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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Levels of Variable and Random Forest

Consider a data set train: z a 1 1 0 2 0 1 1 3 0 1 1 2 1 1 0 3 0 1 1 3 with a binary outcome variable z and a categorical predictor a ...
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Understanding the Random Forest output of a mahout program

I constructed a Random Forest using the BuildForest utility in mahout. But I seem to be at loss to get stats on individual attributes (weightage | entropy | whatever). How do I make sense of the .seq ...
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trying to use package bootstrap to run a jackknife on my Random Forest model

I'm having trouble trying to figure out the following: I am running Random Forest for classification of habitat use and have GPS data from 17 animals. My data frame depicts different habitat ...
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237 views

randomForest does not work when training set has more factors than test set

When trying to test my trained model on new test data that has less factor levels than my training data, predict() returns the following: Type of predictors in new data do not match that of the ...
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662 views

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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r random forest error - type of predictors in new data do not match

I am trying to use quantile regression forest function in R (quantregForest) which is built on Random Forest package. I am getting a type mismatch error that I can't quite figure why. I train the ...
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Python vectorization for classification [duplicate]

I am currently trying to build a text classification model (document classification) with roughly 80 classes. When I build and train the model using random forest (after vectorizing the text into a ...
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699 views

parRF on caret not working for more than one core

parRF from the caret R package is not working for me with more than one core, which is quite ironic, given the par in parRF stands for parallel. I'm on a windows machine, if that is a relevant piece ...
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45 views

How does scikit's cross validation work?

I have the following snippet: print '\nfitting' rfr = RandomForestRegressor( n_estimators=10, max_features='auto', criterion='mse', max_depth=None, ) rfr.fit(X_train, y_train) # ...
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573 views

“Non-conformable arguments” error with Random Forest in R

I am trying to make a simple estimate of the error of my Random Forest model in R (using package party). However, I get the error Error in w %*% response@predict_trafo : non-conformable arguments when ...
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92 views

Apache Mahout - How to save a Dataset Object to HDFS?

Last summer we had an intern write an Apache Mahout job in Java that performs a Random Forest Classification analysis on some data. This job was created with Apache Mahout 0.7. Now we have ...
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sklearn random forest: oob score too low?

I was searching for applications for random forests, and I found the following knowledge competition on Kaggle: https://www.kaggle.com/c/forest-cover-type-prediction. Following the advice at ...
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543 views

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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How to use or translate a random forest model built using bigRF package in randomForest package?

I have a random forest model built using the bigrfc() function of the bigrf package in R. I would like to use that model with the prediction function of randomForest package (the ...
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37 views

How to fix “error in eval() ” for random forest?

I am getting an error with random forest and Rstudio on a windows 8 machine: Error in eval(expr, envir, enclos) : ..6 used in an incorrect context, no ... to look in what I am doing wrong? ...
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23 views

Maximizing clusters for aggregated data with attributes

I have some measures and some attributes from a business database I want to see if the data has some well defined clusters but the challenge is that the data is stored in an aggregated fashion in a ...
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256 views

Highly imbalanced data on C5.0 tree model

I have a imbalanced dataset with only 87 target events "F" out of all 496,978 obs, since I would like to see a rule/tree, I chose to use the tree models, I have been following the codes in "Applied ...
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246 views

randomForest Predict error from test set

I am running into a an error with the R package of randomForest where after I split the data using Caret into training and testing, when I go to predict I run into error: Error in ...
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120 views

Weak learner in scikit learn random forest and extra tree classifiers

In the paper "Decision Forests for Classification, Regression, Density Estimation, Manifold Learning and Semi-Supervised Learning", the authors speak of different types of weak learners: axis-aligned ...
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Distribution used in gbm

My question is a little more generic and not specific to a technique per se. First- What is the difference between GBM & Random forest and which 1 is better? Second- When i try to run GBM using ...
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125 views

R Random Forest prediction not working

I'm new to Random Forests in R, and I'm trying to make a prediction. I have built a Random Forest model using the following code, which works fine library(randomForest) RF_model = ...
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52 views

Random Forest with two predictors

I'm using random forest to estimate the importance (%IncMSE) of a number of predictors. Afterwards, I use a combination of all predictors but one, and I calculate their importance again. RandomForest ...
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364 views

Get variable importance in cforest (party package)

I am using the cforest from party package in order to get the variable importance plots, but to use the plots found here on pg 4. I am coming across the error: ## Error in ...
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Python : Exporting a trained Random forests classifier (.pkl) to android device

I have a trained Random forest classifier in Python. I want to export it to an android device so that I can classify incoming data streams. I have saved it to a .pkl file but cannot find anything ...
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447 views

Perform cross-validation on randomForest with R

I am using the randomForest package for R to train a model for classification. To compare it to other classifiers, I need a way to display all the information given by the rather verbose ...
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explicit and implicit model specification in randomForest leads to different results

I am using a simple data set extracted from Cars93 in the MASS package in R. I am running a randomForest on this simple data set predicting origin (usa or non-usa) from four other predictors. If i ...
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Using OpenCV Random Forest for Regression

I have previously used Random Forest for Classification task, setting the params using the example here as a guide. It works perfect. However now I want to solve a regression problem. I kind of have ...
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How to read a .seq file in ubuntu 12.04 through command line/program?

I need to read a .seq file from terminal in ubuntu and split it depending on its contents into multiple files. How can I do this? Eg: A File abc.seq is to be read, then depending on its contents i ...
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NAs in rasters and randomForest::predict()

New here, please let me know if you need more info. My goal: I am using Rehfeldt climate data and eBird presence/absence data to produce niche models using Random Forest models. My problem: I want ...
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223 views

Random Forest Predictions

I am looking for some guidance on a homework assignment I am working on for a class. We are given a dataset with 14K observations and we are asked to build a prediction model. I subset the dataset ...
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327 views

Error using random forest (MICE package) during imputation

I would like to use the method Random Forest to impute missing values. I have read some papers that claim that MICE random Forest perform better than parametric mice. In my case, I already run a ...
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202 views

R random forest - training set using target column for prediction

I am learning how to use various random forest packages and coded up the following from example code: library(party) library(randomForest) set.seed(415) #I'll try to reproduce this with a public ...
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259 views

Issue with randomForest & long vectors

I am running random forest on a data set with 8 numeric columns (the predictors), and 1 factor (the outcome). There are 1.2M rows in the dataset. When I do: randomForest(outcome.f ~ a + b + c + d + ...
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494 views

random forest importance - different %IncMSE on plot and in the data frame

I need some help understanding the importance feature built in random forest package available for R. After running random forest (rf), importance can be accessed with rf$importance. The data frame ...
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Obtaining out-of-bag errors with scikit-learn's RandomForestClassifier

I'm trying to implement out-of-bag samples so that I won't have to partition my data into a training set and test set for random forest. Looking around, it seems that RandomForestClassifier takes in a ...
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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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143 views

Improving the speed of predicting new data using a Random Forest Model

I am generating species distribution models using Random Forest. These models attempt to predict the probability of occurrence by a species, conditioned on various environmental attributes. For most ...
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error.cv in rfcv function

In the help file, an example using the iris dataset is given. Can anyone please explain what sapply function does in the error.cv step below? `result <- replicate(5, rfcv(myiris, iris$Species), ...
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260 views

Predict (Random Forest): prob or vote not meaningful for regression

When I run the predict function, I get this error: Error in predict.randomForest(fit, newdata = na.roughfix(csvTest[, -c(1:2, : 'prob' or 'vote' not meaningful for regression code here This is ...
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248 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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153 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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379 views

randomForest Error: NA not permitted in predictors (but no NAs in data)

So I am attempting to run the 'genie3' algorithm (ref: http://homepages.inf.ed.ac.uk/vhuynht/software.html) in R which uses the 'randomForest' method. I am running into the following Error: > ...
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51 views

Safely terminate finished process in R using foreach package

I wrote the following script which train a random forest model in parallel using R foreach package, initially I run the training phase in parallel using 20 processors, and the whole process of ...
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355 views

how to access the python scikit learning code for Random Forest Classifier, Ada Boost Classifier, Extra Trees Classifier

Is it possible to access the python code for Random Forest Classifier, Ada Boost Classifier, Extra Trees Classifier which are python scikit learning methodes can be activated using below code:- from ...
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227 views

How are “feature_importances_” ordered in Scikit-learn's RandomForestRegressor

If I run a model (called clf in this case), I get output that looks like this. How can I tie this to the feature inputs that were used to train the classifier? >>> clf.feature_importances_ ...
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3answers
1k views

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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474 views

Random Forest with party package cannot handle categorical predictors with more than 4 levels

I am trying to run a random forest model using the party package. My response variable (10 levels) is a classification value for different lake types (interested what factors influence clustering of ...
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66 views

Default predictions different than predictions using training data for randomForest

All, Here's a simple example of a random forest grown in R: Y <- iris[, 5] X <- iris[, 1:4] fit <- randomForest(X, Y) pred0 <- predict(fit) pred1 <- predict(fit, newdata = X) ...
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866 views

How to use parRF method so random forest will run faster

I would like to run random forest on a large data set: 100k * 400. When I use random forest it takes a lot of time. Can I use parRF method from caret package in order to reduce running time? What is ...
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2answers
105 views

Error when using NA levels for prediction in randomForest

All, Consider the following example: Y <- iris[, 1] X <- iris[, 2:5] X[seq(10, 150, 10), 4] <- NA X[, 4] <- addNA(X[, 4]) fit <- randomForest(X, Y) predict(fit) #..Works fine ...