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

learn more… | top users | synonyms

-2
votes
1answer
13 views

When to use k-fold cross validation and when to use split percentage?

Which kind of dataset benefits the most from using k-fold validation? Is it usually a better option than standard split percentage?
-2
votes
0answers
14 views

k-fold cross validation of a glmer model

I am trying to see resource selection in black tailed deer across seasons and activity state. I am fairly new to R and have used glmer function from lme4 to fit my data. My model looks like ...
0
votes
0answers
3 views

Cross-validated feature selection in WEKA

Class weka.attributeSelection.AttributeSelection seems to offer a nice way to get feature ranking: set search method (e.g., .setSearch(new Ranker())) set evaluation method (e.g., setEvaluator(new ...
0
votes
1answer
9 views

GridSearchCV: passing weights to a scorer

I am trying to find an optimal parameter set for an XGB_Classifier using GridSearchCV. Since my data is very unbalanced, both fitting and scoring (in cross_validation) must be performed using ...
1
vote
2answers
24 views

Erratic behavior of train_test_split() in scikit-learn

Python 3.5 (anaconda install) SciKit 0.17.1 I just can't understand why train_test_split() has been giving me what I consider unreliable splits of a list of training cases. Here's an example. My ...
0
votes
0answers
14 views

Parameter Optimization and k-fold Cross-Validation

I was wondering about the correct data splitting for parameter optimization and later cross-validation. In general, the data are split into a training and test set. Additionally, I split the training ...
1
vote
0answers
36 views

Multi-class cross validation LIBSVM in MATLAB

I am doing a multi-class SVM to solve a problem. I have 4 classes (1,2,3,4). I am also trying to implement the grid search method to find the best values of C and gamma. The code I adapted was from ...
-1
votes
0answers
20 views

in matlab , how do i generate a training and a test fold from ma data?

i'm trying to code a simple program on matlab which gets a data, and returns training and validation sets , like this - [training data , validation data] = cv_partition(data , k-fold) could'nt ...
3
votes
2answers
462 views

What is the difference between cross_val_score with scoring='roc_auc' and roc_auc_score?

I am confused about the difference between the cross_val_score scoring metric 'roc_auc' and the roc_auc_score that I can just import and call directly. The documentation ...
0
votes
0answers
15 views

Is it possible to use k-fold cross validation for regression models?

Some texts I read said it's possible to optimise the lambda parameters using this method, but using sklearn, it seems that continuous models are not supported. This is reasonable, since the aim of the ...
0
votes
1answer
104 views

Calculating AUC Leave-One-Out cross validation in mlR?

This is a quick question, just to make sure I'm not doing this the dumb way. I want to use auc as my measure in mlr, and I'm also using LOO due to the small sample size. Of course, in the LOO cross ...
0
votes
0answers
7 views

(libsvm )Why the mean squared error in CV is smaller than it in normal training?

I am using libsvm and doing the epsilon-SVR.To find the optimal parameters in a grid(cost = [125.2,125.6,125.8,126,126.2,126.4,126.8],gamma = ...
0
votes
1answer
22 views

nested cross-validation with custom folding

My data has a column called pid and records with the same pid should not be leaked between train-test splits. I have a 2-layers stacked model - Internal layer builds an internal-prediction vector ...
7
votes
2answers
450 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, ...
0
votes
1answer
68 views

Spark MLLib Crossvalidation of SVM

I use Spark MLLib to conduct a SVM classification on a RDD of LabeledPoints. I want to cross validate it. Which is the best way to do it? Does anyone have an example code? I found the CrossValidator ...
0
votes
0answers
15 views

What Matlab SVM model to use to predict? SVMModel(fitcsvm) or ScoreSVMModel(fitPosterior)

To my knowledge, there are SVMModel and ScoreSVMModel that we can use to predict the new observations in Matlab. However, how can we decide which model is the best to use for predicting? In my case, ...
0
votes
1answer
29 views

why my cross validation misclassification error rate contradicts testing dataset success rate

I'm a beginner of ML. I'm trying to use 600 images (300 pos and 300 neg) to train the linear SVM in Matlab; then, I have applied the trained model to my 400 testing images. If I set the cost of the ...
4
votes
2answers
914 views

predict_proba for a cross-validated model

I would like to predict the probability from Logistic Regression model with cross-validation. I know you can get the cross-validation scores, but is it possible to return the values from predict_proba ...
0
votes
1answer
26 views

R caret: leave subject out cross validation with data subset for training?

I want to perform leave subject out cross validation with R caret (cf. this example) but only use a subset of the data in training for creating CV models. Still, the left out CV partition should be ...
0
votes
0answers
15 views

Obtaining predictions on CV test fold partitions with R caret package?

I'm using caret to find & compare predictions for multiple models. I'm first partitioning my data into 5 cross-validation folds, then using 10-fold CV within each of the 5 training datasets to ...
1
vote
2answers
36 views

Sklearn preprocessing - PolynomialFeatures - How to keep column names/headers of the output array / dataframe

TLDR: How to get headers for the output numpy array from the sklearn.preprocessing.PolynomialFeatures() function? Let's say I have the following code... import pandas as pd import numpy as np ...
-2
votes
0answers
13 views

How can I use wrapper feature selection and tune parameters in R?

I have looked at the leaps package: http://www.inside-r.org/packages/cran/leaps/docs/regsubsets to use wrapper feature selection for data mining. How can I implement this and also tune parameters (by ...
1
vote
0answers
29 views

Perplexity in topic modeling

I have run the LDA using topic models package on my training data. How can I determine the perplexity of the fitted model? I read the instruction, but I am not sure which code I should use. Here's ...
1
vote
0answers
38 views

How to extract model hyper-parameters from spark.ml in PySpark?

I'm tinkering with some cross-validation code from the PySpark documentation, and trying to get PySpark to tell me what model was selected: from pyspark.ml.classification import LogisticRegression ...
0
votes
1answer
28 views

Cross-Validation in R error with hcv function. How can I fix the error?

My code is as follows library(faraway) data(divusa) library(sm) hm<-hcv(divusa$year, divusa$divorce, display="Lines") Output hcv: boundary of search area reached. Try readjusting hstart ...
1
vote
2answers
903 views

understanding python xgboost cv

I would like to use the xgboost cv function to find the best parameters for my training data set. I am confused by the api. How do I find the best parameter? Is this similar to the sklearn grid_search ...
0
votes
1answer
29 views

R: use forecast::accuracy() on split data

Having a hard time getting the accuracy() function from {forecast} to work on predicted test values. First, build the LM model on the training data (here for reproducibility): library(ISLR) ...
0
votes
1answer
98 views

Feature Selection for QSAR data in R for regression analysis

I am doing QSAR study for my data and after Running my structures through DRAGON software and getting the descriptors I am left with 383 desriptors (removing Constants and all ). Now I want to perform ...
0
votes
0answers
17 views

How to extract the predictions and probabilities of each training sample in a cross-validation result with caret (R)?

I'm learning the caret package in R for classifications by Naive Bayes. I'm following the tutorial from: http://topepo.github.io/caret/training.html Thanks for the great tutorial! But I have one ...
0
votes
1answer
32 views

How to use platt scaling with cross-validation using LIBSVM?

Could somebody give me the example to show how platt scaling is used along with k-fold cross-validation in multiclass SVM classification in libsvm? I have divided the whole dataset in two parts: ...
2
votes
1answer
37 views

Obtaining predictions on test datasets for k-fold cross validation in caret

I'm a little confused how caret scores the test folds in k-fold cross validation. I'd like to generate a data frame or matrix containing the scored records of the ten test datasets in 10-fold cross ...
0
votes
0answers
16 views

Loading a trained crossValidation model in Spark

I am a new beginner in Apache Spark. I trained a LogisticRegression model using crossValidation. For instance: val cv = new CrossValidator() .setEstimator(pipeline) .setEvaluator(new ...
0
votes
0answers
32 views

How to create a 10 folds cross validation in java?

I have 3 files that contain my training data,where each file represent one class. I store the content of the files and class label into hash map. I want to create 10 folds cross validation using JAVA ...
0
votes
0answers
17 views

Scikit grid search on specific data set instead of randomized data

I'm using python and scikit-learn to do some cross validation testing. Currently I am splitting a pandas dataframe into a training set (X_train, y_train) and testing set (X_test, y_test), then ...
0
votes
0answers
17 views

Compute overall performance in k-fold cross validation

I have a set of data and I want to use it for prediction. I'm using Anfis for optimization my FIS (Fuzzy Inf. Sys.) in K-fold cross validation. How can I compute overall performance of my final ...
1
vote
0answers
29 views

Weka cross-validation, models based on folds never build

I'm trying to run a 5-fold cross-validated MultilayerPerceptron on a dataset of roughly 600 records and 960 attributes. MultilayerPerceptron -L 0.3 -M 0.2 -N 50 -V 0 -S 0 -E 20 -H a The status ...
2
votes
2answers
39 views

how to obtain the trained best model from a crossvalidator

I built a pipeline including a DecisionTreeClassifier(dt) like this val pipeline = new Pipeline().setStages(Array(labelIndexer, featureIndexer, dt, labelConverter)) Then I used this pipeline as the ...
0
votes
0answers
31 views

Cross validation for linear models in R

I am trying to do cross validation of a linear model in R using cv.lm. I have tried capturing the output from cv.lm in a separate variable using something like: cvOutput <- cv.lm(.....) However, ...
1
vote
0answers
45 views

Save rows not selected by dplyr::sample_frac()

Does dplyr provide a way to save the rows that were not selected by sample_frac() in addition to the ones that were selected?
0
votes
0answers
17 views

R sessions reloaded multiple times on running cv.folds GBM package

The problem is that running the gbm function is spinning up new R sessions. I can see them being created in a terminal. But I have no parallel backend setup. I have set an option within the gbm ...
0
votes
2answers
26 views

Scikit: Is there a way to get back all the untrained items (the test set) from the best estimator when using GridSearchCV?

In this simplified example, I am training a Logistic Regression with GridSearchCV. As always, I want the model to generalize well, so I want to look closely at the test set results. I can't find an ...
5
votes
3answers
3k views

cost function in cv.glm of boot library in R

I am trying to use the crossvalidation cv.glm function from the boot library in R to determine the number of misclassifications when a glm logistic regression is applied. The function has the ...
0
votes
0answers
23 views

How to create a dynamic matrix in r for cross-validation?

I am using cross-validation for model selection. The current set-up i have is running each model 1 at a time separately. What i mean is i run the cv for 1 and then get the predictions, calculate the ...
0
votes
0answers
10 views

how to obtain estimates for out-of-sample RMSE and MAE by leave-one-out cross-vaildation in SAS?

I got a dataset (see below): year population year population 1790 3929214 1900 76212168 1800 5308483 1910 92228496 1810 7239881 1920 106021537 1820 9638453 1930 123202624 1830 12860702 1940 ...
0
votes
1answer
26 views

What does KFold in python exactly do?

I am looking at this tutorial: https://www.dataquest.io/mission/74/getting-started-with-kaggle I got to part 9, making predictions. In there there is some data in a dataframe called titanic, which is ...
0
votes
1answer
21 views

Weka : how to use cross validation in code

I was trying to use cross validation in following code: Program: TextDirectoryToArff d = new TextDirectoryToArff(); try { Instances dataset = d.createDataset("C:\\mytest"); ...
1
vote
1answer
54 views

Identifying overfitting in a cross validated SVM when tuning parameters

I have an rbf SVM that I'm tuning with gridsearchcv. How do I tell if my good results are actually good results or whether they are overfitting?
4
votes
1answer
78 views

Lasso: Cross-validation for glmnet

I am using cv.glmnet() to perform cross-validation, by default 10-fold library(Matrix) library(tm) library(glmnet) library(e1071) library(SparseM) library(ggplot2) trainingData <- ...
0
votes
0answers
8 views

cv.glm for binomal regression delta output difference with the same data set

I am calculating the prediction error for a binomial regression. But I find it interesting that I get two difference results if I permute my data set or not load("cleveland.rda") dat = cleveland fit ...
0
votes
0answers
46 views

LabelKFold Sklearn Cross Validation - What does the doc mean by label?

I know there have been questions posted here on this topic and I've read the documentation several times over, but I'm still having a hard time understanding how Sklearn's LabelKFold CV works. In ...