validation in Google Earth Engine?

I am interested in performing a k-fold cross validation and accuracy assessment for a land cover classification in Google Earth Engine. I have compiled the code below which partitions the training ...
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Huggingface Trainer(): K-Fold Cross Validation

I am following this tutorial from TowardsDataScience for text classification using Huggingface Trainer. To get a more robust model I want to do a K-Fold Cross Validation, but I am not sure how to do ...
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TypeError: Expected sequence or array-like, got <class 'keras.engine.keras_tensor.KerasTensor'> K-Fold on Transfer Learning

I'm doing image classification and coded a model using transfer learning. Now I need to perform a K-Fold analysis on it but I get above error. Is this not possible? I found almost nothing online. I ...
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what is the correct way to apply a feature selection method to an imbalanced dataset?

I am new to data science & machine learning, so I'll write my question in detail. I have an imbalanced dataset (binary classification dataset), and I want to apply these methods by using Weka ...
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How to do K-fold cross validation without using python libraries?

I am trying to do a cross validation, however, I am only allowed to use those libraries below (as the professor demanded): import numpy as np from sklearn import svm from sklearn.datasets import ...
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Why the accuracy is high but the result for confusion matrix is bad?

I have trained a vgg16 model with a total of 1000 images for 5 classes (200 images for each class). I have used data augmentation, stratified K-fold, and dropout to train the model. The train accuracy ...
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k-fold cross validation in quanteda

I've been using the quanteda SML workflow as described in the quanteda tutorial (https://tutorials.quanteda.io/machine-learning/nb/) and found it extremely helpful to set up my own classification task....
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K-Folds cross-validator show KeyError: None of Int64Index

I try to use K-Folds cross-validator with dicision tree. I use for loop to train and test data from KFOLD like this code. df = pd.read_csv(r'C:\\Users\data.csv') # split data into X and y X = df....
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Building neural network using k-fold cross validation

I am new to deep learning, trying to implement a neural network using 4-fold cross-validation for training, testing, and validating. The topic is to classify the vehicle using an existing dataset. The ...
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10-fold cross validation for a logistic regression in google colab python

y3_data is the death variable 0 for alive and 1 for dead, x3_data are my categorical variable the are all have binary output for example Diabetes 0 for yes 1 for no and so on i have around 6 variables ...
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How to split the dataset into mutiple folds while keeping the ratio of an attribute fixed

Let's say that I have a dataset with multiple input features and one single output. For the sake of simplicity, let's say the output is binary. Either zero or one. I want to split this dataset into k ...
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"ValueError: Supported target types are: ('binary', 'multiclass'). Got 'unknown' instead." in dataset kfold split

I have encountered this error "ValueError: Supported target types are: ('binary', 'multiclass'). Got 'unknown' instead." while running this python code line 5 1 print(data....
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Trying to use a KFold split to create test and train datasets and the test_index values are different for each split after the second split

Please see code below. For some reason when i split using the kfold method, after the second split, the length of the sample changes. import pandas as pd from matplotlib import pyplot as plt import ...
Confused Teacher's user avatar
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How to properly use MeanEncoder for categorical encoding in a k fold loop

I want to use MeanEncoder from the feature-engine in my k-fold loop for encoding categorical data. It seems that after the tranform step the encoder introduces NaN values for certain columns in my ...
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Matlab's TreeBagger and k-fold cross validation

I am trying to get the 5-fold cross validation error of a model created with TreeBagger using the function crossval but I keep getting an error Error using crossval>evalFun The function 'regrTree' ...
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Does StratifiedKFold splits the same each time a for loop is called?

I use StratifiedKFold and a form of grid search for my Logistic Regression. skf = StratifiedKFold(n_splits=6, shuffle=True, random_state=SEED) I call this for loop for each combination of parameters: ...
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How to use StratifiedKFold with wandb sweeps?

I have the following piece of code - it is a train function for Logistic regression. I run sweeps to be able to compare hyperparameter tuning results. My issue is that I don't know how to incorporate ...
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Alternative to Using Repeated Stratified K Fold with Multiple Outputs?

I am exploring the number of features that would be best to use for my models. I understand that a Repeated Stratified K Fold requires 1 1D array output while I am trying to evaluate the number of ...
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