In learning algorithms and statistical classification, a random forest is a classifier that consists in many decision trees. It outputs the class that is the mode of the classes output by individual trees, in other words, the class with the highest frequency.

learn more… | top users | synonyms

-2
votes
0answers
42 views

Random forest prediction accuracy [closed]

I am trying to understand the Random Forest algorithm: 1.Let the number of training cases be N, and the number of variables in the classifier be M. 2.We are told the number m of input variables to ...
0
votes
1answer
44 views

Random forest package in R shows error during prediction() if there are new factor levels present in test data. Is there any way to avoid this error?

I have 30 factor levels of a predictor in my training data. I again have 30 factor levels of the same predictor in my test data but some levels are different. And randomForest does not predict unless ...
0
votes
0answers
34 views

Does random forest in R have a limitation of size of training data?

I am training randomforest on my training data which has 114954 rows and 135 columns (predictors). And I am getting the following error. model <- randomForest(u_b_stars~. ...
0
votes
3answers
38 views

Features considered by ExtraTreeRegressor of Scikit Learn to construct Random Forest

I came across this example which involves completion of face for the test data set. Here, a value of 32 for max_features is passed to the ExtraTreesRegressor() function. I learnt that decision trees ...
0
votes
2answers
48 views

R becomes unresponsive while running randomforest on huge data. Does this mean it is still running or it has stopped working?

My data contains 229907 rows and 200 columns. I am training randomforest on it. I know it will take time. But do not know how much. While running randomforest on this data, R becomes unresponsive. "R ...
0
votes
1answer
34 views

Random forest does not seem to handle more than 32 categories of factors. What do I do to include these factors in training my model?

I am trying to train Random forest on my training data which has predictors like 'names', 'city'. These two predictors have more than 32 categories. What do I do to include them? Even some other ...
1
vote
1answer
49 views

Mahout: How to Use Random Forests to Make Online Predictions

I just tried the BreimanExample on UCI's glass data after working through this simple example: https://cwiki.apache.org/MAHOUT/breiman-example.html My question is, once I create a RandomForest in ...
2
votes
2answers
94 views

Memory efficient classifiers in R for extremely wide and not too long training set

Training data set is is extremely wide (about 200K features) and very short (in hundreds). Obviously the data set occupies a lot of memory but R reads it without problems. Then I trained Random ...
0
votes
1answer
34 views

How to perform linear/logistic regression on predictions of different models (say randomforest, gbm, svm etc)?

Basically it is done to improve the predictions by creating an ensemble. But how do we do that. Could somebody please explain using a sample code in R? I am just a learner. Any help would greatly be ...
1
vote
1answer
36 views

How do I combine the results (predictions) if I have generated predictions from say, randomforest, gbm, svm, nnet to get more accurate predictions?

More specifically, how to improve my predictions by creating an ensemble? I mean I know that we perform regression on the results(predictions) one gets from different algorithms(random forest, nnet, ...
1
vote
0answers
76 views

randomforest.r predict() function flags up missing data

Hi I am encountering an error using the predict() function in the randomForest.r package. Here is my error: > m<-predict(mdl,QdataTestX) Error in predict.randomForest(mdl, QdataTestX) : ...
2
votes
2answers
82 views

OpenCV, SIFT : All of the features of 2 different insects are matching

I wan to create a classifier in order to identify an insect by its captured image. At the first time, I used HuMomemnts but images captured in different resolutions gave incorrect results since ...
1
vote
0answers
59 views

Issues when using randomForest in caret with ROC as optimization metric

I'm having an issue when constructing random forest models using caret. I have a dataset of about 46k rows and 10 columns (one of which is the optimization target). From this dataset, I'm trying to ...
0
votes
0answers
34 views

cforest tree prediction rule extraction

Similarly to How I can extract the RandomForest from R for use in production? I aim to extract the rules from a Random forest in R (this time it is the class "RandomForest") in such a fashion such ...
-1
votes
1answer
93 views

How to know if a regression model generated by random forests is good? ( MSE and %Var(y)) [closed]

I tried to use random forests for regression. The original data is a data frame of 218 rows and 9 columns. The first 8 columns are categorical values ( can be either A, B, C, or D), and the last ...
0
votes
1answer
62 views

Read Table and Random Forest in R

I'm trying to use the Random Forest method in R. I need to read a txt file (training set). dataset<- read.table(path1,header=TRUE,sep=",") The column names are numeric (i.e 1005_at) so they are ...
0
votes
1answer
81 views

What is the way to represent factor variables in scikit-learn while using Random Forests?

I am solving a classification problem using Random Forests. For that I have decided to use Python library scikit-learn. But I am new to both Random Forest algorithm and this tool. My data contains ...
0
votes
0answers
29 views

Random Forest: mismatch between %IncMSE and %NodePurity

I have performed a random forest analysis of 100,000 classification trees on a rather small dataset (i.e. 28 obs. of 11 variables). I then made a plot of the variable importance In the resulting ...
0
votes
1answer
52 views

How to deserialize saved model in Weka-for-Android

I am facing a problem with loading saved model from sdcard. In Weka's official wiki I found 2 ways to deserialize serialized models, but non of them works on Android. //First Method RandomForest rf = ...
3
votes
0answers
50 views

Which Regression methods are suitable for binary valued features and continuous output?

I want to build a machine learning model to regression on continuous output given binary valued features(0,1). the dimension of my problem is around 200. which of the flowing methods seems suitable ...
1
vote
1answer
68 views

random forest error NA not permitted in predictors

Hi I am using the following r script to build a random forest: # load the necessary libraries library(randomForest) testPP<-numeric() # load the dataset QdataTrain <- ...
2
votes
2answers
234 views

Random Forest interpretation in scikit-learn

I am using sklearn.ensemble.RandomForestRegressor to fit a random forest regressor on a dataset. Now, that I have the results, is it possible to interpret this in some format where I can then ...
2
votes
1answer
55 views

multivariate random forest with opencv

Let's say we are trying to classify a pencil as healthy or not and we have two variables for this purpose: length and weight of the pencil. Now, what should I give to the training method of random ...
0
votes
1answer
33 views

R randomForest combined models - Error Message

All, This is the problem I am having. I hope someone can explain why I have a large dataset I am using to predict a categorical value - L,M,H - in the original data.frame it is a factor. The ...
0
votes
0answers
16 views

How to use Modelmap for random forest classification in GUI

I am trying to use R for random forest classification and a beginner in R.How to use Modelmap for random forest classification in GUI
-1
votes
1answer
59 views

Type Mismatch Error using randomForest in R

I am trying to use random forest in R for classifying some kaggle data but I keep getting the following error whenever I try to use the model which I have created. Error in predict.randomForest(fit, ...
0
votes
1answer
68 views

Fill data based on random forest object predicted response

Using randomForest, I get an RF object. E.g. forest <- randomForest(as.formula(generic),data=train, mtry=2)) Using predict I can predict the response on a test dataset. The response is either A,B ...
1
vote
0answers
73 views

R's randomForest() function error - any way I can get more info?

I'm getting the error message that "Type of predictors in new data do not match that of the training data." This confuses me, since I am able to get the same dat sets working under rpart and ctree. ...
0
votes
1answer
59 views

How to obtain all ensemble estimates in RandomForestRegressor (scikit-learn)

I'm trying to fit a random forest regression and I'd like to obtain a distribution of my estimate by looking at the output of every regression tree in the ensemble, returned to me in some sort of ...
0
votes
0answers
56 views

Build a jack knife diagram from randomForest importance output

I am trying to compare two models (rf/maxent) for classification. As maxent has a jackknife diagramm as standard output where variables are compared for when they are used alone ,with all variables ...
0
votes
2answers
212 views

Random Forest - Predict using less estimators

I've trained a Random Forest (regressor in this case) model using scikit learn (python), and I'would like to plot the error rate on a validation set based on the numeber of estimators used. In other ...
1
vote
1answer
131 views

Sklearn: How to Feed Data to sklearn RandomForestClassifier

I have this data: print training_data print labels # prints [[1, 0, 1, 1], [1, 1, 1, 1], [1, 0, 1, 1], [1, 1, 1, 0], [1, 1, 0, 1], [1, 1, 1, 1], [1, 1, 1, 1], [1, 1, 1, 1], [1, 1, 0,0], [1, 1, 1, ...
0
votes
0answers
87 views

Mahout: “Wrong number of attributes in the string” when running Partial Implementation algorithm

I am playing with Mahout Partial Implementation algorithm (by following the instructions here https://cwiki.apache.org/confluence/display/MAHOUT/Partial+Implementation). So I created a toy data set. ...
1
vote
3answers
184 views

How are feature_importances in RandomForestClassifier determined?

I have a classification task with a time-series as the data input, where each attribute (n=23) represents a specific point in time. Besides the absolute classification result I would like to find out, ...
2
votes
1answer
158 views

R tree-based methods like randomForest, adaboost: interpret result of same data with different format

Suppose my dataset is a 100 x 3 matrix filled with categorical variables. I would like to do binary classification on the response variable. Let's make up a dataset with following code: ...
2
votes
0answers
192 views

Comparison of Random Decision Forest implementation in C++ [closed]

I am currently converting some R code into C++ code, and I need a “good” C++ Random Decision Forest implementation. So far I found three big implementation (tmva, alglib and openCv), some ...
0
votes
0answers
100 views

Evaluate Random Forest performance after SMOTE

I have a highly imbalanced dataset. I balance it using the SMOTE algorithm. Now, I want to build a Random Forest classifier. Usually (for balanced datasets) I do not apply a cross-validation step ...
1
vote
2answers
160 views

is it neccessary to run random forest with cross validation at the same time

Random forest is a robust algorithm. In Random Forest, it trains several small trees and have OOB accuracy. However, is it necessary to run cross-validation with random forest at the same time ?
0
votes
1answer
154 views

regression with random forest on imbalanced data

I'm using r package of random forest to predict the distances between pairs of proteins based on their amino acid sequence, the main interest is the proteins that are close (has smaller distance). my ...
0
votes
0answers
53 views

R randomForest crash with oob.prox=FALSE

I'm consistently able to crash R with this lines: library(randomForest) x = matrix(runif(400), nrow=20) y = runif(20) rf = randomForest(x, y, proximity=TRUE, oob.prox=FALSE) with ...
1
vote
1answer
139 views

Building the dataset for Random Forest training procedure

I should use the bagging (abbreviation for bootstrap aggregating) technique in order to train a random forest classifier. I read here the description of this learning technique, but I have not figured ...
3
votes
1answer
932 views

Random Forest output interpretation

I have run random Forest for my data and got the output in form of matrix. I want to understand what are the rules it applied to classify. P.S. I want profile of the customer as output e.g. Person in ...
0
votes
1answer
314 views

Why does Weka RandomForest gives me a different result than Scikit RandomForestClassifier?

I am getting peculiar differences in results between WEKA and scikit while using the same RandomForest technique and the same dataset. With scikit I am getting an AUC around 0.62 (all the time, for I ...
1
vote
1answer
108 views

Up-sampling in R - randomForest

I have a highly imbalanced data and want to up-sample the minority class to improve accuracy (the minority class is the object of interest). I tried using the "sampsize" option in the "randomForest" ...
0
votes
1answer
206 views

Consistency between OOB error rate and the confusion matrix

When inspecting the statistics of my models, it looks like the numbers in the confusion matrix are not consistent with those of the OOB error rate in randomForest. How can I deduce the OOB error ...
0
votes
1answer
126 views

Errors with createGrid for rf (randomForest) when using caret

When I try to crate a grid of parameters for training with caret I get various errors: > my_grid <- createGrid("rf") Error in if (p <= len) { : argument is of length zero > my_grid <- ...
2
votes
1answer
124 views

Parallel processing in R

I'm working with a custom random forest function that requires both a starting and ending point in a set of genomic data (about 56k columns). I'd like to split the column numbers into subgroups and ...
0
votes
0answers
106 views

predict.randomForest argument nodes=TRUE

When I do predict on newdata for randomForest (R implementation) and set nodes=TRUE predict(rf, newdata = testset, nodes = TRUE) what is returned? It says it returns an n by ntree matrix, each ...
1
vote
1answer
219 views

parallel prediction with cforest/randomforest prediction (with doSNOW)

I'm trying to speed up the prediction of a test-dataset (n=35000) by splitting it up and letting R run on smaller chunks. (Also, partys cforest-prediction of 35k rows doesn't work as my RAM is not ...
1
vote
1answer
388 views

randomForest in R: Is there a possibility of calculating casewise confidence intervals?

R package randomForest reports mean squared errors for each tree in the forest. I need, however, a measure of confidence for each case in the data. Since randomForest calculates the casewise ...

1 2 3