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

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K-fold cross validation code(manual) in MATLAB

I'm using this code for k-fold cross validation in MATLAB : NumOfKfold = 5; INPUT_Size = size(input_data,1); %% number of samples Rand_n = randperm(INPUT); M_part = floor(INPUT_Size/NumOfKfold); ...
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R- Improving linear regression fit [migrated]

I am trying to construct a predictive model in R. I am using the glm() in R to fit the model. I am getting a very high residual error after fitting the model. My target values are in the range of ...
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8 views

Low Accuracy using online logistic regression in mahout

i am getting very low value of accuracy on running online logistic regression on standard iris data (150 records). public static void main(String args[]) throws IOException { BufferedReader br = ...
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24 views

Feature too large to use cross validation? - IndexError: too many indices for array

I have a feature ( for machine learning classification task) which is array(<5613166x16747402 sparse matrix of type '' with 90032133 stored elements in COOrdinate format>, dtype=object) ...
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10 views

Difference between Stratified and Linear cross validation?

I have two data sets one with equal number of samples in each category whereas one with different number of samples in each category, In case of balanced data set it's easy to understand as each ...
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50 views

Storing XValidation (Cross Validation) Folds in Rapidminer?

I have tried a lot via code to save the test/train split samples for each fold in 10-fold cross validation(stratified) but couldn't manage to do that... Is there any way to save the test/train splits ...
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1answer
13 views

why is there a huge difference existed in model performance score obtained from 10-fold cross validation?

I'm using gradient boosting regression model (GBRT). To evaluate this model, I use 10-fold cross validation, in each of which I set same parameters , thus The only difference btw folds is just the ...
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1answer
16 views

How to split data (raw text) into test/train sets with scikit crossvalidation module?

I have a large corpus of opinions (2500) in raw text. I would like to use scikit-learn library to split them into test/train sets. What could be the best aproach to solve this task with scikit-learn?. ...
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How to choose C and gamma AFTER grid search using libSVM (RBF kernel) for best possible generalisation?

I am aware of the abundance of questions asking about choosing the 'best' C and gamma values for SVM (RBF kernel). The standard answer is a grid search, however, my questions starts after the results ...
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71 views

K-fold cross-validation for testing model accuracy in MATLAB

I'm having some trouble truly understanding what's going in MATLAB's built-in functions of cross-validation. My goal is to develop a model for binary classification and test its accuracy by using ...
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30 views

MATLAB neural network weight initialization in multiple loops

First check this link : http://www.mathworks.com/matlabcentral/newsreader/view_thread/331830#911882 This a proposed method to create a neural network with train/test/validation data sets. I have a ...
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17 views

Debugging new crossval function: MATLAB

I've been writing a crossval() function on my own since the crossval() on MATLAB doesn't really allow me to experiment with different(custom ) loss/error measures. However, the loss_estimate that I ...
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26 views

Information leakage in Cross-validation

Description of classification problem: Assume a regular dataset X with n samples and d features. This classification problem is somewhat hard (many features, few samples, low overall AUC ~70%). It ...
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29 views

Finding best neural network structure using optimization algorithms and cross-validation in MATLAB

I'm using optimization algorithm to find best structure+inputs of a patternnet neural network in MATLAB R2014a using5-fold cross validation`. Where should i initialize weights of my neural network? ...
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20 views

Cross validation for neural networks (train,test,validation)

As you know k-fold cross validation separating data to train and test but in neural network architecture we need train, test and validation data sets (crossvalind funcion in MATLAB R2014a). How can i ...
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27 views

error in all false (r0) object 'r_all0' not found

I am getting the below error while trying cv.glmnet from glmnet package in R. Error in all false (r0) object 'r_all0' not found Code below {wrap.glmnet.mdl.cv <- cv.glmnet(red.trn.x, ...
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23 views

k-fold cross validation of prediction error using mgcv

I would like to evaluate the performance of a GAM at predicting novel data using a five-fold cross-validation. Model training is based on a random subset of 80% of the data and the test set the ...
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1answer
49 views

Building parallel GBM models using cross-validation in R

The gbm package in R has a handy feature of parallelizing cross-validation by sending each fold to its own node. I would like to build multiple cross-validated GBM models running over a range of ...
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26 views

How does one find out the cv error from the sklearn package?

I am trying to plot a learning curve to figure out whether my model is suffering from high bias, and to achieve this I would need to plot the training set errors versus the cross validation set ...
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43 views

how to do cross-validation for block kriging?

I have written a code in automap package to cross-validate different kriging techniques. I have cross-validated all of them, but I cannot write the code for Block kriging. It shows this error: unused ...
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27 views

R Cross Validation (GVC) Local Polynomial Regression

I am learning R and stats and trying to understand a couple areas of a cross validation code in this book. Data TimeEruption TimeWaiting 1 3.600 79 2 1.800 54 3 3.333 74 Code: ...
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58 views

Difference of “Training Data Set”, “Testing Data Set” and “Validation Data set”

I have 250 human face images and with those I am going to train the model. for the sake of convenience, what I am going to do is to pick first 10 images and use leave-one-image-out cross validation ...
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PLS-DA Bootstrapping done faster in R

Hello everyone, Please i am trying to do bootstrapping cross-validation for PLS-DA classification. i have to repeat this procedure for six (6) different scaling methods each for different datasets. ...
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2answers
29 views

What is sklearn.cross_validation.cross_val_score

Just wondering what exactly is sklearn.cross_validation.cross_val_score? The documentation says it to be internal scoring method. Does it give FPR/Precision/Recall ?
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37 views

10 fold cross validation with weka api

How can I make a classification model by 10-fold cross-validation using Weka Api. Should I cross validate model first : e.g. evaluation.crossValidateModel(classifier, trainingSet, 10, Random(1)) ...
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27 views

Cross validation: folds results in weka software

I'm wondering if there is a way to see the reults of the "k" folds in WEKA software. My meaning is - if I have 10 folds cross validation, the final result will be the confustion matrix's average of ...
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23 views

R caret trainControl index variable bug?

When I try to use a list without names as index variable in trainControl in train function from caret package, I end up with an unclear error: > n = 100; > m = 10; > set.seed(1); > x = ...
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10 views

Cross validation with sample()

I am making exercises from the Introduction to Statistical Learning book and there is a piece of code performing cross validation that I can't understand: k=10 set.seed(1) folds = sample(1:k, ...
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22 views

How does scikit's cross validation work?

I have the following snippet: print '\nfitting' rfr = RandomForestRegressor( n_estimators=10, max_features='auto', criterion='mse', max_depth=None, ) rfr.fit(X_train, y_train) # ...
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21 views

Libsvm - Special CrossValidation version with precompute kernel permutation

I'm trying to reduce the computation time as currently is too long. One of the code pieces regards to the crossvalidation part. It has two particularities, kernel (RBF) is precomputed and only one ...
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2answers
45 views

How to get the folds themselves that are partitioned internally in sklearn.cross_validation.cross_val_score?

I'm using: sklearn.cross_validation.cross_val_score to make a cross validation and get the results of each run. The output of this function is the scores. Is there a method to get the folds ...
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29 views

How to use sample weighting in RandomizedSearchCV?

I am working with scikit learn library in python and I want to weight to each sample during the cross validation using RandomizedSearchCV. When I try this code: search = RandomizedSearchCV(estimator, ...
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Terminate As Soon As Validaton Error Increases?

I'm trying to avoid overfitting the training data, and have been warned of oscillations. How many oscillations are needed to determine overfitting, or should the training be stopped immediatelly ...
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1answer
79 views

sklearn.cross_validation.cross_val_score multiple cpu?

I am trying to get a score for a model through cross validation with sklearn.cross_validation.cross_val_score. According to its documentation, the parameter n_jobs sets the number of cpus that you can ...
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1answer
46 views

Guaranteeing the same subset for several techniques in Rapidminer's X-Validation

I am in the feature selection stage of a class data mining project, the main objective of it is to compare several data mining techniques (Naive Baiyes, SVM,etc...). In this stage I am using a wrapper ...
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1answer
145 views

Perform cross-validation on randomForest with R

I am using the randomForest package for R to train a model for classification. To compare it to other classifiers, I need a way to display all the information given by the rather verbose ...
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94 views

How to get fitted values for k-fold cross-validation in R (logistic regression)?

I have a question very similar to this I've tried K-fold cross validation functions in packages DAAG - cv.binary(), boot -cv.glm(), and caret -train(), but have not found one that will print the ...
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1answer
62 views

How does LassoCV in scikit-learn partition data?

I am performing linear regression using the Lasso method in sklearn. According to their guidance, and that which I have seen elsewhere, instead of simply conducting cross validation on all of the ...
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1answer
247 views

How to do leave-one-out cross validation in SPSS

I am having trouble understanding how to perform LOOCV in SPSS. I need to evaluate a simple linear regression $Y=aX+b$. Thanks.
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95 views

Change training data to libsvm format to pass it to grid.py in libsvm

I am new to python and I am trying to use libsvm. I am trying to do cross validation with the help of grid.py. I get my data from a database so its not in sparse form. Is there any way to convert it ...
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2answers
52 views

Grails cross-class validation

I try to validate two language fields from two different objekts. I found Grails Validation and so i created: class Test { Title title Summary summary static contraints ={ title validator: { ...
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1answer
78 views

Custom cross validation split sklearn

I am trying to split a dataset for cross validation and GridSearch in sklearn. I want to define my own split but GridSearch only takes the built in cross-validation methods. However, I can't use the ...
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21 views

error.cv in rfcv function

In the help file, an example using the iris dataset is given. Can anyone please explain what sapply function does in the error.cv step below? `result <- replicate(5, rfcv(myiris, iris$Species), ...
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60 views

inclusion of interaction terms in bestglm in R

I would like to use the delete-d cross-validation technique available in the R package bestglm. I have a binomial response variable (species presence/absence) and 11 predictor variables that are ...
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1answer
33 views

Stop priniting the Accurancy while cross validation in SVM in LIBSVM [closed]

I am using cross validation in svmtrain in LIBSVM. How can I make it stop printing the "Cross Validation Accuracy" in the consol? Thank you
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27 views

is it possible to use multiple groups with cvpartition in matlab?

thank you in advance for the input. I am using cvpartition to produce sets that I will use for training and validation on some data. In particular I'm using c = cvpartition(a,'kfold',5) where a ...
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Selecting the perfect k-fold cross validation + libsvm, rf and c4.5

I have been using the default k -fold cross validation(CV)(k-fold = 10) for my classification, but later i found that less k-fold gives best ACC for my problem. So finally i used 2 fold cv for my ...
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18 views

R: PDA on 2 manners but with different results?

I'm working on a project where I have to classify data about breast cancer. I want to use PDA. I'm trying to found the optimal value for lambda by 10-fold cross validation. I've started with: ...
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1answer
25 views

R: rda() with CV

I've used the following code: breast.rda = rda(Diagnosis~ ., data=breast, lambda = 0.2, crossval=T, fold = 10, gamma=0) I can retrieve the error by running: breast.rda[5] ## $error.rate ## ...
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1answer
200 views

Calculate cross validation for Generalized Linear Model in Matlab

I am doing a regression using Generalized Linear Model.I am caught offguard using the crossVal function. My implementation so far; x = 'Some dataset, containing the input and the output' X = ...