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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Prediction result is never less than 0.5 in Weka random forest classifier

I have a problem about the result of random forest classifier in Weka software. After training when I apply my dataset as test set, the result of classifier (prediction part) is never less than 0.5! ...
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32 views

Evaluating random forest performance in R

Hi I have a following proplem: I want to evaluate random forest performance and i did following step in R library(randomForest) set.seed(300) rf <- randomForest(Survived ~ ., data = ciforest) rf ...
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18 views

data preparation for random forest and predictive modeling in python

I am working on a predictive modeling exercise using a categorical output (pass/fail: binary 1 or 0) and about 200 features. I have about 350K training examples for this, but I can increase the size ...
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12 views

random forest predicts more values than it should

I want to predict a value P from explanable variables PH and EC25. There is one dataset from year 2007 and one from 2011. The one from 2007 contains all variables. The one from 2011 too, but P has to ...
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1answer
13 views

Missing value replacement based on class

I've been reading an article on Random Forests, and in missing value replacement section (https://www.stat.berkeley.edu/~breiman/RandomForests/cc_home.htm#missing1) they say: If the mth variable ...
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19 views

Error in predict.randomForest: the predicted variable not present in test data

I have 40 factors in my training data and the predicted variable but in the test data which makes 41 columns in training data i only have 40 variables(i have to predict the variable ) Whenever I use ...
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Randon Forest for Feature selection in NSL-KDD dataset [on hold]

I have this dataset called NSL-KDD with 41 features and two classes, normal and anomaly. I want to select prominent features using the Random Forest algorithm. I used weka tool and ran Random Forset ...
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18 views

multiclass classification issue with SMOTE function in R

I would like to know if there is any way to implement the SMOTE algorithm in R when more than one minority class needs to be adressed. I'll give an example of the problem I am facing using the SMOTE ...
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17 views

Any Python package solves Random Forest's bias towards correlated predictors? [closed]

As we know, random forest has a bias towards correlated predictors and favor predictors that have many levels, but the R package Party solves this issue by using Unbiased Conditional Variable ...
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1answer
19 views

Graph of scikit-learn ExtraTreeClassifier and RandomForestClassifier

I am trying to make some graphs that illustrate the difference between RandomForestClassifier and ExtraTreeClassifier in scikit-learn. I think I might have figured it out but I am unsure. Here is my ...
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30 views

caret: using random forest and include cross-validation

I used the caret package to train a random forest, including repeated cross-validation. I’d like to know whether the OOB, as in the original RF by Breiman, is used or whether this is replaced by the ...
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2answers
30 views

convert mahout random forest classification output to readable

I am learning the mahout random forest with tutorial in mahout site: http://mahout.apache.org/users/classification/partial-implementation.html but when all jobs finishes successfully my output file ...
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25 views

RandomForest categorical variables error in R

I am currently trying to run a RandomForest model on a predictor set of 40 variables. 37 are numeric, 3 are categorical When I try to run the RandomForest, I receive an error: Error in { : task ...
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19 views

Comparison between Random Forest an Bayesian Classifier

I want to implement a language classifier like Linguist in Github:- http://www.github.com/github/linguist I don't know if Random forest is better than Bayesian in terms of complexity. There would be ...
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1answer
17 views

Leaf Indices Off for scinkit-learn Random Forest Regression

I am trying to use scinkit-learn's apply function for the RandomForestTreeRegressor to obtain the leaf indices for each learned tree for some data. I have specified a max_depth of 3, which should ...
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1answer
41 views

How to get random forest regression performance output in Python like that produced in R?

In R, I can easily get the performance of a random forest like the following. How can I get the similar stuff in Python easily? Thanks a lot. Summary of the Random Forest Model ...
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1answer
24 views

How can I get the variable importance when creating a random forest with partykit?

I'm using partykit to create a multi-output random forest. The library party provides a function (impVar) to obtain it directly, but I cannot find an equivalent function in partykit. Is there any way ...
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1answer
97 views

Scikit Learn Random forest classifier: How to produce a plot of OOB error against number of trees

In order to see how many trees are necessary in my forest, I'd like to plot the OOB error as the number of trees used in the forest is increased. I'm in Python using a ...
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24 views

R: doMPI backend for bigrf

I'm trying to parallelize the example below of bigrf with the doMPI backend. # Libraries library(doMPI) library(bigrf) # Load data data(Cars93, package="MASS") y <- Cars93$Type x <- Cars93 # ...
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1answer
23 views

DataConversionWarning fitting RandomForestRegressor in Scikit

I'm trying to fit a RandomForestRegressor to my training set, rfr.fit(train_X , train_y) but keep getting the following warning: ...
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33 views

What are the good libraries for running random forest classifier for 2M data samples?

I have a dataset with 2 million samples and 1 million features (they are text features, that why the number is very large). I'd like to train a random forest for classification. What are the best ...
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34 views

Random Forest on one feature dataset

I'm doing an exercise that involves training random forest algorithm on a one-feature dataset. Specifically, the goal is to predict arrival delay of a flight based solely on it's departure time. I'm ...
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1answer
25 views

How to get the tree models generated by Random Forest in Weka GUI?

I use Random Forest in Weka GUI as the classifier on my training set. However, even I ticked "Output Model" in "More Options," I could not get the actual tree models generated by the algorithm. I ...
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49 views

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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1answer
65 views

How to assess Random Forests classifier performance?

I recently started using a random forest implementation in Python using the scikit learn sklearn.ensemble.RandomForestClassifier. There is a sample script that I found on Kaggle to classify landcover ...
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1answer
38 views

Is there a way to track progress during parallelized Random Forest building?

I'm using R's caret package to do modeling for Coursera class on machine learning. I'm currently building Random Forest with 500 trees on a data set of 11k observations and 40 features. It took ...
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1answer
28 views

class importance for random forest in r

I'm using randomForest pkg in R to predict the binary class based upon 11 numerical predictors. Out of the two classes, Hit or Miss, the class Hit is of more importance, i.e. I would like to know ...
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53 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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2answers
38 views

Does add feature certainly making the model better?

I have trained a gbdt model for predicting CTR, originally I use 40 features, and then I added some features, but results(auc) is lower than the original. 1. how could that happen? 2. how to ...
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47 views

Random forest in matlab: questions about OOB error in TreeBagger

I'm currently working on a classification/regression problem with random forests and using Matlab's TreeBagger. I want to estimate the performance of the model for the two different classes(positive ...
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2answers
149 views

PySpark & MLLib: Random Forest Feature Importances

I'm trying to extract the feature importances of a random forest object I have trained using PySpark. However, I do not see an example of doing this anywhere in the documentation, nor is it a method ...
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41 views

Random Forest won't run, error message: dim(X) must have a positive length

library(caret) library(randomForest) inTrain <- createDataPartition(y=iris$Species, p=0.7, list=F) training <- iris[inTrain,] test <- iris[-inTrain,] modFit <- train(Species~., ...
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1answer
67 views

Error in “random forest” from the Caret Package

I am using R-studio (Version 0.98.994.) in a machine running OS X 10.10.2 (Yosemite) to apply a „random forest“ from the Caret Package. Here is my code: library(caret) data(iris) inTrain <- ...
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1answer
36 views

Classifier extraction from MLSeq R package

I'm currently reasonably new to R and am having trouble extracting the information I would like from a package. I am using MLSeq to implement Random Forest on RNA Seq data to find biomarkers for a ...
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38 views

What are the dimensions of the out-of-bag cumulative hazard function in a Random Survival Forest?

I'm using the randomForestSRC package in R to create a random survival forest. I have 1276 patients and I'm using the default number of bootstraps which is 1000. The dimensions of the out-of-bag ...
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1answer
42 views

unsupervised random forest classification of raster stack in R

I want to compute an unsupervised random forest classification out of a raster stack in R. The raster stack represents the same extent in different spectral bands and as a result I want to obtain an ...
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1answer
260 views

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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48 views

Random Forest Classifier With Very High Success Rate

I'm having a weird problem that may suprise you all. My classification rate is too high on my test set. I'm using scikit-learn packages, and I'm very suspicious of these classification rates, as they ...
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1answer
27 views

R prediction within an interval

quick question on prediction. The value I’m trying to predict is either 0 or 1 (it is set as numeric, not as a factor) so when I run my random forest: fit <- randomForest(PredictValue ~ ...
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1answer
47 views

Passing a list of randomForest objects back to R with rpy2

I am trying to combine a number of random forest models using rpy2. The combine command in R looks fairly straight forward but I am not sure how to pass the RF objects from python to R. Simple ...
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43 views

csv writer - writerow error

This is prediction code that I got from Kaggle. I am new to data mining and pandas package. I have to use a similar to code to complete my project. It uses the RandomForestClassifier. However, first ...
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23 views

How to set subset_ratio and minimal gain parameters in R?

How can I set the "subset_ratio" and "minimal_gain" parameters of a Random Forest in R? Looking at the documentation of Random Forest at ?randomForest, I cannot see any particular parameter for this ...
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61 views

Time series with Random Forests

I wanted to ask how to use the random forest algorithm with time series data i.e i have a data set with accelerometer and gyroscope values with 6 class features followed by 1 class features followed ...
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58 views

Get the accuracy of a random forest in R

I have created a random forest out of my data: fit=randomForest(churn~.,data=data_churn[3:17],ntree=1, importance=TRUE, proximity=TRUE) I can easily see my confusion matrix: conf <- ...
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1answer
55 views

What do xtest= and ytest= do in the randomForest algorithm in R?

I am fitting a random forest and I have split my data into a training set and a test set using the following code: train <- sample( 1:nrow(Boston), (nrow(Boston))/2) ) EDIT: here, train is ...
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43 views

R: Printing random forest model to html

I'm working on a Rmd document that I would like to compile to html using knitr package via the HTML export mechanism available in RStudio. The problem can be reproduced with the code below: Example ...
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1answer
39 views

Plot sklearn RandomForestRegressor MSE

Does anyone know of a way to plot the MSE of the trees from the random forest regressor in sklearn? In R this is incredibly easy: > fit = randomForest(y ~ X) > plot(fit) but I haven't found ...
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41 views

Getting Scikit-Learn RandomForestClassifier to output Top N results

I'd like to see the top N results for a RandomForestClassifier prediction, ordered by descending probability. The answer may be predict_proba, but I have no idea how to interpret the results. Help ...
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2answers
56 views

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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2answers
118 views

Combining random forest models in scikit learn

I have two RandomForestClassifier models, and I would like to combine them into one meta model. They were both trained using similar, but different, data. How can I do this? rf1 #this is my first ...