1
vote
0answers
10 views

How to estimate confidence level for SVM or Random Forest?

I have two classes (say 1 and 0), and want to build a classifier. It is possible to use artificial neural networks (ANN) or any "real" classifying method such as SVM or Random Forest. In case of ANN, ...
0
votes
0answers
14 views

Estimating class probabilities with hierarchical random forest models

I am using a Random Forest classifier (in R) to predict the spatial distribution of multiple native plant communities using a variety of environmental variables as predictors. This classification ...
0
votes
0answers
19 views

Relative importance of a set of predictors in a random forests classification in R [migrated]

I'd like to determine the relative importance of themes of variables toward a randomForest classification model in R. The importance function provides the MeanDecreaseGini metric for each individual ...
0
votes
0answers
33 views

What algorithm use for random forests?

i am working on my master's thesis. I have some data and i need find some algorithm whitch must tell me if this data represents brain or not. I have same train data where i know whether it is brain or ...
0
votes
1answer
50 views

How do I get individual tree probabilities from Random Forests in R?

I'm using the randomForest package in R on a classification problem (outcome is binary). I want to get the probability output of each one of the trees (to get a prediction interval). I've set the ...
0
votes
0answers
59 views

random forest vs support vector machine on image processing

I recently worked on the image recognition. One data point consists of one feature vector x and its label y. Image features I used are like this: gist, color histgram, HOG. I vectorize these features ...
4
votes
1answer
199 views

Scikit learn - Random Forest Classifier

I am struggling to use Random Forest in Python with Scikit learn. My problem is that I use it for text classification (in 3 classes - positive/negative/neutral) and the features that I extract are ...
0
votes
1answer
51 views

Trivial random forest with OpenCV doesn't work and isn't the same as sklearn

I'm trying to get the simplest example of random forest to work. The training data is 2 points {0,0} with a label 0 and {1,1} with a label 1. The sample to predict is {2,2}. OpenCV returns 0 rather ...
0
votes
1answer
70 views

Extract a subset of tree from random forest model for prediction

From Liaw's classification and regression by RF paper, "The best way to determine how many trees are necessary is to compare predictions made by a forest to predictions made by a subset of forest" I ...
0
votes
1answer
51 views

Out of bag observation in randomForest R-Package

I need to find the object in randomForest that has the out-of-bag data. The out-of-bag error rate can be found but the observations on which this error is based are not given. How to find this object? ...
2
votes
1answer
228 views

Why is scikit-learn's random forest using so much memory?

I'm using scikit's Random Forest implementation: sklearn.ensemble.RandomForestClassifier(n_estimators=100, max_features="auto", ...
2
votes
1answer
117 views

Random Forest not working in opencv python (cv2)

I can't seem to correctly pass in the parameters to train a Random Forest classifier in opencv from python. I wrote an implementation in C++ which worked correctly, but do not get the same results in ...
0
votes
1answer
318 views

Unbalanced classification using RandomForestClassifier in sklearn

I have a dataset where the classes are unbalanced. The classes are either '1' or '0' where the ratio of class '1':'0' is 5:1. How do you calculate the prediction error for each class and the ...
0
votes
1answer
87 views

Mean absoluate error of each tree in Random Forest

I am using the evaluation class of weka for the the mean absolute error of each generated tree in random forest. The explanation says that "Refers to the error of the predicted values for numeric ...
1
vote
0answers
383 views

Why does Weka RandomForest prediction differ from validation?

I just started to use Weka several weeks ago for a land cover classification of remotely sensed data. I'm no Data Mining expert, but until now, everything worked properly. By the way, I'm using Weka ...
-1
votes
1answer
1k views

What is out of bag error in Random Forests?

What is out of bag error in Random Forests? Is it the optimal parameter for finding the right number of trees in a Random Forest?
0
votes
1answer
596 views

random forest variable lengths differ

I am trying to run RF using a feature as the response variable. I am having trouble passing a string through a variable to be used as the response in RF. First I try running RF on the string ...
1
vote
2answers
133 views

progressive random forest?

I am considering using random forest for a classification problem. The data comes in sequences. I plan to use first N(500) to train the classifier. Then, use the classifier to classify the data after ...
0
votes
1answer
102 views

How to use random forests in R for classification to decide if the value of a column is less or greater than a value N?

I have already used random forests in R for classification where the concerned column has categorical values ( 0 or 1 for example). For example, for the iris database, we can use random forests to ...
3
votes
3answers
239 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 ...
2
votes
0answers
486 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
1answer
269 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 ...
1
vote
2answers
513 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
2answers
3k views

R randomForest for classification

I am trying to do classification with randomForest, but I am repeatedly getting an error message for which there seems to be no apparent solution (randomForest has worked well for me doing regression ...
1
vote
1answer
803 views

Regression Tree Forest in Weka

I'm using Weka and would like to perform regression with random forests. Specifically, I have a dataset: Feature1,Feature2,...,FeatureN,Class 1.0,X,...,1.4,Good 1.2,Y,...,1.5,Good 1.2,F,...,1.6,Bad ...
1
vote
1answer
325 views

Random Forest in R - many classes

I want to do a multilabel classification with R randomForest. I have ten classes A..J, I found examples how to predict a single class, like: r = randomForest(J ~., data=train, importance=TRUE, ...
0
votes
1answer
1k views

scikit-learn RandomForestClassifier produces 'unexpected' results

I'm trying to use sk-learn's RandomForestClassifier for a binary classification task (positive and negative examples). My training data contains 1.177.245 examples with 40 features, in SVM-light ...
1
vote
0answers
360 views

Matlab TreeBagger Cost argument not working as it works with similar function fitensemble

The cost matrix of my TreeBagger class and fitensemble (Bag method) are both [0 8;1 0] for binary classification. The confusion matrix on fitensemble shows that the classfication tends to turn in the ...
1
vote
6answers
3k views

Random Forest: high accuracy by one class and very low accuracy by the other

I am new to random forest classifier. I am using it to classify a dataset that has two classes. - The number of features is 512. - The proportion of the data is 1:4. I.e, 75% of the data is from the ...
0
votes
1answer
127 views

How to estimate amount of memory needed for binary classifier?

Say I wanna create a binary classifier for detecting SPAM messages. I have a billion of training examples and about 20 features. I want my trained classifier to fit in memory (I will run it on cloud ...