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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Machine learning - Calculating the importance of a “value” in a variable

I’m analyzing a medical dataset containing 15 variables and 1.5 million data points. I would like to predict hospitalization and more importantly which type of medication may be responsible. The ...
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109 views

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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15 views

ROC for random forest

I understand that ROC is drawn between tpr and fpr, but I am having difficulty in determining which parameters I should vary to get different tpr/fpr pairs.
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Python Scikit Random forest pred_proba outputs rounded off values

I am using random forest in scikit learn for classification and for getting the class probabilities , I used pred_proba function. But it outputs probabilities rounded to first decimal place I tried ...
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1answer
22 views

rbind changes values in column

So, I'm trying to extract all the tree data from a randomForest object, and place it into a data frame. I'm pulling out one tree at a time, cbinding it with the index of that tree, and attempting to ...
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How to balance a dataset using RandomForests in R? only balancing dataset, no predictions?

the problem is that randomforest algorithm returns a vector of many factors i.e variable importance, no of trees etc but it does not return the balanced data file. I want to apply randomforest on an ...
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1answer
15 views

Getting Random Forest feature_importances_ from OneVsRestClassifier for Multi-label classification

I am using OneVsRestClassifier for a multi-label classification problem. I am passing RandomForestClassifier into it. from sklearn.multiclass import OneVsRestClassifier from sklearn.ensemble import ...
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5 views

Imbalance data set for decision tree and random forest

I am running decision trees and random forest on a veryimbalanced dataset. My class 1 consists of 300 samples and my class 2 consist of 3000. Can I reduce this problem by making the test and training ...
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1answer
18 views

reducing FP rate scikit-learn random forest

I am working with the scikit-learn random forest classifier and I want to reduce the FP rate by increasing the number of trees needed for a successful vote from greater than 50% to say 75%, after ...
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13 views

Recommended values for OpenCV RTrees parameters

Any idea on the recommended parameters for OpenCV RTrees? I have read the documentation and I'm trying to apply it to MNIST dataset, i.e. 60000 training images, with 10000 testing images. I'm trying ...
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1answer
17 views

is their any way to show random forest as nonlinear using suppose 100 attributes

Is their any way to show random forest as nonlinear using suppose 100 attributes. Actually I compared the accuracy of J48 with Random forest. Random forest works better as given works better for ...
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3answers
7k views

R randomForest for classification

I am trying to do classification with randomForest, but I am repeatedly getting an error message for which there seems to be no apparent solution (randomForest has worked well for me doing regression ...
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1answer
32 views

How to collapse a RandomForest into an equivalent decision tree?

The way I understand it, in creating a random forest, the algorithm bundles a bunch of randomly generated decision trees together, weighting them such that they fit the training data. Is it ...
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27 views

Is this the correct way of getting in-sample and out-of-sample predictions / performance in R's caret package?

I want to know how to get both in-sample and out-of-sample accuracies in R's caret package. I have written a simple example code (reproducible) for training random forest on iris data, to demonstrate ...
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2answers
932 views

Random Forest interpretation in scikit-learn

I am using scikit-learn's Random Forest Regressor to fit a random forest regressor on a dataset. Is it possible to interpret the output in a format where I can then implement the model fit without ...
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3answers
2k views

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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2answers
103 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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1answer
50 views

Big accuracy difference between cross-validation and testing with a test set in weka? is it normal?

I'm new with weka and I have a problem with my classification project using it. I have a train dataset with 1000 instances and one of 200 for testing. The problem is that when I try to test the ...
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1answer
33 views

R package for Weighted Random Forest? classwt option?

I'm trying to use Random Forest to predict the outcome of an extremely imbalanced data set (the 1's rate is about only 1% or even less). Because the traditinal randomForest minimize the overall error ...
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20 views

How to predict probabilities on test dataset in R's caret package? [duplicate]

Following is my example dataset: # TEMP DATA train_predictors <- matrix(data = c(1,2, 1,3, 2,4, ...
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24 views

How to change the function a random forest uses to make decisions from individual trees?

Random Forests use 'a multitude of decision trees at training time and outputting the class that is the mode of the classes (classification) of the individual trees'. Is there a way to, instead of ...
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34 views

What is the equivalent to rpart.plot in Python? I want to visualize the results of my random forest

In [R], you can visualize the results of your random forest like so (image shamelessly stolen from the internet). What is the equivalent in Python? I can get the results of my sklearn random forest ...
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2answers
43 views

Encoding String to numbers so as to use it in scikit-learn

My data consists of 50 columns and most of them are strings. I have a single multi-class variable which I have to predict. I tried using LabelEncoder in scikit-learn to convert the features (not ...
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1answer
272 views

Random Forest: mismatch between %IncMSE and %NodePurity

I have performed a random forest analysis of 100,000 classification trees on a rather small dataset (i.e. 28 obs. of 11 variables). I then made a plot of the variable importance In the resulting ...
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1answer
53 views

Why connection is terminating

I'm trying a random forest classification model by using H2O library inside R on a training set having 70 million rows and 25 numeric features.The total file size is 5.6 GB. The validation file's ...
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1answer
28 views

Machine learning : RandomForest data pre-processing

Before fitting a RandomForest what should be done with continuous features, should they be standard scaled?
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50 views

Using the predict_proba() function of RandomForestClassifier in the safe and right way

I'm using Scikit-learn to apply machine learning algorithm on my datasets. Sometimes I need to have the probabilities of labels/classes instated of the labels/classes themselves. Instead of having ...
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10 views

displaying variable in plot(varImp(randomForest_model))

varImpPlot(randomforest_model) in randomForest displays default 30 top variables. How do I display selected top variable only. for eg say top 18 .
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1answer
30 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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1answer
58 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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How do I set probability thresholds for a logistic regression and cutoffs in randomForest model to get a good confusion matrix? [migrated]

Whenever I run a logistic regression, I need to set the threshold so that it groups probabilities higher than the threshold to my positive group: table(test$Noshow, logpred>0.5) What I sometimes ...
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2answers
2k views

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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16 views

What are the advantages of Logistic regression and Random Forest for Churn prediction?

While trying to design a model for Churn Prediction, I came across Logistic Regression and Random Forests as popular algorithms for design this model. What are the specific advantages offered by ...
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1answer
123 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: ...
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32 views

Is Gradient Boosting regression be more accurate (lower MSE) than the random forest?

I just created a Gradient Boosting model whose out-of-sample prediction is worse than the random forest. The MSE of GBM is 10% higher than the random forest. Below is my sample code. I am sure whether ...
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8 views

R random forest save node number

I am running random forest and want to save the actual node number for each observation in each individual tree [nxntree matrix]. Reason is that I want to explore majority nodes for case groups and ...
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1answer
528 views

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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RF: high OOB accuracy by one class and very low accuracy by the other, with big class imbalance

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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1answer
18 views

Forecast future metrics of system

Basically I'm asked to prepare a project which will be trained using past system metrics and then predict weather the system is going to face an error in future or not. I divided the whole project ...
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51 views

What should do to fix my scikit-learn program?

A snippet of code involving RandomForestClassifier using the python machine learning library scikit-learn. I am trying to give weight to different classes using the class_weight opition in the ...
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1answer
44 views

scikit-learn RandomForestClassifier - How to interpret tree output?

I have the below code, but I just don't understand how to interpret the tree output data from the RandomForestClassifier, like how the gini was calculated, given the samples and how the totals in the ...
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1answer
47 views

How to set cutoff while training the data in Random Forest in Spark

I am using Spark Mlib to train the data for classification using Random Forest Algorithm. The MLib provides a RandomForest Class which has trainClassifier Method which does the required. Can I set a ...
2
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1answer
75 views

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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1answer
603 views

R unexpected NA output from RandomForest

I'm working with a data set that has a lot of NA's. I know that the first 6 columns do NOT have any NA's. Since the first column is an ID column I'm omitting it. I run the following code to select ...
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145 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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1answer
417 views

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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1answer
30 views

VotingClassifier in sklearn.ensemble ImportError

I am trying to implement multiple learning classifiers in python. I have 5 random forest classifiers in the code but now I am not able to import the VotingClassifier function from sklearn.ensemble. ...
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Sklearn: How to Feed Data to sklearn RandomForestClassifier

I have this data: print training_data print labels # prints [[1, 0, 1, 1], [1, 1, 1, 1], [1, 0, 1, 1], [1, 1, 1, 0], [1, 1, 0, 1], [1, 1, 1, 1], [1, 1, 1, 1], [1, 1, 1, 1], [1, 1, 0,0], [1, 1, 1, ...
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R programming, Random forest through caret

I'm newbie in R and I want to implement the random forest algorithm using the caret package. Is there any useful tutorial, step by step?
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166 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 = ...