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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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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160 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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553 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 ...
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155 views

Python: “TypeError: Could not operate with block values” coming when I import RandomForestClassifier

I am writing a digit recognition program in python. The basic code is as follows: import pandas as pd from sklearn.ensemble import RandomForestClassifier filteredColumns = delete_useless_columns() ...
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78 views

nodesize parameter ignored in randomForest package

Does the randomForest package ignore the nodesize parameter? When I predict the terminal nodes for a dataset and check the counts, I see values that are less than the nodesize. I would submit a fix ...
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56 views

Unconclusive RandomForest documentation in ScikitLearn

In the ensemble methods documentation of Scikit-Learn http://scikit-learn.org/stable/modules/ensemble.html#id6 in section 1.9.2.3. Parameters we read: (...) The best results are also usually ...
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82 views

Scikit Learn Random Forest One Hot Encoding w/ High Cardinality

Since non-integer classifiers cannot be handled natively, forcing the use of one-hot encoding (or similar), how does one deal with the potential issue of an absolute ridiculous amount of features if ...
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204 views

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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16 views

obtain votes in cforest in the party package

I am using the cforest function from the party package. Is there any option to get the number of votes that each samples receive? The same operation should be possible with the randomForest ...
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116 views

Training Random forest with different datasets gives totally different result! Why?

I am working with a dataset which contains 12 attributes including the timestamp and one attribute as the output. Also it has about 4000 rows. Besides there is no duplication in the records. I am ...
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127 views

Scikit-learn RandomForestClassifier output of predict_proba

I have a dataset that I split in two for training and testing a random forest classifier with scikit learn. I have 87 classes and 344 samples. The output of predict_proba is, most of the times, a ...
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244 views

Value Error in Scikit-learn Random forest fit method

I am trying to train (fit) a Random forest classifier using python and scikit-learn for a set of data stored as feature vectors. I can read the data, but I can't run the training of the classifier ...
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66 views

RandomForestClassifier differ from BaggingClassifier

How is using a BaggingClassifier with baseestimator=RandomForestClassifier differ from a RandomForestClassifier in sklearn??
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134 views

Bagging using random forest classifier in sklearn

I built a random forest and I want to find the out of bag score.But my out of bag score is coming out to be 1.0,but it should be less than 1.My sample size consists of 20000 elements.Here is the ...
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1answer
57 views

scikit learn + random forest segmentation

I am using random forest function in scikit learn for segmentation of image. However i am not able to create an input to the function clf.fit(X,Y). X is a training matrix of (n_samples,n_features), Y ...
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102 views

varimp (from party library) causes out of memory error

I am using cForest (in party) for random forest analysis of a data frame containing 800 observations of 18 variables. I have found that a largish value of ntree=2001 is required to give stable values ...
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180 views

The explanation of the verbose mode during running randomForest in R

I am running randomForest in R with the verbose mode(do.trace), and I was wondering what the meanings of columns in the message are. I can see ntree is number of trees, and OOB is the % of out of bag ...
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301 views

randomForest: Error in nrow(x) : argument “x” is missing, with no default

I want to use randomForest for unsupervised classification. According to the tech specification of the package, the simple unsupervised case is defined this way: set.seed(17) iris.urf <- ...
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132 views

Differences between method=“parRF” and method=“rf”

Want to optimize computation time for random forests and the caret package has a built-in train function that allows running parallel random forests. I'm new to the caret package, so don't understand ...
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173 views

How to use whole training example to estimate class probabilities in sklearn RandomForest

I want to use scikit-learn RandomForestClassifier to estimate the probabilities of a given example to belong to a set of classes, after prior training of course. I know I can get the class ...
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34 views

Random Forest - or other Machine Learning - with Different number of features

I am trying to compare a list of numbers with another list of lists to see how many of them match fairly closely. However each of my data sets could have a different length. As an example, if I had ...
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107 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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780 views

What does negative %IncMSE in RandomForest package mean?

I used RandomForest for a regression problem. I used importance(rf,type=1) to get the %IncMSE for the variables and one of them has a negative %IncMSE. Does this mean that this variable is bad for ...
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45 views

Running rfUtilities function for variable selection in parallel - how to combine results in R?

I am trying to run the rfUtilities function "rf.modelSel" in parallel (windows for now). I am using the doParallel package in combination with foreach to parallelize my code. My question is, how can I ...
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174 views

Errors in using predict with randomForest in Shiny

Note: After lots of experimenting with the code, I have completely re-written this question I'm trying to use user-input values in a 1-row data object to predict the user's category with ...
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177 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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209 views

Feature importance calculation for gradient boosted regression tree versus random forest

On data with a few features I train a random forest for regression purposes and also gradient boosted regression trees. For both I calculate the feature importance, I see that these are rather ...
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46 views

randomForest - logical comparison failing when data value equals split value

I have been working on a project that has required digging into the individual tree predictions from a randomForest. I have a randomForest object and I used the predict method on new data to create ...
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120 views

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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1answer
207 views

Random Forest: Running out of memory

I'm using scikit-learn Random Forest to fit a training data (~30mb) and my laptop keeps crashing running of out application memory. The test data is a few times bigger than the training data. Using ...
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256 views

Need Assistance In Random Forest Programming In Python

I am right now trying to make a simple program on random forest. Taking two sequences to train and predict and plot the final random forest curve. But I am unable to do it as I cant understand which ...
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109 views

R: using foreach() with sample() procedures in randomForest() call

I have a large dataframe (~700 n x 36000 p) and plan to conduct randomForest analyses in R. Due to the runtime burdens of sending the full frame to randomForest (even with parallel computing and 512 ...
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236 views

R language. How to retrieve random forest residuals?

Probably a simple question: how may I to retrieve the residual of regression when using randomForest? (any other package would be accetable) Thank you and my wishes of a great 2015!
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56 views

R Caret Random Forest view miss-classified

Is there a way to get a list of miss-classified items from a random forest model generated in R using caret? The random forest is attempting to classify each item into one of seven possible classes.
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3k views

Error in train.default(x, y, weights = w, …) : final tuning parameters could not be determined

I am very new at machine learning and am attempting the forest cover prediction competition on Kaggle, but I am getting hung up pretty early on. I get the following error when I run the code below. ...
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260 views

R: stack overflow error with randomForest on large dataset (48-512 GB RAM)

I am attempting an R randomForest analysis in R on a wide genetic dataset​(662 x 35350). All variables except the outcome are numeric and 99% of them are binary 0/1. I am quite familiar with R ...
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67 views

Random forest score in R

From sklearn import ensemble: clf = ensemble.RandomForestClassifier(n_estimators=150) clf.fit (X_train, y_train) clf.score (X_test, y_test) 0.83208955223880599 The above is a piece of code from ...
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75 views

Random forests with MATLAB - “Unable to create unique default labels using only 5 significant digits.”

I'm trying to use the random forest algorithm in MATLAB for prediction. However, I'm having issues getting it to run correctly. Function signature is as follows. B = TreeBagger(NTrees,X,Y) If I ...
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383 views

How to save a randomforest in scikit-learn?

Actually there is a lot of question about persistence,but i have tried a lot using pickle or joblib.dumps . but when i use it to save my random forest i got this: ValueError: ("Buffer dtype mismatch, ...
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32 views

RandomForestClassifier Regression Probabilities

Using sklearn's RandomForestClassifier, if the class is a float then it will predict with regression trees and the prediction will be a float. I am trying to use arr = model.predict_proba(newdata) ...
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201 views

R, Caret: save/load parallel random forest fails

I ran into an issue when working with parallel random forests in caret (R). I saw that they are multiple question that seem to deal with the same problem, after reading through the answer I'm however ...
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1answer
1k views

Python And Random Forest Algorithm

I'm trying to use Python's Random Forest ML (machine learning) algorithm with a *.csv file, and this is information is inside that *csv.file DateTime;Status;Energy 28-02-2014 19:30:00;True;10,1 ...
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148 views

Easily specify which dummy variables to be used in a random forest with many dummy variables [R]

I apologize in advance that this is such a simple question, but I've been having a very hard time figuring it out with google and stack exchange searches. I have a dataset which I'd like to run a ...
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62 views

How many features does the RandomForest algorithm select?

I'm working with random forest and I'd like to know how does the feature selection works. I have a set of 423 features and I understand that they are randomnly selected using log2(F)+ 1. So this way ...
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52 views

How to run randomForest efficiently without cluster

I have several randomForest models which have same independent variables(X), different dependent variable(Y). Is there any way to run these model efficiently without cluster? Currently I use lapply to ...
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116 views

WEKA - RandomForest how to know when the tree is too deep?

I've just started working with Weka and I cannot get to understand when my decision trees are too deep. I have a set of 423 features which, as far as I know, are randomnly chosen for every single ...
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348 views

Caret Model random forest into PMML error

I would like to export a Caret random forest model using the pmml library so I can use it for predictions in Java. Here is a reproduction of the error I am getting. data(iris) require(caret) ...
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2k views

How to solve “NAs are not allowed in subscripted assignments” issue in R

Im doing random forest predictions using R. My Aggregate_sample.csv data set. Company Index,Is Customer,videos,videos ...
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158 views

Weird results with the randomForest R package

I have a data frame with 10,000 rows and two columns, segment (a factor with 32 values) and target (a factor with two values, 'yes' and 'no', 5,000 of each). I am trying to use a random forest to ...
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237 views

Why does TreeBagger in Matlab 2014a/b only use few workers from a parallel pool?

I'm using the TreeBagger class provided by Matlab (R2014a&b), in conjunction with the distributed computing toolbox. I have a local cluster running, with 30 workers, on a Windows 7 machine with 40 ...