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

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LibSVM prediction accuracy

I am currently trying to run LibSVM located here: https://www.csie.ntu.edu.tw/~cjlin/libsvm I only have access to MATLAB 2011b. When I try to run the example data file (heartscale) included with the ...
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30 views

10 fold cross validation with sample size that is not a factor of 10

I see papers that use 10-fold cross validation on data sets that have a number of samples indivisible by 10. I couldn't find any case where they explained how they chose each subset. My assumption ...
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ValueError: operands could not be broadcast together with different shapes in numpy?

I am trying to use k-fold cross validation and for this i needed to do accordingly with the training set.I implemented like below: num_folds = 5 subset_size = num_training/num_folds ...
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24 views

Different results between using train_test_split and cross_val_score in sklearn.cross_validation with randomized data

I am performing preliminary tests using sklearn in my code. I am testing: 1) sklearn.cross_validation.cross_val_score 2) sklearn.cross_validation.train_test_split like in this question. The code ...
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19 views

How to implement cross-validation efficiently in Matlab using parfor

Cross-validation is one of those embarrassingly parallel problems. Let's say you would like to cross-validate a linear regression model. Assume that the design matrix X has dimensions n-by-p and the ...
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34 views

SciKit Learn feature selection and cross validation using RFECV

I am still very new to machine learning and trying to figure things out myself. I am using SciKit learn and have a data set of tweets with around 20,000 features (n_features=20,000). So far I achieved ...
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47 views

Specify Cross Validation Folds with caret

Hello and thanks in advance. I'm using caret to cross validate a neural-network from the nnet package. In the method parameter for the train.Control function I can specify my cross-validation type, ...
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15 views

Using explict (predefined) validation set for grid search with sklearn

I have a dataset, which has previously been split into 3 sets: train, validation and test. These sets have to be used as given in order to compare the performance across different algorithms. I would ...
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how to implement walk forward testing in sklearn?

In sklearn, GridSearchCV can take a pipeline as a parameter to find the best estimator through cross validation. However, the usual cross validation is like this: to cross validate a time series ...
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24 views

When doing cross validation, what changes if you ensure that the class distribution in the training and test set is equal to the whole set?

Let's take a binary classification problem. When doing k-fold cross validation, when you separate the randomly shuffled dataset into k chunks, how likely are they to have the same label distribution ...
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28 views

feature selection on test set with cross validation weka

I have a file with 1000 instances and I use meta classifier for feature selection followed by cross validation. import java.io.FileReader; import weka.classifiers.meta.AttributeSelectedClassifier; ...
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16 views

Bio informatics tool box error

Labels=[positive; negative]; groups1 = Labels; cvFolds = crossvalind('Kfold', groups1, k) cp = classperf(groups1) I dont have bioinformatics tool and is there a way I could ...
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Why do I get different cross validation errors with rpart if I specify parms with default values?

I am puzzled by the following: set.seed(144) df = data.frame(outcome=as.factor(sample(c('a','b','c'), 1000, replace=T)), x=rnorm(1000), y=rnorm(1000), z=rnorm(1000)) library(rpart) fit.default = ...
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21 views

cross validation matlab toolbox issue

Labels=[1; 0]; k=5; groups = Labels; cvFolds = crossvalind('Kfold', groups, k); I am getting error of no bio informatics toolbox. Is there a way I could rewrite this function without using ...
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25 views

WEKA cross validation discretization

I'm trying to improve the accuracy of my WEKA model by applying an unsupervised discretize filter. I need to decided on the number of bins and whether equal frequency binning should be used. Normally, ...
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35 views

How to extract best parameters from a CrossValidatorModel

I want to find the parameters of ParamGridBuilder that make the best model in CrossValidator in Spark 1.4.x, In Pipeline Example in Spark documentation, they add different parameters (numFeatures, ...
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21 views

Is there a discrepancy between createMultiFolds behavior and the resampling summary of a caret object?

I encountered a strange issue using custom folds for the cross-validation with caret. A MWE (in which the use of createMultiFolds doesn't really make sense) library(caret) #version 6.0-47 data(iris) ...
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49 views

Scikit F-score metric error

I am trying to predict a set of labels using Logistic Regression from SciKit. My data is really imbalanced (there are many more '0' than '1' labels) so I have to use the F1 score metric during the ...
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18 views

The output accuracy of cross_validate in RTextTools

I'm using the R package RTextTools to do some text classification work. In order to test which algorithm is better, I tried the cross_validate function as follows data <- ...
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48 views

scikit-learn pipeline: grid search over parameters of transformer to generate data

I would like to use the first step of a scikit-learn pipeline to generate a toy data set in order to evaluate the performance of my analysis. An as-simple-as-it-gets-example solution I came up with ...
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27 views

Custom 'Precision at k' scoring object in sklearn for GridSearchCV

I am currently trying to tune hyperparameters using GridSearchCV in scikit-learn using a 'Precision at k' scoring metric which will give me precision if I classify the top kth percentile of my ...
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R: Difference between passing a formula and passing a fitted model to the CVlm function in DAAG package

There were some similar discussions in the answer of this question, but I still could not quite understand what caused the difference. I've seen people using both approaches. For example, I found an ...
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62 views

Random Forest Crossvalidation in R

I am working on a random forest in R and I would like to add the 10- folds cross validation to my model. But I am quite stuck there. This is sample of my code. install.packages('randomForest') ...
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43 views

Scikit-learn - How to use Cross Validation correctly

I am working on a program where I have some data (labeled and unlabeled) and 2 different groups ("artritis" and "fibro"). I would like to obtain the classifier's accuracy and then classify the ...
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29 views

Divide mysql to several set for cross validation

Hi I have created a method to recommend movies from Movielens dataset. The problem with me is how to divide table in the database based on user watched movies into folds to apply cross-validation. ...
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misclassification probabilities in 'candisc'?

I have a 16 group and 13 variable database and I wanted to know if there is a way of getting the misclassification probabilities of a (generalised) discriminant analysis using the 'candisc' package ...
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26 views

Multiple cross-validation + testing on a small dataset to improve confidence

I am currently working on a very small dataset of about 25 samples (200 features) and I need to perform model selection and also have a reliable classification accuracy. I was planning to split the ...
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28 views

How can I get randomized grid search to be more verbose? (seems stopped, but can't diagnose)

I'm running a relatively large job, which involves doing a randomized grid search on a dataset, which (with a small n_iter_search) already takes a long time. I'm running it on a 64 core machine, and ...
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37 views

Obtain ROC curve in cross-validation of Logistic Regression in MATLAB

I'm trying calculate the ROC curve of a cross-validation. In particular, the parameter AUC (Area under the curve) and OPTROCPT (Optimal ROC Point). I thing I can calculate them by averaging the AUC ...
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13 views

Stratified Test-train-validation split for images with multiple classes and examples per image

I have a dataset with 300 images, each of which has a variable number of flowers. These flower examples can be any of 3 classes. I want to get approximately a stratified 50:25:25 ...
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12 views

Regression and Cross-Validation of Regression - why different p-values?

I have an R question. I'm wondering why there is a difference in p-values in the original regression analysis using lm versus in the k-fold cross-validation using the DAAG package. So, first I run ...
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21 views

Huge difference between accuracy of cross-validation and test data

I have a question on the accuracy of cross validation. I’m grateful to anybody who could give a hint. I have a data set, including 50 papers where sentences are given to be classified into 5 classes. ...
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36 views

Cross validation for custom kernel SVM in scikit-learn

I would like to do a grid-search through cross-validation for a custom kernel SVM using scikit-learn. More precisely following this example I want to define a kernel function like def my_kernel(x, ...
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45 views

Sklearn K-Fold Cross Validation Memory Issues

I'm trying to run some supervised experiments with a simple text classifier, but I'm running into memory issues in using the K Fold generator in Sklearn. The error I'm getting is states: "Your system ...
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63 views

Tune parameters with nested SVM in MATLAB

I have a dataset of 20 test subjects with 50 variables and a result vector of 1 and 0 that determines their state. I would like to set up a nested cross validation such that I in the inner folds ...
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41 views

Put customized functions in Sklearn pipeline

In my classification scheme, there are several steps including: SMOTE (Synthetic Minority Over-sampling Technique) Fisher criteria for feature selection Standardization (Z-score normalisation) SVC ...
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Is there any algorithm that can predict multi-variables(response variables) based on one independent variable

let me ask the question in detail with an example: I have a historical data set with columns (a,b,c,d,e,f,g) Now I have to predict (b,c,d,e,f,g) based on the value of 'a'. Just replace ...
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61 views

Summary statistics in glmnet

I have been working on a data set and using glmnet for linear LASSO/Ridge regressions. For the sake of simplicity, let's assume that the model I am using is the following: cv.glmnet(train.features, ...
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How do I cross validate my predictions from Random Forest in python/sklearn?

Can someone please let me know, if this is the correct way to calculate the cross-validated precision of my classifier? I divided my dataset into xtrain and ytrain for training data and xtest & ...
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How to fit a GLM to a dataset estimating “only the post hoc values for the random effects”?

My goal is to implement a cross-validation procedure for linear mixed models. Let me start with what I want to do (which is described here), and already tell you that I get stuck at step 4. The goal: ...
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40 views

Controlling sampling for crossvalidation in the caret R package

I have the following problem. In a data set from N subjects I have several samples per subject. I want to train a model on the data set, but I would like to make sure that in each resampling, in the ...
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50 views

predict classes of test data using k folding using sklearn

I am working on a data mining project and I am using the sklearn package in python for classifying my data. in order to train my data and evaluate the quality of the predicted values, I am using the ...
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93 views

LDA cross validation and variable selection

I have a data frame with 395 observations and 36 variables. I am doing cross validation to select the best few variables to classify the student qualifications. I have written this code: k<-5 ...
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94 views

Access indices of each CV fold for custom metric function in caret

I want to define my custom metric function in caret, but in this function I want to use additional information that is not used for training. I therefore need to have the indices (row numbers) of the ...
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168 views

python sklearn cross_validation /number of labels does not match number of samples

Doing a course on machine learning, and I want to split the data into train and test sets. I want to split it up, use Decisiontree on it for training, and then print out the score of my test set. The ...
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36 views

How to use cross validation in MATLAB

I'm trying to make a svm classificator using Matlab and want to use cross validation. But predictor = fitcsvm(features, vect, 'Standardize', true, 'CrossVal', 'on'); returns ...
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65 views

Using Cross-Validation on a Scikit-Learn Classifer

I have a working classifier with a dataset split in a train set (70%) and a test set (30%). However, I'd like to implement a validation set as well (so that: 70% train, 20% validation and 10% test). ...
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29 views

Parameter selection of SVM

I have a dataset which I use for classifcation with libSVM in Matlab. The dataset consists of 4 classes. For parameter selection of SVM I can do nested cross-validation. The problem is that I also ...
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Get 'holdout' predictions with kfoldPredict

I'm trying to test the performance of several classification models using crossval function. I've managed to undertand 'kfold' and 'leaveout' methods, since, basically they are partitions into ...
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cross validation of a multiclass training data to obtain the classification accuracy of each class

I performed a 5-fold cross validation using libsvm on a multiclass training data. The number of classes is 5. The output shows Cross Validation Accuracy = 82%. This result show the overall accuracy ...