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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Classifying text documents with random forests

I've a set of 4k text documents. They belong to 10 different classes. I'm trying to see how random forest method performs classification. The issue is my feature extraction class extracts 200k ...
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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 ...
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Proximity Matrix - Random Forest , R

I am using the randomForest package in R, which allows to calculate the proximity matrix (P). In the description of the package it describes the parameter as: "if proximity=TRUE when randomForest is ...
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Legend for Random Forest Plot in R

I have created a random forest prediction model in R using the randomForest function: model = randomForest(classification ~., data=train, ntree=100, proximity=T) Next I plotted the model in order ...
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Use of randomforest() for classification in R?

I originally had a data frame composed of 12 columns in N rows. The last column is my class (0 or 1). I had to convert my entire data frame to numeric with training <- ...
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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 ...
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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 ?
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Levels in R - Setting Correctly Against New Data Sets

I'm using randomForest in R. I train upon a set of data which includes a factor variable. This variable has the following levels: [1] "Economics" "Engineering" "Medicine" [4] "Accounting" ...
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781 views

Random forest classifier probability only has values 0, 0.1, 0.2… 1

I'm trying to use a random forest to classify my data, but when I generate the classifier probability, it always has a value like 0, 0.1, 0.2, ... 1 within 5 digits. Is this a statistics problem or a ...
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R randomForest subsetting can't get rid of factor levels [duplicate]

Possible Duplicate: dropping factor levels in a subsetted data frame in R I'm trying to use a randomForest to predict sales. I have 3 variables, one of which is a factor variable for ...
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RandomForestClassfier.fit(): ValueError: could not convert string to float

Given is a simple CSV file: A,B,C Hello,Hi,0 Hola,Bueno,1 Obviously the real dataset is far more complex than this, but this one reproduces the error. I'm attempting to build a random forest ...
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Rpy2 and Pandas: join output from predict to pandas dataframe

I am using the randomForest library in R via RPy2. I would like to pass back the values calculated using the caret predict method and join them to the original pandas dataframe. See example below. ...
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Using randomForest package in R, how to get probabilities from classification model?

TL;DR : Is there something I can flag in the original randomForest call to avoid having to re-run the predict function to get predicted categorical probabilities, instead of just the likely category? ...
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caret train rf model - inexplicably long execution

While trying to train random forest model with caret package, I noticed that execution time is inexplicably long: > set.seed = 1; > n = 500; > m = 30; > x = matrix(rnorm(n * m), nrow = ...
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random forest with categorical features in sklearn

Say I have a categorical feature, color, which takes the values ['red', 'blue', 'green', 'orange'], and I want to use it to predict something in a random forest. If I one-hot encode it (i.e. I ...
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160 views

R PMML class distribution

While trying to export an R classifier to PMML, using the pmml package, I noticed that the class distribution for a node in the tree is not exported. PMML supports this with the ScoreDistribution ...
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Use of scikit Random Forest sample_weights

I've been trying to figure out scikit's Random Forest sample_weight use and I cannot explain some of the results I'm seeing. Fundamentally I need it to balance a classification problem with unbalanced ...
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ROC curve for classification from randomForest

I am using randomForest package in R platform for classification task. rf_object<-randomForest(data_matrix, label_factor, cutoff=c(k,1-k)) where k ranges from 0.1 to 0.9. pred <- ...
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Random Forest Classifier Matlab v/s Python

I used a Random Forest Classifier in Python and MATLAB. With 10 trees in the ensemble, I got ~80% accuracy in Python and barely 30% in MATLAB. This difference persisted even when MATLAB's random ...
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Exact implementation of RandomForest in Weka 3.7

Having reviewed the original Breiman (2001) paper as well as some other board posts, I am slightly confused with the actual procedure used by WEKAs random forest implementation. None of the sources ...
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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 ...
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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 ...
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166 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 ...
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Issues with tuneGrid parameter in random forest

I've been dealing with some extremely imbalanced data and I would like to use stratified sampling to created more balanced random forests Right now, I'm using the caret package, mainly to for tuning ...
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88 views

OpenCV random forest: Setting a random seed

Sind there is randomness involved in the computation of a random forest classifier, it is necessary to define a random seed to get reproducible results. How does one do this for OpenCV CvRTrees? I do ...
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How do you change the cutoff parameter in R's randomForest?

The documentation says cutoff is "A vector of length equal to number of classes. The `winning' class for an observation is the one with the maximum ratio of proportion of votes to cutoff. Default is ...
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276 views

Add separate vlines to ggplot for each factor group (dotplot for variable importance random forest)

I am using ggplot2 to make a dotplot of six related variable importance results from a random forest. My data (which I have already converted to long format using reshape2) look like this (my real ...
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How to deal with multiple class ROC analysis in R (pROC package)?

When I use multiclass.roc function in R (pROC package), for instance, I trained a data set by random forest, here is my code: # randomForest & pROC packages should be installed: # ...
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885 views

Run cforest with controls = cforest_unbiased() using caret package

I would like to run an unbiased cforest using the caret package. Is this possible? tc <- trainControl(method="cv", number=f, index=indexList, ...
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Can sklearn Random Forest classifier adjust sample size by tree, to handle class imbalance?

Perhaps this is too long-winded. Simple question about sklearn's random forest: For a true/false classification problem, is there a way in sklearn's random forest to specify the sample size used to ...
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How do I install an older R package? [duplicate]

I am trying to install the R package bigrf within the RStudio console using the following command: install.packages('bigrf') However, I receive this error: "Warning in install.packages: package ...
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528 views

R foreach error when using formula notation in randomForest

I have an issue running a randomForest in parrallel using fore each. See this example, I create some data,then a formula notation. The formula works on a randomForest by itself. But fails when used in ...
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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 ...
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Random Forest on large xdf files without reading into a dataframe

Is there a way to run random forest on large (about 10gb) xdf (revolution R format) files? Obviously I can try rxReadXdf and covert it to a dataframe...but my machine only has 8gb ram and I may be ...
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44 views

randomForest package in R mse calculation

I feel like I'm missing something very basic here. I've run a random forest regression: INTERP.rf<-randomForest(y~.,data=df,importance=T,mtry=3,ntree=300) and then extracted the predictions for ...
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39 views

different variables training/test set with 'randomForest' package

Let's say I have a classification problem, and want to use the randomForest package in R to solve this. In my training set I want to add a third variable, var3, which is the product of var1 and ...
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96 views

rfsrc() command in randomForestSRC package R not using multi core functionality

I am using R (for Windows 7, 32 -bit) for doing text classification using randomForests. Due to large dataset, I looked up the Internet for speeding up model-building and came across randomForestSRC ...
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197 views

Why does caret's “parRF” lead to tuning and missing value errors not present with “rf”

I have a tidy dataset with no missing values and only numeric columns. The dataset is both large and contains sensitive information, so I won't be able to provide a copy of it here, unfortunately. ...
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scikit-learn Random Forest excessive memory usage

I'm running scikit-learn (version 0.15.2) Random Forest with python 3.4 in windows 7 64-bit. I have this very simple model: import numpy as np from sklearn.ensemble import RandomForestClassifier ...
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95 views

use random forest to classifier review, but hat key error?

I have follow code in python: from sklearn.ensemble import RandomForestClassifier forest = RandomForestClassifier(n_estimators = 100) forest = forest.fit( train_data_features, train["sentiment"] ) ...
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1answer
181 views

error in implementation of random forest in mice r package

Here is just example data: # generation of correlated data matrixCR <- matrix(NA, nrow = 100, ncol = 100) diag(matrixCR) <- 1 matrixCR[upper.tri (matrixCR, diag = FALSE)] <- 0.5 ...
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114 views

Modifying an OpenCV RandomTree classifier

My problem : objective is to implement a computer vision paper which uses a random tree structure to regress pixels from a rgbd image to 3D world coordinates. I used already OpenCv for AdaBoost and ...
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TreeBagger (Random Forests) Parameters in MATLAB

When I compared the Random Forest implementation of MATLAB (TreeBagger class) with the OpenCV implementation (Random Trees class), I found that several parameters that are present in the latter were ...
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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 ...
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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 <- ...
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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 ...
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256 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 ...
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574 views

Parallelize rfcv() function for feature selection in randomForest package

I wonder if anyone knows how to parallelize rfcv() function implemented in R-package 'randomForest'. Sorry if the question sounds very basic, but I tried to do this using 'foreach' without any ...
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why bootstrap result in overfitting for randomForest prediction? [migrated]

I am dealing with an imbalanced datasets with the R package randomForest. Some one has suggusted that, Bootstrap your data while over-sampling the rare class and under-sampling the common class. But I ...
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Trying to balance my dataset through sample_weight in scikit-learn

I'm using RandomForest for classification, and I got an unbalanced dataset, as: 5830-no, 1006-yes. I try to balance my dataset with class_weight and sample_weight, but I can`t. My code is: ...