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

learn more… | top users | synonyms

0
votes
0answers
15 views

In the penalized package in R for poisson regression, I get -inf for the cross validated log likelihood at lambdas below 1000. Why?

Here is my code: pois.pen.lm.free.ipad.2 = optL2(dl.free ~ offset(genre.ts.fit)+offset(rank.ts.fit*log(topfreeipadapplications.Rank)), ...
0
votes
0answers
7 views

Log transform dependent variable for regression tree

I have a dataset where I find that the dependent (target) variable has a skewed distribution - i.e. there are a few very large values and a long tail. When I run the regression tree, one end-node is ...
1
vote
1answer
36 views

Using F1-scores and cross validation to select SVM parameters

I need to keep track of the F1-scores while tuning C & Sigma in SVM, For example the following code keeps track of the Accuracy, I need to change it to F1-Score but I was not able to do that……. ...
0
votes
0answers
32 views

Why are the cross validation results for my classifier so different?

I am making a predictive model in python with scikit-learn, and I am trying to cross validate to get a valid F1 score. However, depending on my CV method, I am getting very different results. It seems ...
0
votes
0answers
34 views

R : calculating MAE using arima

I am trying to calculate the mean absolute error MAE using cross validation method for Solar PV data with R, the forecast is done by arima using the package Forecast, I have an hourly average data ...
2
votes
1answer
29 views

How to Cross Validate Properly

I have been trying to train a ML classifier using Python and the scikit-learn toolkit. First I applied my own threshold (e.g int(len(X)*0.75)) in splitting the dataset and got this result when ...
0
votes
0answers
39 views

Matlab Cross Validation with multiple classes using neural network

I'm currently having a problem with MATLAB's cross validation function 'crossvalind'. the objective is to classify speeches into different emotion classes(i.e anger, happy, sad, neutral), and i have ...
2
votes
1answer
40 views

Using GridSearchCV for RandomForestRegressor

I'm trying to use GridSearchCV for RandomForestRegressor, but always get ValueError: Found array with dim 100. Expected 500. Consider this toy example: import numpy as np from sklearn import ...
3
votes
0answers
48 views

Tree sizes given by CP table in rpart

In the R package rpart, what determines the size of trees presented within the CP table for a decision tree? In the below example, the CP table defaults to presenting only trees with 1, 2, and 5 nodes ...
2
votes
1answer
29 views

cross validating a train set where the class variable has a different distribution than the actual population

(noob in ML, be patient) I want to test the performance of my scikit-learn SVMLinear classifier. My train-set has a different class distribution than the actual population, but my test-set is a ...
0
votes
1answer
20 views

Any reason why these instance could be misclassified?

I started off with two files training & testing. Then using libsvm I scaled both those files to training.scale and testing.scale Then using grid.py (part of libsvm) I ran training.scale and and ...
0
votes
1answer
43 views

(Python - sklearn) How to pass parameters to the customize ModelTransformer class by gridsearchcv

Below is my pipeline and it seems that I can't pass the parameters to my models by using the ModelTransformer class, which I take it from the link ...
1
vote
1answer
52 views

Supervised Learning validation Set - ANN

I have implemented a Neural Network in Processing using Supervised Learning method. What I'm actually doing is training some circles to move on their target position. My code works perfectly ...
0
votes
1answer
25 views

Evaluating models on the entire training set with no cross-validation

We have a dataset with 10,000 manually labeled instances, and a classifier that was trained on all of this data. The classifier was then evaluated on ALL of this data to obtain a 95% success rate. ...
0
votes
0answers
33 views

Cross Validation WEKA random

WEKA Cross Validation: Classifier cls = new J48(); Evaluation eval = new Evaluation(data); Random rand = new Random(1); // using seed = 1 int folds = 10; eval.crossValidateModel(cls, data, ...
0
votes
2answers
104 views

Clustering with Cross Validation in Rapid Miner

I'm not sure what I'm doing wrong here but I'm hoping someone can help me out. I am trying to run x-validation in rapid miner with k-means clustering as my model. I import my dataset, set a role of ...
0
votes
0answers
22 views

How to store cross validated models and use the model to predict

I have used cross validation with boot package to create 10 fold cv results. But I would like to use the selected variables to predict on another dataset. This is how far I have got model ...
0
votes
1answer
45 views

How to do the CV test to examine the classification error of LDA in R

Please give me a simple example. I am in worry! I have tried the errorest function and do it as the example as it give for 10-fold cv of LDA. But when I used my own data, it just said the predict is ...
1
vote
1answer
30 views

sklearn Kfold acces single fold instead of for loop

After using cross_validation.KFold(n, n_folds=folds) I would like to access the indexes for training and testing of single fold, instead of going through all the folds. So let's take the example ...
0
votes
0answers
11 views

Use k-fold cross-validation with CRFSuite and save it in a model file

I'm new with the CRFSuite library but I know how to train a model and save it in a file thanks to the "-m" option. However, I try to master de k-fold cross-validation but the "-m" option seem to not ...
1
vote
1answer
31 views

How to use GridSearchCV for a new Estimator? In this case a Ensemble of Three Classifiers

My code is the following: import numpy as np from sklearn.neighbors import KNeighborsClassifier from sklearn.svm import SVC from sklearn.linear_model import SGDClassifier from sklearn.grid_search ...
0
votes
0answers
71 views

10-fold Cross Validation for Model performance

I am a newbie in Validating models, I am currently trying to make use of the MATLAB K-fold validation to assess the performance of my polynomial model that predicts house prices. I have 243 samples, i ...
0
votes
1answer
34 views

Statistics & Machine learning predict success or failure of actions

So currently I have a machine learning type setup with an artificial neural network type of system set up..out of the data query I get when asking for say a specific date and time and the success of ...
0
votes
1answer
42 views

How to customize sklearn cross validation iterator by indices?

Similar to Custom cross validation split sklearn I want to define my own splits for GridSearchCV for which I need to customize the built in cross-validation iterator. I want to pass my own set of ...
2
votes
1answer
37 views

Using cross-validation to find the right value of k for the k-nearest-neighbor classifier

I am working on a UCI data set about wine quality. I have applied multiple classifiers and k-nearest neighbor is one of them. I was wondering if there is a way to find the exact value of k for nearest ...
2
votes
1answer
45 views

Variable error rate of SVM Classifier using K-Fold Cross Vaidation Matlab

I'm using K-Fold Cross-validation to get the error rate of a SVM Classifier. This is the code with wich I'm getting the error rate for 8-Fold Cross-validation: data = load('Entrenamiento.txt'); group ...
0
votes
0answers
37 views

Run crossfold and random forest using scikit-learn

I have following data set as my training data user_id,f1,f2,f3,f4,f5,f6,f7,f8,f9,f10,X 1,264,7931,12230,1,1,274,0,0,7,9,21 2,527,1141,14680,1,1,481,0,0,10,9,18 3,953,174,22857,1,0,878,0,0,8,9,18 ...
0
votes
0answers
117 views

R - glmnet - logistic regression - cross validation - print final auc value

I have just started working with the glmnet package in R. I have s a dataset which has about 130,000 features and about 32000 rows of data. Here is the code to create the model myModel = ...
0
votes
0answers
53 views

How to save Azure ML model using the cross validation?

I created a flow in the Azure ML. I am using the Cross Validation feature. Need to the save the trained model WITH the cross validation. Anyone has an idea how to save this train model?
1
vote
0answers
21 views

Find AUC with tree package - binary response

Attempting to get ROC Curve and AUC for CART decision tree which was made using "tree" package. > str(pruned.tree7) Here is the Structure of my tree 'data.frame': 13 obs. of 6 variables: $ ...
0
votes
1answer
72 views

problems with cross validation code - r -

I'm writing a function to perform logistic regression on two columns of a dataframe. I can't get around the errors... I am trying to use 10-fold cross validation. Here's the code I'm using: SAdata = ...
0
votes
0answers
34 views

CV error larger then test set prediction error

I'm using scikit-learn's RandomForestRegressor to build a model for one of my data-sets, along with GridSearchCV to determine model hyperparameters. I evaluate the predictive capability of the model ...
0
votes
0answers
15 views

Cross-validation using Krzanowski

Cross-validation using Krzanowski (this method aims to split data into observation-wise (row-wise) and variable-wise (column-wise). I ask how I must split my data, I must leave out all the ...
0
votes
1answer
50 views

10 fold Cross Validation - function issues

I have created a function to perform 10 fold cross validation on a data set birthwt from library(MASS). The code within the function is doing what i want it to do. However, i want to use the values ...
0
votes
1answer
79 views

10-fold cross validation for polynomial regressions

I want to use a 10-fold cross validation method, which tests which polynomial form (first, second, or third order) gives a better fit. I want to divide my data set into 10 subsets and remove 1 subset ...
0
votes
1answer
35 views

Is validation set necessary in neural networks while cross validation alone works well in regression based models?

Do we need the validation in neural networks because neural networks do not always converge to the same answer? I have never heard of a validation set in models such as regression or ensemble ...
0
votes
1answer
46 views

How to divide svm_problem into 5 folds for custom cross validation - LIBSVM

I am attempting to implement my own cross-validation function for LIBSVM, however I am confused on how to process the data structures that have been provided to me based on my input data. The data is ...
0
votes
1answer
35 views

how to optimize the crossvalidation for libsvm matlab?

I'm using libsvm for classification. I'm using cross validation to tune the parameters C and gamma. The no. of observations I'm using for cross validation is about 6000~7000. But it is taking huge ...
0
votes
0answers
62 views

Misclassification of variables in R

How can you create a function in R that will identify the misclassification of explanatory variables? For example using: library("MASS") library("dplyr") data(birthwt) Which of the explanatory ...
1
vote
1answer
94 views

Is there a way to get the partial likelihood of a Cox PH Model with new data and fixed coefficients?

I'm performing a cross validation on a competing risks proportional hazards model. With help from the mstate pacakge, I've prepared my data and am fitting it with survival::coxph. I get a fitted Cox ...
0
votes
0answers
18 views

Miss-classifications cost in R

I have a pretty unbalanced dataset with 100,000 rows with a binary outcome variable. The ratio of occurrence of 1's is very low (about 1%). I have over sampled the data as of right now and set it to a ...
0
votes
0answers
54 views

any demo for statsmodels regression model in crossvalidation setting?

I want to learn multiple linear regression model for my data frame. Below is demo code. Everywhere on internet I only found as such code where target variable can be learned with other variables but ...
0
votes
0answers
79 views

MATLAB implementation of random forests using 'fitensemble'

I've written some very simple code to estimate the misclassification error from a random forest classifier by using 10-fold cross validation. I've used the function fitensemble (contained in the ...
1
vote
1answer
399 views

k-fold cross-validation to find misclassification rate

I am trying to write a function which takes a binary response variable y and a single explanatory variable x, runs 10-fold cross validation and returns the proportion of the response variables y that ...
0
votes
0answers
150 views

Error in scikit.learn cross_val_score

please refer to the notebook at the following address LogisticRegression this portion of code, scores = cross_val_score(LogisticRegression(), X, y, scoring='accuracy', cv=10) print scores print ...
-3
votes
2answers
94 views

Cross-validation R packages for survival analysis? [closed]

Are there any cross-validation packages in R that work with survival models, like a weibull model?
0
votes
0answers
24 views

Output of feature selection using filter method like Relief with cross validation?

If we use a filter method for ranking the features like Relief . suppose I have 100 features with 1000 sample and I used cross validation 3-fold . therefore I have 3 ranks for may features . at the ...
0
votes
0answers
21 views

Large memory consumption with Ridge

I'm trying to do cross-validation with scikit-learn, and I'm running into some memory issues that are hard to figure out. Basically, I've found that when I increase the number of hyperparameters ...
1
vote
1answer
101 views

Leave one out accuracy for multi class classification

HiI am a bit confused about how to use the leave one out (LOO) method for calculating accuracy in the case of a multi-class, one v/s rest classification. I am working on the YUPENN Dynamic Scene ...
0
votes
0answers
151 views

cvFit() cross-validation error for nls model: “Error: object of type 'symbol' is not subsettable”

I have this nls() model running pretty smoothly, and I want to be able to do a cross-validation using the cvTools package, but I get this error when I run the cvFit() function: Error: object of ...