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.

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R Random Forests Variable Importance

I am trying to use the random forests package for classification in R. The Variable Importance Measures listed are: mean raw importance score of variable x for class 0 mean raw importance score of ...
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How to use random forests in R with missing values?

I would like to fit a random forest model, but when I call library(randomForest) cars$speed[1] <- NA # to simulate missing value model <- randomForest(speed ~., data=cars) I get the following ...
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Suggestions for speeding up Random Forests

I'm doing some work with the randomForest package and while it works well, it can be time-consuming. Any one have any suggestions for speeding things up? I'm using a Windows 7 box w/ a dual core AMD ...
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how to extract the decision rules from scikit-learn decision-tree?

Can I extract the underlying decision-rules (or 'decision paths') from a trained tree in a decision tree - as a textual list ? something like: "if A>0.4 then if B<0.2 then if C>0.8 then ...
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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, ...
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Do I need to normalize (or scale) data for randomForest (R package)?

I am doing regression task - do I need to normalize (or scale) data for randomForest (R package)? And is it neccessary to scale also target values? And if - I want to use scale function from caret ...
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Random forest output interpretation

I have run a random forest for my data and got the output in the form of a matrix. What are the rules it applied to classify? P.S. I want a profile of the customer as output, e.g. Person from New ...
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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?
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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 ...
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What does the parameter 'classwt' in RandomForest function in RandomForest package in R stand for?

From help : "classwt - Priors of the classes. Need not add up to one. Ignored for regression." could setting classwt parameter help when you have heavy unbalanced data - priors of classes differs ...
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Random Forest with classes that are very unbalanced

I am using random forests in a big data problem, which has a very unbalanced response class, so I read the documentation and I found the following parameters: strata sampsize The documentation ...
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OpenCV - Random Forest Example

Do anyone have some example using Random Forests with the 2.3.1 API Mat and not the cvMat? Basicly i have a Matrix Mat data that consist of 1000 rows with 16x16x3 elements and a Matrix Mat responses ...
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RandomForest for Regression in R

I'm experimenting with R and the randomForest Package, I have some experience with SVM and Neural Nets. My first test is to try and regress: sin(x)+gaussian noise. With Neural Nets and svm I obtain a ...
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R: how to use long vectors with randomForest?

One of the new features of R 3.0.0 was the introduction of long vectors. However, .C() and .Fortran() do not accept long vector inputs. On R-bloggers I find: This is a precaution as it is very ...
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1answer
589 views

Random Forest Classifier Segmentation Fault

been trying to run the RF classifier on a data set of ~50,000 entries with 20 or so labels which I thought should be fine but I keep coming across the following when trying to fit... Exception ...
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R machine learning packages to deal with factors with a large number of levels

I'm trying to do some machine learning stuff that involves a lot of factor-type variables (words, descriptions, times, basically non-numeric stuff). I usually rely on randomForest but it doesn't work ...
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setting values for ntree and mtry for random forest regression model

I'm using R package of random forest to do regression on some biological data and my training data size is 38772 X 201 and I just wonder what would be a good values for the number of trees "ntree" and ...
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Recursive feature elimination on Random Forest using scikit-learn

I'm trying to preform recursive feature elimination using scikit-learn and a random forest classifier, with OOB ROC as the method of scoring each subset created during the recursive process. However, ...
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Parallel Random Forests with doSMP and foreach drastically increase memory usage (on Windows)

When executing random forest in serial it uses 8GB of RAM on my system, when doing it in parallel it uses more than twice te RAM (18GB). How can I keep it to 8GB when doing it in parallel? Here's the ...
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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 ...
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772 views

Save python random forest model to file

In R, after running "random forest" model, I can use save.image("***.RData") to store the model. Afterwards, I can just load the model to do predictions directly. Can you do a similar thing in ...
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How can I use the row.names attribute to order the rows of my dataframe in R?

I created a random forest and predicted the classes of my test set, which are living happily in a dataframe: row.names class 1 564028 1 2 275747 1 3 601137 0 4 922930 ...
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Python - Scikit find variable importance for categorical variables

I'm trying to use scikit learn in python to do a couple different classifier problems (RF, GBM, etc). In addition to building models and making predictions, I'd like to see variable importance. I ...
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Variable importance using the caret package (error); RandomForest algorithm

I am trying to obtain the variable importance of a rf model in any way. This is the approach I have tried so far, but alternate suggestions are very welcome. I have trained a model in R: ...
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R put multiple randomForest objects into a vector

I am curious if R has the ability to place objects into vectors/lists/arrays/etc. I am using the randomforest package to work on subsets of a larger piece of data and would like to store each version ...
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How I can extract the RandomForest from R for use in production?

I have a successful randomforest model, and I want to integrate it in another software, I know that I can use some libraries (like fastRF in Java o ALGLIB's DecisionForest for other languages) but ...
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Getting predictions after rfImpute

I'm doing some modelling using package randomForest. The rfImpute function is very nice for handling missing values when fitting the model. However, is there a way to get predictions for new cases ...
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1answer
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RandomForest in R linear regression tails mtry

I am using the randomForest package in R (R version 2.13.1, randomForest version 4.6-2) for regression and noticed a significant bias in my results: the prediction error is dependent on the value of ...
5
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879 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 ...
5
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Combining Multiple Random Forest Models from Amelia Imputed Data

I just created 40 imputed data sets using the Amelia package, and they are stored in a.out. I then used the lapply function to create randomforest models on the data sets: rf.amelia.out = ...
5
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1answer
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Incorporating observation weights in the randomForest package

How can I use the R randomForest package with observation weights? I know that there is no such option in this package. I have 2 questions: Are there any solutions to this problem using randomForest ...
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1answer
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Numpy Array Get row index searching by a row

I am new to numpy and I am implementing clustering with random forest in python. My question is: How could I find the index of the exact row in an array? For example [[ 0. 5. 2.] [ 0. 0. 3.] ...
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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 ...
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How to output RandomForest Classifier from python?

I have trained a RandomForestClassifier from Python Sckit Learn Module with very big dataset, but question is how can I possibly save this model and let other people apply it on their end. Thank you!
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Random Forest by R package party overfits on random data

I am working on Random Forest classification. I found that cforest in "party" package usually performs better than "randomForest". However, it seemed that cforest easily overfitted. A toy example ...
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Combining random forests built with different training sets in R

I am new to R (day 2) and have been tasked with building a forest of random forests. Each individual random forest will be built using a different training set and we will combine all the forests at ...
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Trouble understanding output from scikit random forest

Say I have a dataset like this: 5.9;0.645;0.12;2;0.075;32;44;0.99547;3.57;0.71;10.2;5 6;0.31;0.47;3.6;0.067;18;42;0.99549;3.39;0.66;11;6 where the 1st 11 columns indicate features (acidity, ...
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Random forest on a big dataset

I have a large dataset in R (1M+ rows by 6 columns) that I want to use to train a random forest (using the randomForest package) for regression purposes. Unfortunately, I get a Error in matrix(0, n, ...
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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", ...
4
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How do I solve overfitting in random forest of Python sklearn?

I am using RandomForestClassifier implemented in python sklearn package to build a binary classification model. The below is the results of cross validations: Fold 1 : Train: 164 Test: 40 Train ...
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Python Scikit Random Forest Regressor Error

I am trying to load training and test data from a csv, run the random forest regressor in scikit/sklearn, and then predict the output from the test file. The TrainLoanData.csv file contains 5 ...
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in R Plot importance variables of Random Forest model

What am I doing wrong here? What does "subscript out of bound" mean? I got the below code (first block) excerpt form a Revolution R online seminar regarding datamining in R. I'm trying to incorporate ...
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How to use R Random forests to reduce attributes having no discrete classes?

I want to use Random forests for attribute reduction. One problem I have in my data is that I don't have discrete class - only continuous, which indicates how example differs from 'normal'. This class ...
4
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1answer
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RandomForestClassifier vs ExtraTreesClassifier in scikit learn

Can anyone explain the difference between the RandomForestClassifier and ExtraTreesClassifier in scikit learn. I've spent a good bit of time reading the paper: P. Geurts, D. Ernst., and L. Wehenkel, ...
4
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1answer
526 views

Proximity Matrix in sklearn.ensemble.RandomForestClassifier

I'm trying to perform clustering in Python using Random Forests. In the R implementation of Random Forests, there is a flag you can set to get the proximity matrix. I can't seem to find anything ...
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PySpark & MLLib: Class Probabilities of Random Forest Predictions

I'm trying to extract the class probabilities of a random forest object I have trained using PySpark. However, I do not see an example of it anywhere in the documentation, nor is it a a method of ...
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Get field values from rpy2 Random Forest object

I'm trying to run the R Random Forest implementation using Python. I'm using the rpy2 module to get this done easily. Here is a simple example with random generated data: import numpy as np from ...
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Correct ratio of positive to negative training examples for training a random forest-based binary classifier

I realized that the related question Positives/negatives proportion in train set suggested that a 1-to-1 ratio of positive to negative training examples is favorable for the Rocchio algorithm. ...
4
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New factor levels not present in the training data

When trying to use the output of randomForest to classify new data (or even the original training data), I get the following error: > res.rf5 <- predict(model.rf5, train.rf5) Error in ...
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When using multiple classifiers - How to measure the ensemble's performance? [SciKit Learn]

I have a classification problem (predicting whether a sequence belongs to a class or not), for which I decided to use multiple classification methods, in order to help filter out the false positives. ...