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Questions tagged [cross-validation]

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

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Reference paper on applying k-fold validation in deep learning

I've been searching reference papers for my research on applying k-fold validation in deep learning, I Couldnt find it. Can somebody link me one?
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Different result using fixest and multiple fixed effects

First of all, I have to apologize if my headline is misleading. I am not sure how to put it appropriately for my question. I am currently working on the fixed-effect model. My data looks like the ...
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good training and testing scores but horrible cross validation score

why do I get such a huge difference in the cv score vs training and testing?
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How to cross validate different filling methods for missing values?

I have a dataset with missing values which I like to fill. I would like to this with different methods which I then would like to compare to see which one shows the best performance. I am new to this ...
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How to select the best hyperparameters based on the accuracy standard deviation generated by repeated k-fold cross validation using caret::train()

We have trained a polynomial kernal SVM classifier using repeated k-fold cross validation. We would like to use the hyperparameters that generate the lowest Accuracy standard deviation rather than ...
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How to pick the best model after Nested CV

I am learning the proper method for training and model selection using Nested CV approach. I'm using (a) GridSearchCV and (b) Cross-Validation. Using the hyperparameters from the inner cv loop, I'm ...
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knn imputation for mixed data in glmnet during cross-validation without information leakage

I would like to use glmnet and impute missing data with knn imputation method which is based on the Gower Distance for numerical, categorical, ordered and semi-continuous variables (not possible with ...
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Calculate p-value from Pearson's R in Python

Whereas I have code that calculates Pearson's correlation coefficient, I have not yet found a way to easily compute the associated p-value. Is there a solution different from Scipy's pearsonr function?...
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How to do a Kfold cross validation by taking the samples into account

I have a numeric matrix to classify (45 rows, 102 columns), the first column represents the classes (0 and 1), the second represents the samples, the other columns are the measured values. Here is a ...
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how to use the train_x and train_y from sklearn k-fold split generator

I am using the sklearn k-fold generator to split some data 10 times. When I run the code below I expect train_x,train_y,test_x,test_y to contain all 10 splits however only the last split seems to be ...
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Log-Likelihood for Random Forest models

I'm trying to compare multiple species distribution modeling approaches via k-fold cross-validation. Currently I'm calculating the RSME and AUC to compare model-performance. A friend suggested to ...
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Cross-Validating Model & Splitting Training/test Data with Stratified Sampling

I am looking a congress bills passing and have a stratified sampling question. My data set has 701 bills. 4 bills passed and 697 bills did not. Is there an efficient way to take a model (for ex. Log ...
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How to speed up XGBoost Classification for time series

I'm using the XGBoost Classifier for time series prediction. I am also doing out-of-time cross-validation (for example, training on 10 weeks and predicting/testing on the 11th week). This makes using ...
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Python : GridSearchCV taking too long to finish running

I'm attempting to do a grid search to optimize my model but it's taking far too long to execute. My total dataset is only about 15,000 observations with about 30-40 variables. I was successfully able ...
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Hyperparameter tuning job In Sagemaker with cross valdiation

I managed to get something along those lines to work. This is great but to be more on the save side (i.e. not rely too much on the train validation split) one should really use cross validation. I am ...
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Train_test_split gridsearch and cross validation

I'm trying to do sentiment analysis on text docoments but I got lost in the steps. So my goal is to: Train SVM, KNN and Naive Bayes algorithms Use gridsearch to find best parameters Evaluate models ...
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predict() error in cross-validation sommer v 4.1.6

I got this error when I do cross-validation, called "Error in [.data.frame(object$dataOriginal, , x) : undefined columns selected". However, the column I choose is really defined. I think I ...
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<RandomizedSearchCV> Pass the estimator obtained after fitting to scoring function as a parameter

Suppose I want to do a RandomizedSearchCV with custom both estimator and scorer : RandomizedSearchCV(cxCustomLogReg(), search_space, n_iter=50, scoring=scorer) May it be possible, ...
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Is there a way to create automatically Angular reactive form using just a json schema?

I am creating Angular application including a reactive form. I also have a json schema file that should be addressed by that form, including both properties as form fields, and rules as form ...
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TypeError: RandomForest.<locals>.predict() takes 1 positional argument but 2 were given

I'm using the git repository https://github.com/aimacode/aima-python to do a simple random forest classification final project. The functions that give the error are def cross_validation(learner, ...
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Cross-validation taking too long with model trained with naive bayes

I trained a model using Naive Bayes and now I am trying to make a cross-validation but it takes too long and at some point it even crashes my computer completely. My dataframe has about 30 000 lines ...
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Big difference in CV accuracy and overall training accuracy

#some imports ....... ....... acctrain=[] acctest=[] roctrain=[] roctest=[] specifitylist=[] specifity1list=[] sensitivitylist=[] sensitivity1list=[] danesas=pd.read_csv('danesasowe.csv',delimiter=';...
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Sklearn custom loss function

I've a binary classification problem that I need to solve minimizing an asymmetric prediction error: I pay 0 for correct prediction I pay for false positive I pay 10 for false negative What's the ...
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how to perform cross validation for combined classification and regression output

losses = {"attributes": custom_mse, "malignancy": 'sparse_categorical_crossentropy'} lossWeights = {"attributes": 1.0, classifier = KerasClassifier(build_fn= ...
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R: Efficient implementation of grouped cross-fit regressions in data.table

Here is my problem: rand_n_list2 <- function(n, n_groups){ rem <- n %% n_groups mult <- n %/% n_groups tmp <- sample(rep(seq(1, n_groups), mult), mult*n_groups, replace = FALSE) ...
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Does the caret package for R properly implement repeated CV when passed a multifold object to trainControl's index option?

I'm hoping the answer to this question is a quick "yes" or "no" but I cannot find it explicitly in the caret documentation or elsewhere online. I want to perform repeated CV, but ...
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How to perform cross validation stratifying by a feature while also performing feature selection?

Let's say I have the following data (it doesn't make sense in terms of classification, it's just to illustrate the case): import pandas as pd import numpy as np size = 1000 data = pd.DataFrame() data['...
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Caret Package: Access performance results from repeated-cv

I am using the caret package in R to train a few supervised predictive models and I would like to assess their stability across repeated-CV, i.e. I want to get the performance results for each ...
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how to use an explicit validation set with predefined split fold?

I have explicit train, test and validation sets as 2d arrays: X_train.shape (1400, 38785) X_val.shape (200, 38785) X_test.shape (400, 38785) I am tuning the alpha parameter and need advice about how ...
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How to use nls with caret to do cross-validation

I have fit several models using nls to the same data and am trying to figure out how to use caret to do K-fold cross-validation (eg., here). This SO question asked a general question about using nls ...
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How to Get the Best Parameters of Cross_val_score?

How can I get the best parameters? wrapped = KerasClassifier(build_fn=createmodel_batch, epochs=100, batch_size=5, verbose=0) folds = StratifiedKFold(n_splits=3, shuffle=True, random_state=15) results ...
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How to do repeatedKfold CV the right way?

I am working on a binary classification using random forest with a dataset size of 977 records and 6 columns. class ratio is 77:23 (imbalanced dataset) Since, my dataset is small, I learnt that it is ...
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CV=integer vs predefined splits in GridSearchCV

What's the difference between setting CV=some integer vs cv=PredefinedSplit(test_fold=your_test_fold)? Is there any advantage of one over the other? Does CV=some integer sets the splits randomly?
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How do I return the result of each cross validation prediction

I have a task that requires me to analyse a model but I need the output predictions for each cross validation step- and the data that the cross validation used in that step. Here is my code: results= ...
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UserWarning: One or more of the test scores are non-finite

I'm a relatively new user to python and have question about warning. I have dataframe that has shape of (96350, 156). With that I am building my decison tree model and using grid search cross ...
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Implement Hyperparameter Tuning in SVM

I would like to implement a function for SVM with the requirement: Consider the binary classification that consists of distinguishing class 6 from the rest of the data points. Use SVMs combined with ...
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Why do I need to fit a GridSearchCV object to the data before I can get the best parameters and model?

My question is similar to the one here, but the answer there does not explain why we must fit to the data before getting the best paramters, it just states that we must. In my understanding, ...
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How to use cross validation with sm.GLM (sm = statsmodels.api)?

How to use cross validation with sm.GLM (sm = statsmodels.api)? I am trying to fill the "model" parameter from the cross_val_score. However, since I need to use the sm.GLM I don't know how ...
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Why such different answers for the xgboost scikit-learn interface?

I am using xgboost for the first time and trying the two different interfaces. First I get the data: import xgboost as xgb import dlib import pandas as pd import numpy as np from sklearn....
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Logistic Threshold class Cross Validation

I have built a custom class to cross validate the threshold to predict a binary target value with a Logistic Regression. The code is as follows: from sklearn.linear_model import LogisticRegression ...
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Could anyone explain why do these two snippets of code produce different results? (Cross Validation)

I am currently undergoing a machine learning project to predict default. Decided to apply logistic regression and managed to get pretty decent results, but I decided to apply cross-validation and then ...
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How can do crossvalidation for a AttributeSelectedClassifier model?

I did a model like that: base = Classifier(classname="weka.classifiers.trees.ADTree", options=["-B", "10", "-E", "-3", "-S&...
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Split data in 5 subsets with choose(k,n) & NOT with sample()

I want to split train and test but with choose() function not with sample() in R. I have 58 rows and 28 columns on my dataset (a csv file ) and I want to do a 10-fold or 5-fold CV on this dataset. ...
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xgboost cross validation - accuracy metrics

I'm doing cross validation on xgboost. Here is my code. from xgboost import cv xgb_cv = cv(dtrain=data_dmatrix, params=params, nfold=10, num_boost_round=50, ...
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Cross-validating KNN using K-fold

When using KNN to predict price how do you use K-fold to cross-validate? My current code to predict is library("tidyverse") library("FNN") library("forecast") library(&...
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Random Forest further improvement [closed]

Following Jason Brownlee's tutorials, I developed my own Random forest classifier code. I paste it below, I would like to know what further improvements can I do to improve the accuracy to my code ...
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"Wrong model type for classification" while using Caret library in R (model with qualitative variable)

I am trying to use k-fold validation to find the better k for kNN. But while I run the following code, it appeared error of "Wrong model type for classification". I had referred to the ...
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1 answer
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How do I get the training accuracies for each fold in k-fold cross validation in R?

I would like to evaluate whether the logistic regression model I created is overfit. I'd like to compare the accuracies of each training fold to the test fold, but I don't know how to view these in R. ...
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Why does training score start from 1 when using sklearn's learning curve plotting?

I have a question regarding sklearn's learning curve module. I have been trying to use it to plot the learning curve for two different models and but for some reason which I cannot understand, ...
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Set number of folds in glmnet in python?

I am using glment python package to fit an Elastic Net model. I want to set my preferred number of folds for cross-validation that in python I'd achieve as: regr = ElasticNetCV(cv=5). Yet glmnet does ...
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