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

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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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what is Type III error?

I am studying cross-validation and encountered a sentence metioning "cross-validation is for Type III error, too", do you know what it means? I am doing my own research about it and also hope to hear ...
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40 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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59 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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26 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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23 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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41 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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20 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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10 views

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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7 views

cross validation of a multiclass training data to obtain the classification accracy 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 ...
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27 views

10 fold cross validation SMO-SVM Classification WEKA?

I want to perform 10 fold cross validation using SMO and a kernel, (say polynomial of degree 1) in WEKA but accessing from MATLAB. For this I loaded arff file, and run my code. It works without any ...
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25 views

How to predict labels for new data (test set) by the PartitionedEnsemble model in Matlab?

I trained a ensemble model (RUSBoost) for a binary classification problem by the function fitensemble() in Matlab 2014a. The training by this function is performed 10-fold cross-validation through the ...
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51 views

Big accuracy difference between cross-validation and testing with a test set in weka? is it normal?

I'm new with weka and I have a problem with my classification project using it. I have a train dataset with 1000 instances and one of 200 for testing. The problem is that when I try to test the ...
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23 views

computed initial MA coefficients are not invertible [Python] [TSA] [ARIMAX] [CrossValidation]

I have endog variable (with 200 observations), exog variable (with 200 observations) I want to train ARIMAX model on 163 observations and predict 181th observation, then train on 164 observations and ...
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22 views

h2o.runif() always returns the same vector

I am writing the code for cross validation of my models' performance.In order to split data set randomly I use this method: h2o.runif(train.hex) Unfortunately it always returns me the same ...
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25 views

The effect of Overlap in sliding window approach on stratified cross validation results in WEKA

Can some explain how the data is randomized and stratified in stratified cross validation in WEKA before using it for training and testing ? The reason I am asking this because I am using sliding ...
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18 views

k fold crossvalidation selfcoded

I want to create a horserace of classification methods in R, but I face a ploblem directly in the beginning. I need to do a k-fold crossvaldiation to make it more robust. I understand the reason and ...
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17 views

Can I use cv.glm for cross validation over randomForest?

I was playing with glm models and cross validation in R and decided to switch over to randomForest. To my surprise I could use the same cv.glm function for cross validation on a random forest model. ...
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37 views

does we need significant test when we use 10-fold cross validation?

Usually to show that our results are not by chance we use significant test like t-test. But when we use 10-fold cross validation we learn&test our modals over chunks of dataset. I'm wondering does ...
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26 views

Using MATLAB lasso Function for Model Selection

I am currently attempting to determine the most predictive multiple linear regression model to use for a set of data with continuous variables and am trying to figure out the best combination of ...
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1answer
40 views

In R caret, obtain in-sample and out-of sample probability estimates

I have some data similar to: data(Titanic) # need one row per passenger df <- data.frame(Titanic, stringsAsFactors=TRUE) df <- df[rep(seq_len(nrow(df)), df[,"Freq"]), ...
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20 views

Precision-Recall curve using cross-validation

I'd like to plot precision-recall curve, using Scikit. My code is similar to follow code. cv = StratifiedKFold(y, n_folds=folds) precision = dict() recall = dict() average_precision = dict() y_score ...
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37 views

Error while running caret with C5.0

I am trying code given in caret vignette and applying it on my data link. I am using this code to evaluate C5.0 with 10-fold cross validation and ROC metric on my data: tuned <- train (training, ...
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68 views

'bad input shape' when using scikit-learn SVM and optunity

I'm trying to use optunity package to tuning my SVM model, I'm directly copy and past it's up-to-date example code , just import the feature array and data array import optunity import ...
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32 views

Comparing RapidMiner models with x-validation

I am working in some forecasting models with RapidMiner and need some orientation to interpret the outputs and select the best among them. I am following some tutorials to check their accuracy with ...
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37 views

Scikit learn cross validation split

I'm currently using cross_validation.cross_val_predict to obtain the predictions made by a LogisticRegression classifier. My question is: what percentage of the data makes up the training set and what ...
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35 views

Feature Extraction and Cross-Validation of an image dataset

I have a dataset consisting of fMRI images. Each image belongs to one class. The dataset is as follows: Class 1: 9 images Class 2: 10 images Class 3: 6 images Class 4: 12 images Each image is 4D ...
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62 views

LOOCV (leave one out) of bayesian network - R

I have a dataset with 1000 rows and 10 columns and s/n values. The head of the data : >head(datos) lluvia nieve granizo tormenta niebla rocio escarcha nieveSuelo neblina viento 1 s ...
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43 views

Avarage values of precision, recall and fscore for each label

I'm cross validating a sklearn classifier model and want to quickly obtain average values of precision, recall and f-score. How can I obtain those values? I don't want to code the cross validation by ...
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1answer
58 views

Difference between using train_test_split and cross_val_score in sklearn.cross_validation

I have a matrix with 20 columns. The last column are 0/1 labels. The link to the data is: https://www.dropbox.com/s/8v4lomociw1xz0d/data_so.csv?dl=0 I am trying to run random forest on the dataset, ...
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Developing cross validated regression model (nlinfit) in matab

I am using the following code to fit a cross-validated non-linear regression model. modelfun = @(b,XTRAIN)10.^b(1).* XTRAIN(:,1).^b(2);% model funtion for the nlinfit command beta0 = [10 .1 ];% ...
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25 views

How to align two datasets for cross validation in MATLAB?

I have two data sets about coordinates of the same movement saved by two different tracking systems. As can be seen from the two plots, they are similar however they are not aligned because of ...
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42 views

Time Series - Splitting Data Using The timeSlice Method

Referring to this post:createTimeSlices function in CARET package in R where createTimeSlices was suggested as an option for cross-validating when using time series data. I would like to understand ...
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36 views

Implementing leave-one-out cross validation optimal bandwidth for kernel estimator in Matlab

I'm trying to solve an exercise in which I need to calculate the local constant kernel estimator and provide the bandwidth using leave-one-out cross validation. The idea is that I need to sort of ...
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39 views

How to run scikit's cross validation with several classifiers on the same folds

I'm currently working on a research study about classifiers performances comparison. To evaluate those performances, I'm computing the accuracy, the area under curve and the squared error for each ...
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28 views

which.max(sapply, train_gibbs, logLik) error

So, I am following Grun and Hornik (http://www.jstatsoft.org/v40/i13/) method of 10 fold cross validation by calculating perplexity from 10-fold training and test set. But I have error when I create ...
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99 views

How to plot ROC curve for cross validation from Weka output for binary class and multiclass data?

I have tried different matlab functions like plotroc and packages in R like pROC, ROCR and cvAUC. Each package or function produces different graph and gives different AUC than Weka result. I would ...
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32 views

How can I test and train multiple data sets in the form of two lists?

I would like to create a function to train and test 10 separate data sets, in two lists. Here are the lists: blend_30_d<-list(desktop_30_1, desktop_30_2, desktop_30_3, desktop_30_4, desktop_30_5, ...
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25 views

Different behaviour for local regression function

I'm fairly new to R and am trying to build a function similar to this. I have hacked the code with the aim of running locpoly to fit a local polynomial with an arbitrary degree as defined by the user. ...
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199 views

How to get Best Estimator on GridSearchCV (Random Forest Classifier Scikit)

I'm running GridSearch CV to optimize the parameters of a classifier in scikit. Once I'm done, I'd like to know which parameters were chosen as the best. Whenever I do so I get a AttributeError: ...
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43 views

Confusion Matrices in Orange

I'm using cross-validation to evaluate the performance of the classification algorithms in orange, but I have some doubts with respect to the confusion matrices: How can I store the confusion matrix ...
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Cross validation vs test set or and test set?

I am a bit confused about the application of cross-validation. So, if I have a big data set, I will split my data into test and training data. And performe validation on test data. But if I have a ...
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1answer
52 views

Error with cross validation on a multilabel classification

I'm using "multiclass.OneVsRestClassifier" and "cross_validation.StratifiedKFold". When I do cross validation on a multi-label problem, it´s fails. Is it possible to perform cross-validation on a ...
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1answer
37 views

Multiple levels of parallelization with scikit-learn

I am using scikit-learn's RandomForestClassifier on a multi-core sever to fit a large dataset so I am taking advantage of its parallelization feature by setting n_jobs = -1. Simultaneously, I want ...
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41 views

R e1071 cross-validation accuracy is not the same

I was trying to reproduce an example shown in the libsvm "A Practical Guide to Support Vector Classification" on Page 10. The data "train.2" that I was using can be downloaded here ...
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102 views

GLM feature selection method

I use General Linear Model (GLM) to do feature extraction and got a beta-matrix; And I also got a class-label-matrix. It is a multiple class problem. Now I want to use t-test to do feature selection ...
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1answer
43 views

What is the purpose of cross-validation?

I am working myself through a book on machine learning right now. Working on a NaiveBayesClassifier the author is very much in favour of the cross-validation method He proposes to split the data ...
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1answer
29 views

Grid searching hyper-parameters of SVM-anova and get the chosen feature in Sklearn

There is an example in doc of sklearn SVM-Anova. I want to further doGridSearchCV for hyper-paremeters, i.d., C and gamma for SVM, for every percentile of features used in the example like this: ...
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3answers
294 views

How do I improve my Neural Network output?

I have a data set with 150 rows, 45 features and 40 outputs. I can well overfit the data but I cannot obtain acceptable results for my cross validation set. With 25 hidden layers and quite large ...