Questions tagged [cross-validation]

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

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Python do a cross validation to find auc scores (train and test) WITHOUT using Scikit Learn [on hold]

I want to do a 5 fold cv to find the AUC score ,without using scikit learn because I have my own predict_proba() function.
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1answer
7 views

How to make sure that StratifiedShuffleSplit is preserving the imbalanced class ratio?

I have an imbalanced dataset and as I am fine-tuning my model I need to make sure that StratifiedShuffleSplit is in fact picking from all classes with the inherent class ratio. How can I test this?
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22 views

Topic modeling - Split data (Cross validation)

Why splitting data randomly in topic modeling isn't a good approach? Suppose the MNIST typical example: if I let the train with the numbers from 0 to 8, and the number 9 in the test set (assume no ...
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1answer
21 views

Use KFold split to fit model return “Not in index”

I have a dataframe like this: Col1 Col2 10 1 6 11 3 8 12 9 4 13 7 2 14 4 3 15 2 9 16 6 7 17 8 ...
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1answer
22 views

How to use Cross Validation for Multioutput Regressor in Sci-kit?

first my setup: X is my feature table. It has 150 000 features and 96 samples. So 150 000 columns and 96 rows. y is my target table. It has 4 labels and of course 96 samples. So 4x96 (columns x rows)....
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1answer
28 views

sklearn use RandomizedSearchCV with custom metrics and catch Exceptions

I am using the RandomizedSearchCV function in sklearn with a Random Forest Classifier. To see different metrics i am using a custom scoring from sklearn.metrics import make_scorer, roc_auc_score, ...
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0answers
22 views

how to use StratifiedKFold?

I have problem in using StratifiedKFold. I want to do cross validation. X and Y are numpy.ndarray, when I run the code below I get the following error. I know that what I get as train_index and ...
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1answer
24 views

tree cross validation of tree package in r

Does anyone knows how the cv.tree function of tree package in r, works? The default is set to 10 folds, but the results show 8 tree models instead of 10: Moreover if i set 5 folds the results show 8 ...
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1answer
25 views

Timeseries Crossvalidation in R: using tsCV() with tslm()-Multiple model

As a reaction on :Timeseries Crossvalidation in R: using tsCV() with tslm()-Models I tried to use it with multiple predictor variables, i made a matrix of them, but it is not working. fcTslm <-...
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7 views

Why is tsCV appropriate to use with model selection algorithms such as ets/auto.arima?

In Rob Hyndman's book, Rob describes using tsCV to evaluate the forecast accuracy of models returned by auto.arima and ets. This is more of a conceptual question, but I looked into the underlying ...
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11 views

Ensemble learning timeseries: Standard K-fold cross-validation ok for final step? [migrated]

I have used 5 different classification models to predict future price direction (up or down) using caret's timeslice for each model type. I now want to put all the models predicted probabilities ...
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25 views

Avoiding overfitting with H2OGradientBoostingEstimator

It appears that the difference between cross-validation and training AUC ROC with H2OGradientBoostingEstimator remains high despite my best attempts using min_split_improvement. Using the same data ...
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2answers
27 views

sklearn SyntaxError: can't assign to operator

I am trying to split my dataset using sklearn. However, I am getting a syntax error. import numpy as np import pandas as pd from sklearn import cross_validation X_train, X-test, y_train, y_test=...
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1answer
20 views

Cross-validating H2OStackedEnsembleEstimator?

H2O docs claim that "for all algos that support the nfolds parameter" cross-validation is done by the train method. However, H2OStackedEnsembleEstimator does not: H2OValueError: Unknown parameter ...
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1answer
61 views

Cross-validation of a stack of classifiers without data shuffle returns garbage

As a follow-up to How to compose sklearn estimators using another estimator?, I am trying to cross-validate a stack of models. Manual First I do all the steps manually to make sure everything works ...
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0answers
7 views

Is it possible to cross compile cmu sphinx speech to text toolkit?

Is it possible to cross compile cmu sphinx toolkit on ARM cortex M4? Or else which open source speech engine can be cross compiled on ARM cortex M4 or to an specific DSP?
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33 views

Use cvpartition method for matrix

I have a dataset consisting of 21 columns and 2376 rows, I would like to use c = cvpartition(n,'KFold',k) function in matlab to partition them, but n accept just vector, not matrix, what should I do?
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1answer
45 views

How do i display labels and predictions - PySpark

Create an algorithm to classify marketplace products, so I can not return the label of the prediction, I tried several commands but all of them have an error (below). How do I return label and ...
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27 views

Cross Validation metrics with Pyspark

When we do a k-fold Cross Validation we are testing how well a model behaves when it comes to predict data it has never seen. If split my dataset in 90% training and 10% test and analyse the model ...
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1answer
37 views

How to take a sklearn post-cross_val_predict model to do prediction on another scaled data set? And whether the model can be serialized?

I came across this question while on a sklearn ML case with heavily imbalanced data. The line below provides the basis for assessing the model from confusion metrics and precision-recall perspectives ...
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0answers
23 views

SVM Cross Validation Problem - Error in table(testingsvmmodel, testing) : all arguments must have the same length

I am getting and error when trying to create a table to assess the results of my svm model. I am wondering if you could have a look as I have spent hours now trying to figure it out but can't (...
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0answers
17 views

Python sklearn - handle unbalanced dataset when fitting a model with cross_val_score

sklearn fit() has the 'class_weight' parameter. In a model selection process, I use the cross_val_score() function, but I see that there is no option to subject the objective function to give a ...
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0answers
14 views

Cross Validation with logistic Regression

I'm trying to apply cross validation on logistic regression.I've also scaled the data.I'm getting an error that says y is not defined for last second line.Error:name 'y' is not defined. scalar = ...
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1answer
33 views

Calculate evaluation metrics using cross_val_predict sklearn

In the sklearn.model_selection.cross_val_predict page it is stated: Generate cross-validated estimates for each input data point. It is not appropriate to pass these predictions into an ...
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1answer
107 views

Can't import cross_validation from sklearn in version > 0.20 [duplicate]

When I import cross_validation from sklearn: from sklearn import cross_validation I get the following error: Traceback (most recent call last): File "<stdin>", line 1, in <module> ...
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2answers
46 views

How to perform 10 random splits to ensure the consistency of the machine learning result

I just read a paper about image popularity prediction. The author split the data into two halves, one for training and the other testing. 5-fold cross-validation was used on the training set to find ...
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0answers
38 views

Sklearn: RepeatedStratifiedKFold for regression

I am trying to perform a repeated stratified k-fold cross-validation on a small dataset on which I want to perform a regression task. Given a dataframe df, first I got the following error: ValueError:...
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1answer
39 views

Getting Validation set from Train set by using percentage from groupby() in pandas

Have a train dataset with multi-class target variable category train.groupby('category').size() 0 2220 1 4060 2 760 3 1480 4 220 5 440 6 23120 7 1960 8 64840 I ...
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0answers
40 views

Building a linear regression model with cross-validation in Python

I have about 1.3k samples of leaf temperature and I'm trying to predict this temperature using atmospheric variables such as air temperature, solar radiation, wind, and humidity. I started off ...
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1answer
52 views

GridsearchCV and Kfold Cross validation

I was trying to understand the sklearn's GridSearchCV. I was having few basic question about the use of cross validation in GridsearchCV and then how shall I use the GridsearchCV 's recommendations ...
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0answers
27 views

Random Forest with cross validation

I'd like to do cross validation on a Random Forest model. I've tried using crossval but it doesn't work on TreeBagger. I tried using for loop, but I'm not sure it's correct: RF6treenum = 50; err6 =...
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0answers
13 views

How to use “”cross_validate“” and “”inverse_transform“” at the same time

as title, how to use these 2 methods at the same time? for example here is my sample code scores =cross_validate(estimator, x, y, cv=kfold, scoring = scoring, ...
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35 views

Removing outlier from time series analysis using pandas

I have a time series analysis to model NDVI. I used the following code: import numpy as np from pandas import Series from matplotlib import pyplot series = Series.from_csv('WSC-10-50.csv', header=0) ...
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1answer
28 views

reusable holdout in mlr

How can someone change the cross validation or holdout procedures in mlr so that before testing with the validation set, that same validation set is changed according to a procedure, namely the ...
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2answers
61 views

Cross-validation gives Negative R2?

I am partitioning 500 samples out a 10,000+ row dataset just for sake of simplicity. Please copy and paste X and y into your IDE. X = array([ -8.93, -0.17, 1.47, -6.13, -4.06, -2.22, -2.11, -...
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0answers
122 views

Leave-one-out cross validation for transfer learning in PyTorch

I have modified the original fine-tuning tutorial in PyTorch so that I can do LOOCV. Here, there are some possible problems such that the dataloader that I currently have applies the transformation ...
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1answer
28 views

Specifiying a selected range of data to be used in leave-one-out (jack-knife) cross-validation for use in the caret::train function

This question builds on the question that I asked here: Creating data partitions over a selected range of data to be fed into caret::train function for cross-validation). The data I am working with ...
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1answer
19 views

Error in Implementation Cross Validation in KNN Python

I learned python KNN from scratch from this: https://machinelearningmastery.com/tutorial-to-implement-k-nearest-neighbors-in-python-from-scratch/ I want to implement Cross Validation from this: https:/...
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1answer
30 views

It´s possible to apply cross_val_score() form sklearn to neupy NN that has an addon like Weigth Elimination?

I´m trying to apply cross_val_score() to the following algorithm: cgnet = algorithms.LevenbergMarquardt( connection=[ layers.Input(XTrain.shape[1]), layers.Linear(6), ...
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0answers
13 views

scikit learn nested cross-validation: standardize outer cv test set based on scaler fitted in inner cv

suppose that you are using the classical nested cross-validation approach, where the inner loop is for example a grid search that optimize the parameters of a pipeline, and that pipeline also contains ...
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0answers
31 views

Trying to use CV approach in 500 training data to make prediction

The picture above only show the first row of my training data set there are total 500 row like this. Hi, I am tring to use cross validation approach to make a prediction about these datas. My ...
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1answer
56 views

Why does cross_val_score in sklearn flip the value of the metric?

I am fitting this model from sklearn. LogisticRegressionCV( solver="sag", scoring="neg_log_loss", verbose=0, n_jobs=-1, cv=10 ) The fitting results in a model.score (on training set) of ...
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0answers
19 views

xgboost in R: is it possibel to cross validation (xgb.cv) get the matrix contain with prediction and observation value?

I recently used "xgb.cv" estimate the accuracy of xgboost. I found that the element pred can get the prediction value. I also want to get the corresponding observation value(test data), or a matrix ...
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0answers
42 views

100% classification accuracy

I am trying to perform a multi-class classification where the network is trained to classify objects into 3 categories: cars, pedestrians and miscellaneous. I am using the KITTI Dataset for car ...
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1answer
42 views

How to implement 10 fold cross validation?

I have a code to perform 10 fold cross-validation on a dataset. The code is created by dividing the data into k-1 parts for training and the remaining part for testing. I want to see if my code is ...
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1answer
25 views

Evaluating logistic regression using cross validation and ROC

I am trying to evaluate logistic regression using the AUROC curve and and cross-validate my scores. When I don't cross-validate I have no issues, but I really want to use cross validation to help ...
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0answers
41 views

Stratified cross validation with Pytorch

My goal is to make binary classification, using neural network. The problem is that dataset is unbalanced, I have 90% of class 1 and 10 of class 0. To deal with it I want to use Stratified cross-...
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0answers
13 views

compare cv score from cross_val_score and xgb.cv

I am trying to select a good model, say between Random Forest and XGB. For that, I do this: stratified KFold (from model_selection) cross_val_score (from model_selection) get mean cv score for Random ...
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1answer
19 views

Meaning of alpha and beta parameters in function makeFeatSelControlSequential (MLR library in R)

For deterministic forward or backward search, I'm used to give thresholds for p-values linked to coefficients linked to individual features. In the documention of makeFeatSelControlSequential in R/...
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1answer
24 views

Retrieve models from resample function in mlr

I would like to retrieve the binary classification models (i.e. selected features and coefficients) generated by resample function in MLR. Below, you can find my code sample. It seems to be located ...