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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RECOMMENDATION SYSTEM: How to tackle with features having string values

I am working on a ad-click recommendation system in which I have to predict whether a user will click on a Advertisement. I have 98 features in total having both USER features and ADVERTISEMENT ...
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functions to compute confidence band/interval for predictive models in Caret or R

Are there any functions to build confidence band for general regression models, such as regression trees, gamboost, in caret?
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How to calculate manually the feature importance after training the data in random forest

I am designing an machine learning classifier using Random forest but I don't know how the feature importance are calculated manually
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Running a Random Forest

I am currently analyzing the UCI Wine data set on iPython with a scikit-learn library. I have performed basic classification methods on it like Gaussian naive bayes, nearest neighbor etc. I've heard ...
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Package ‘randomForest’ R defining variable importance in advance

I am planning to build 5 successive random forests (RF) on a same data using r 'randomForest' package. I am leveraging work done as per the page. while building the first RF, each X variable should ...
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27 views

How do I balance a training dataset which has very high number of samples for a certain class?

I have been working on the Sentiment analysis prediction using the Rotten Tomatoes movie reviews dataset. The dataset has 5 classes {0,1,2,3,4} where 0 being very negative and 4 being very positive ...
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Run crossfold and random forest using scikit-learn

I have following data set as my training data user_id,f1,f2,f3,f4,f5,f6,f7,f8,f9,f10,X 1,264,7931,12230,1,1,274,0,0,7,9,21 2,527,1141,14680,1,1,481,0,0,10,9,18 3,953,174,22857,1,0,878,0,0,8,9,18 ...
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1answer
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Neural Nets Mixed Real-valued and Categorical Input Features

My question has three parts: (1) Can a feedforward Neural Network handle input features that are mixed: Some are categorical (discrete-valued: e.g., Low, Med, High) and some are real-valued? The total ...
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21 views

CV error larger then test set prediction error

I'm using scikit-learn's RandomForestRegressor to build a model for one of my data-sets, along with GridSearchCV to determine model hyperparameters. I evaluate the predictive capability of the model ...
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16 views

R caret not using all rows in training

I am trying to build a randomforest model using the caret package in R. The training data has 287 samples and 147 variables, testing partition is 119 x 147. Here is part of my code ##Split into ...
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45 views

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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1answer
19 views

predict.randomForest() returns empty rows beneath correct data with type=“prob” selected

Here is some dummy code relating to the iris dataset, which produces the problem that I'm having. iris <- read.csv("~/Rdata/iris.csv") library(randomForest) fit <- randomForest(Species ~ ., ...
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2answers
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Using PCA before classification

I am using PCA to reduce number of features before training Random Forest. I first used around 70 principal components out of 125 which were around 99% of the energy (according to eigen values). I got ...
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randomForest: Quick-TRANSfer stage steps exceeded maximum (= 79350)

I am running k-means clustering in R on a dataset with 1000 rows and 18 columns using the package randomForest: randomForest(y=y.train, x=x.train, ntree=500, mtry=mtry, importance=TRUE, ...
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Zero OOB_Score using SKLearn Random Forest Classifier for dataset with all binary attributes

I get a zero oob-score when using scikit-learn random forest classifier for my dataset. Dataset is a multi-class(4 classes) and 1230 binary attributes. The data is passed as an array[row,cols] to the ...
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Random forest in python

I have run a random forest model in python and able to see the classification table. But I am hoping for comprehensive code covering all aspect starting from codes for data prep, model run, model ...
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19 views

Error producing ROC Curve Random Forest

I am trying to produce an ROC Curve with some data that I have. I can receiving this error: Error in prediction(as.numeric(pred), data.rf$pick) : Format of labels is invalid. I am not sure if my ...
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32 views

Multilabel model scores better than the same model with binary-labels in scikit-learn

I have a scikit-learn model, which simplified a bit would look like: clf1 = RandomForestClassifier() clf1.fit(data_training, non_binary_labels_training) prediction1 = clf1.predict(data_testing) ...
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MATLAB implementation of random forests using 'fitensemble'

I've written some very simple code to estimate the misclassification error from a random forest classifier by using 10-fold cross validation. I've used the function fitensemble (contained in the ...
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interpreting y axis of a partial dependence plots [migrated]

I have read through other topics on partial dependence plots and most of them are on how you actually plot them with different packages, not how you can accurately interpret them, So: I have been ...
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2answers
35 views

Error with new data with same number of predictors but different number of rows when using predict()

I am trying to run the prediction function I got after training my model and after cross validation. I am predicting the variable "classe." The test data has the same name number of predictors as the ...
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39 views

Different RF predictions when pasting code from different sources

I'm playing around with the German Credit dataset from the "caret" package. First, I build a very simple model: library(caret) library(randomForest) library(pmml) data(GermanCredit) GermanCredit ...
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38 views

Normalization deteriorates the performace of classifier

I am studying random forests with some data I collected. I tested my classifier and was getting an accuracy of about 89% on my test set. However when I scaled my data to zero mean and unit variance, ...
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30 views

cforest party unbalanced classes

I want to measure the features importance with the cforest function from the party library. My output variable has something like 2000 samples in class 0 and 100 samples in class 1. I think a good ...
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34 views

EmguCV random forest RTrees, Emgu.CV.Util.CvException

I'm trying to call the random forest function in EMGUCV named Rtrees to do my own training and testing. Because i'm new to this field, so i try to use the UCI database ...
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memory efficient prediction with randomForest in R

TL;DR I want to know memory efficient ways of performing a batch prediction with randomForest models built on large datasets (hundreds of features, 10's of thousands of rows). Details: I'm working ...
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Using RandomForest to match closest action

I have a log of objects: { name: 'action1', timeOfDay : 1234546, dayOfWeek: 1, dayOfMonth: 20 } { name: 'action2', timeOfDay : 1234546, dayOfWeek: 2, dayOfMonth: 20 } { name: 'action2', timeOfDay : ...
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38 views

Random Forest Classifier on a small set of labelled data

I have around 50 rows of data which has labels. There is also a truth source in the data. The truth source describes about the end user experience. I also have 50,000 rows of data, but it does not ...
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19 views

Do I need to transform nominal variables to be distinct fields for sklearn random forest? [duplicate]

This is a sample of dataset I'm using to look at lapsed customers. I've converted categorical values to be numbers. However I believe that sklearn random forest will treat these fields as discrete ...
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41 views

randomForest did not predict serial samples

I have data.frame TC, with 17744 observations of 13 variables. The last variable is target: a Factor w/ 2 levels "0", "1". I do: n.col <- ncol(TC) x.train.or <- TC[1:12000, -n.col] y.train.or ...
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23 views

Choosing random_state for sklearn algorithms

I understand that random_state is used in various sklearn algorithms to break tie between different predictors (trees) with same metric value (say for example in GradientBoosting). But the ...
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55 views

Cannot coerce class “”amelia“” to a data.frame in R

I am using Amelia package in R to handle missing values.I get the below error when i am trying to train the random forest with the imputed data. I am not sure how can i convert amelia class to data ...
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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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Understanding forest$xlevels in randomForest model

Trying to build a randomForest model, where feature has both numeric and factor fields. There's a field model$forest$xlevels which has levels of all the factor fields used, but also contains numeric ...
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44 views

special operator “~” in R [duplicate]

I am a beginner in R. I am currently using random forest to do some prediction. When I read the document, it has following command lines: iris_rf <- ...
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1answer
49 views

ROC curve error in randomForest

I am trying to create a ROC curve off the below. I get an error that states Error in prediction(bc_rf_predict_prob, bc_test$Class) : Number of cross-validation runs must be equal for predictions ...
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What is the scale of the MeanDecreaseGini in R randomForest package?

the Gini index is a score that varies from 0 to 1, however, in my experience, the MeanDecreaseGini in R's randomForest package is several fold larger than this range. My naive assumption is that if ...
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2answers
103 views

parallel generation of random forests using scikit-learn

Main question: How do I combine different randomForests in python and scikit-learn? I am currently using the randomForest package in R to generate randomforest objects using elastic map reduce. This ...
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Storing Random Forests in C++

I have several serialized decision trees (currently as one long string in pre-order) generated by the random forest method. I've hardcoded these strings into the class so that all of the decision ...
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1answer
76 views

RODBC lose connection after running randomForestSRC

I open an connection to Vertica through RODBC, then I run a rfsrc function from randomForestSRC package, then the connection get lost. The even wired thing is that when running rfsrc function for some ...
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1answer
36 views

Class probability randomForest in R

I am trying to get the class probability of a binary classification of a randomForest. I am struggling to get the right syntax. I have tried to read the help file but I have not found the answer. Any ...
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95 views

How to run Random Forest from Rhadoop

I have my .csv file in hdfs and I want to run randomforest from R using rmr2 and rhdfs i using this code..but I am getting Error.. PipeMapRed.waitOutputThreads(): subprocess failed with code 1 ...
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150 views

Tuning of mtry by caret

I tune the mtry parameter of randomForest using the train function from the caret package. There are only 48 columns in my X data, however train returns mtry=50 as the best value whereas this is not a ...
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1answer
77 views

R Shiny: fileInput, NULL appearing at end of str() console output

Using R shiny, I am developing a simple app that allows user to input data from a file and do some simple analysis. My first step is allow the input-ing and have a reactive wrapper based on the input ...
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1answer
109 views

SVM poor performance compared to Random Forest

I am using the scikit-learn library for python for a classification problem. I used RandomForestClassifier and a SVM (SVC class). However while the rf achieves about 66% precision and 68% recall the ...
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194 views

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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222 views

Fast Random Forest Algorithm Implementation

I have implemented a small java application using Weka lib with Random Forest. I have trained some classifiers with a sample data and getting a good accuracy of around 85%. However, when i used ...
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r randomForest subset data NAs not being ignored

I have original parent data I import through read.csv all_data = read.csv(all_data_location, header=TRUE, sep = ',', colClasses= c( "trait1"=NULL, "trait2"="factor", "trait3"="double" )) I ...
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Debugging Code that uses predict() in R

When running this code: predict(rfm, x[split.idx[[i]], sig_otu], type="prob") I get this error message: Error in x[, vname, drop = FALSE] : subscript out of bounds Does this error message arise ...
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47 views

randomForest::combine() and objects in a list

In order to run Random Forest models over very large datasets, I have divided my data into chunks and have run randomForest::randomForest() on each chunk. The resulting randomForest objects are ...