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

learn more… | top users | synonyms

0
votes
0answers
7 views

Valid Model Assessment for Very Small Cohort Production Scoring

I have about 20K observations in my training data. What is the best way to test a predictive model (in terms of fit/accuracy/generalization error) when I will be scoring very small cohorts (n~5-7) in ...
1
vote
0answers
52 views

cv.glm cutoff value of 0.75 in r

I am doing some analysis regarding a binomial glm model that I have fitted earlier in R. While looking at my data, I figured out that the suitable cutoff point for my binary outcome should be 0.75 ...
0
votes
0answers
37 views

Find the best h for the local regression using cross validation in R

1I'm having troubles finding the best h value (using the cross validation) #Complex is my file with 120 (x,y,y.test). #I need to use the regression with all my y because i need to do a cross ...
0
votes
2answers
68 views

Is there an option to prevent the cross validation (and gridsearchCV) to randomize the rows of the dataset?

anyone knows if there is a way to prevent the grid search function gridsearchCV in scikitlearn to randomize the record of my dataset? I have group of rows which correspond to a same phenomenon and I ...
0
votes
1answer
53 views

SVM and cross validation

The problem is as follows. When I do support vector machine training, suppose I have already performed cross validation on 10000 training points with a Gaussian kernel and have obtained the best ...
1
vote
1answer
228 views

Early-stopping while training neural network in scikit-learn

This questions is very specific to the Python library scikit-learn. Please let me know if it's a better idea to post it somewhere else. Thanks! Now the question... I have a feed-forward neural ...
1
vote
0answers
107 views

How to compute precision, recall, and accuracy in 10-fold cross validation with classification in R?

There is a set of data with one label to classify each row. such as: class x1 x2 1 1 3 1 4 5 2 7 0 2 8 11 I try to compute precision, recall, and accuracy of classification ...
0
votes
0answers
30 views

Is it possible to use the estimator.predict on a new test set after cross validation?

I have a new question about scikit for you. Classification problem, logistic regression as estimator. I have my X dataset, with my features. I want to use my algorithm through cross validation and I ...
0
votes
0answers
27 views

Finding the used seed in cv.glm() [duplicate]

I am applying the cv.glm() function from the {boot} package. The command is working perfectly fine, but I am trying to obtain the seed on which the my K fold cross validation was established to be ...
0
votes
1answer
334 views

Using neuralnet with caret train and adjusting the parameters

So I've read a paper that had used neural networks to model out a dataset which is similar to a dataset I'm currently using. I have 160 descriptor variables that I want to model out for 160 cases ...
0
votes
0answers
282 views

Get results of ten times ten-fold cross validation per iteration

I have read some of the questions here in WEKA regarding obtaining the fold results of a cross validation ("Weka: Results of each fold in 10-fold CV", "Results from each fold in 10-fold Cross ...
0
votes
1answer
168 views

Why use cross validation? [closed]

I am entering several Kaggle Machine Learning competitions at the moment and I just have a quick question. Why do we use cross validation to assess our algorithms effectiveness in these competitions? ...
1
vote
0answers
233 views

scikit-learn cross validation, negative values with mean squared error

When I use the following code with Data matrix X of size (952,144) and output vector y of size (952), mean_squared_error metric returns negative values, which is unexpected. Do you have any idea? ...
0
votes
2answers
54 views

early stopping in neural network using validation set [closed]

I want to use early stopping method to avoid over fitting in neural network. I have divided my dataset to 60-20-20 60 - training 20 - validation set 20 - test set I have a doubt while implementing ...
0
votes
1answer
172 views

100% accuracy from libsvm

I'm training and cross-validating (10-fold) data using libSVM (with linear kernel). The data consist 1800 fMRI intensity voxels represented as a single datapoint. There are around 88 datapoints in ...
0
votes
1answer
656 views

Cross validation for glm() models in R

I'm trying to do a 10-fold cross validation for some glm models that I have built earlier in R. I'm a little confused about the cv.glm() function although I've read a lot of help files. When I provide ...
0
votes
1answer
946 views

Leave one out cross validation with lm function in R

I have a dataset of 506 rows on which I am performing Leave-one-out Cross Validation, once I get the mean squared errors , I am computing the mean of the mean squared errors I found. This is changing ...
0
votes
1answer
48 views

How to actually use a validation set when using support vector machines in sklearn

While working with SVMs, I am seeing that it is a good practice to perform a three way split on the original data set, something along the lines of, say, a 70/15/15 split. This split would ...
3
votes
1answer
891 views

Topic models: cross validation with loglikelihood or perplexity

I'm clustering documents using topic modeling. I need to come up with the optimal topic numbers. So, I decided to do ten fold cross validation with topics 10, 20, ...60. I have divided my corpus into ...
0
votes
0answers
30 views

Calculating model accuracy in lmer with gaussian distribution

I have a question regrading calculating model accuracy (correctness) using lmer (Gaussian distribution)? I assume I need to calculate K-fold cross validation but don't know what package I should use ...
0
votes
4answers
412 views

How to custom a model in CARET to perform PLS-[Classifer] two-step classificaton model?

This question is a continuation of the same thread here. Below is a minimal working example taken from this book: Wehrens R. Chemometrics with R multivariate data analysis in the natural ...
0
votes
0answers
54 views

Cross-validation for proportional odds logistic model

I see there is no cv.polr for cross validation of proportional odds models - do you know if there is a shortcut in R for this?
1
vote
1answer
132 views

sklearn - cross validation with precision scoring for a subset of classes

I have a dataset for classification with 3 class labels [0,1,2]. I want to run cross validation and try several estimators, but I am interested in scoring with precision of only classes 1 and 2. I ...
0
votes
0answers
73 views

Custom partition for crossval

I am trying to cross validate my classification method and I want to use a specific training set and test set. When the crossval function is used, one of the parameters is the 'partition' field. In ...
0
votes
0answers
131 views

R package Neuralnet - how to compute error on Cross Validation set?

I stuck at how to compute Error, that model produce when applied to new data set! Let's say I have some training data, generated by simple quadratic function: t <- 1:10 t2 <- t^2 + 10 Now I ...
2
votes
3answers
204 views

why we need cross validation in multiSVM method for image classification?

I am new to image classification, currently working on SVM(support Vector Machine) method for classifying four groups of images by multisvm function, my algorithm every time the training and testing ...
1
vote
2answers
61 views

Do I use the same idf from training set to perform cross validation?

I am trying to build an SVM classifier in SVM Light using the Vector Space Model. I have 1000 documents and a dictionary of terms I will be using to vectorize each document. Of the 1000 documents, 600 ...
0
votes
1answer
76 views

How to view more of your data in R

This may be a silly question, but I performed SVM on my data, and the best fit of the model comes out to be when C = 0.5 as it gives the best RMSE value. Which is great. I performed 10-cross fold ...
1
vote
1answer
56 views

How to view singularities in model fitted in caret train in R

I've got a database that is 161 x 151 and I applied the following on my dataset:- > ctrl <- trainControl(method = "repeatedcv", number = 10, repeats = 10, savePred = T) > model <- ...
0
votes
1answer
264 views

What values to look at in cross validated linear regression in DAAG package

I performed the following on a data set that contains 151 variables with 161 observations:- > library(DAAG) > fit <- lm(RT..seconds.~., data=cadets) > cv.lm(df = cadets, fit, m = 10) ...
0
votes
1answer
121 views

Viewing your predicted to actual values in R for random Forest

So I have a dataset that is 162 x 151:- RT (seconds) 76_TI2 114_DECC 120_Lop 212_PCD 38 4.086 1.2 2.322 0 40 2.732 0.815 1.837 1.113 41 4.049 1.153 2.117 2.354 41 4.049 ...
2
votes
1answer
210 views

Incorporating cross validation in stepwise regression in R

I have a dataset of 162 observations with a 151 different variables and I would like to perform stepwise regression on it, but to also do 10 fold cross validation on it. I have used the package DAAG ...
1
vote
1answer
59 views

Performing additional validation in LIBSVM matlab

I am working on MATLAB LIBSVM for a while to do prediction. I have a dataset out of which I use 75% for training, 15% for finding best parameters and remaining for testing. The code is given below. ...
0
votes
0answers
66 views

Weka: Knowledge Flow Outputs per Cross validation

In Knowledge Flow, Weka outputs results per validation set. For example if Im using J48 classifier with 10 fold cross validation. It outputs 10 graphs. how can i select which graph is the final ...
0
votes
1answer
530 views

Feature selection + cross-validation, but how to make ROC-curves in R

I'm stuck with the next problem. I divide my data into 10 folds. Each time, I use 1 fold as test set and the other 9 as training set (I do this ten times). On each training set, I do feature selection ...
2
votes
0answers
597 views

Cross validation on glm model in R using CVtools

So I had a similar problem not too long ago and someone suggested to me to reduce my data set, which I have done so massively. At first I had 1664 variables, and now I only have 153. I'm attempting to ...
0
votes
1answer
123 views

How does sklearn LassoCV perform cross validation?

I would like to know how does sklearn.LassoCV perform cross validation. In particular I would like to know how are the samples subdivided in the folds. Is it a random or deterministic process? For ...
0
votes
1answer
130 views

Cross-validation for model comparison

I have a relative big data: more than 370,000 observations, categorical dependent variable with 250 levels,10 independent variables which including both numeric and categorical variables. I want to ...
0
votes
0answers
157 views

How to do K-fold cross-validation with Mahout?

Mahout 0.8 introduces the CrossFoldLearner) class. Since it is so new, I am unable to find good documentations and examples of using it. How do I perform K-fold cross-validation using Mahout ...
0
votes
0answers
117 views

Cost function in cv. glm for a fitted logistic model when cutoff value of the model is not 0.5

I have a logistic model fitted with the following R function: glmfit<-glm(formula, data, family=binomial) A reasonable cutoff value in order to get a good data classification (or confusion ...
1
vote
0answers
49 views

GLMMADMB and Crossvalidation

I am using a zero-inflated negative binomial mixed model using package glmmADMB in R. I am interested in using cross validation but packages like DAAG fail during implementation. I am assuming that ...
0
votes
0answers
30 views

5 fold cross validation with less FOR cycles

I am having troubles with this cross validation function. I need to make it more efficient, maybe using the apply function but I can not figure out how. This function receives as inputs a Matrix M ...
6
votes
2answers
849 views

R: Cross validation on a dataset with factors

Often, I want to run a cross validation on a dataset which contains some factor variables and after running for a while, the cross validation routine fails with the error: factor x has new levels Y. ...
2
votes
1answer
157 views

scikit-learn PCA doed not have 'score' method

I am trying to identify the type of noise based on that article: Model selection with Probabilistic (PCA) and Factor Analysis (FA) I am using scikit-learn-0.14.1.win32-py2.7 on win8 64bit I know ...
0
votes
1answer
464 views

question about K-fold cross validation in classification tree model in big data

I want perform a 5-fold CV for a classification tree model with packages"rpart", before this i use a code to divide my data into 5 subdatasets, and 1 error comes out: errors come out during the ...
0
votes
1answer
66 views

Crossvalidation in Stanford NER

I'm trying to use cross validation in Stanford NER. The feature factory lists 3 properties: numFolds int 1 The number of folds to use for cross-validation. startFold int 1 The starting fold ...
1
vote
3answers
520 views

How to split a data into k-folds NOT randomly in matlab?

I have a dataset, for simplicity let's say it has 1000 samples (each is a vector). I want to split my data for cross validation, for train and test, NOT randomly1, so for example if I want 4-fold ...
2
votes
3answers
2k views

How to perform random forest/cross validation in R

I'm unable to find a way of performing cross validation on a regression random forest model that I'm trying to produce. So I have a dataset containing 1664 explanatory variables (different chemical ...
0
votes
1answer
95 views

Crossvlaidation classifier display outputs in matlab

I have a simple question and I'am not very familiar with matlab. so code would be very helpfull ;). I do have a KNN classifier which I want to evaluate via crossvalidation. My code looks like the ...
0
votes
1answer
173 views

feature selection and cross validation

I want to train a regression model and in order to do so I use random forest models. However, I also need to do feature selection cause I have so many features in my dataset and I'm afraid if I used ...