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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Weka in Java cannot load in model after changing the source code

Recently, I was working on some Random Forest model of Java. My professor asked me to load in a Random Forest model she gave me and print out the rules of it. Since I need to print the detailed ...
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Exact implementation of RandomForest in Weka 3.7

Having reviewed the original Breiman (2001) paper as well as some other board posts, I am slightly confused with the actual procedure used by WEKAs random forest implementation. None of the sources ...
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147 views

Can't use a variable as an argument, but can use its value

I'm using a library that has a function, f. This function accepts a few arguments: an object, a dataframe, and the name of a column in the dataframe. If I call it manually, it works without any ...
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Combining objects across a list

I have a simple question. I have a list of objects. Each object holds a few lists. Before this gets too complicated, let me illustrate: x = a list x[[1]] = some object x[[2]] = another ...
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618 views

Numpy Array Get row index searching by a row

I am new to numpy and I am implementing clustering with random forest in python. My question is: How could I find the index of the exact row in an array? For example [[ 0. 5. 2.] [ 0. 0. 3.] ...
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138 views

Why I cannot load in a WEKA model in Java

I have been working on some WEKA classifiers in Java. Now, I have a model to load in and then analyze it. I have searched out three methods to load in a model, as following: RandomTree ...
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1answer
232 views

R foreach error when using formula notation in randomForest

I have an issue running a randomForest in parrallel using fore each. See this example, I create some data,then a formula notation. The formula works on a randomForest by itself. But fails when used in ...
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64 views

Weka, load in model, but no model has been built yet

Recently I am responsible for load in a WEKA Random Forest model and use that model to do some work. However, I can load in the model, but the when I print it out, it says: RandomTree: no model has ...
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156 views

Randomforest classification weka

The attributes have been saved in 11 columns in csv file. If the order of columns change, Do Randomforest & RandomTree could give different accuracy in each time?
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231 views

Which predictive modelling technique will be most helpful?

I have a training dataset which gives me the ranking of various cricket players(2008) on the basis of their performance in the past years(2005-2007). I've to develop a model using this data and then ...
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208 views

Proximity Matrix in sklearn.ensemble.RandomForestClassifier

I'm trying to perform clustering in Python using Random Forests. In the R implementation of Random Forests, there is a flag you can set to get the proximity matrix. I can't seem to find anything ...
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79 views

Time complexity of one algorithm cascaded into another?

I am working with random forest for a supervised classification problem, and I am using the k-means clustering algorithm to split the data at each node. I am trying to calculate the time complexity ...
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Most up-to-date packages for Machine Learning in R: Lasso, Random Forest, Neural Nets [closed]

I'm reaching out to the community to see what the most up-to-date packages are for implementing Lasso, RF, and NN in R. Lasso As far as I know, lars has been replaced by glmnet for lasso and ridge ...
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Variable importance using the caret package (error); RandomForest algorithm

I am trying to obtain the variable importance of a rf model in any way. This is the approach I have tried so far, but alternate suggestions are very welcome. I have trained a model in R: ...
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198 views

Subscript out of bounds (Caret variable importance for randomForest)

I have trained a model in R: require(caret) require(randomForest) myControl = trainControl(method='cv',number=5,repeats=2,returnResamp='none') model2 = train(increaseInAssessedLevel~., ...
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2k views

What is out of bag error in Random Forests?

What is out of bag error in Random Forests? Is it the optimal parameter for finding the right number of trees in a Random Forest?
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69 views

Random Forest grow

i work in this little function to prepare a index for a random forest train. With this function i get a index for a set of examples and a index for a subset of features for the examples. I found the ...
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273 views

Can you extract scoring algorithm from Scikit-learn RandomForestClassifier and Load coefficients into Oracle?

I have run a RandomForestClassifier model in Python using the sklearn module. I saved the model in a pickle file. I then extract data from Oracle, save it as a .csv file, send this .csv file to a ...
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85 views

Rule testing in R

I have a set of rules that need to be tested. I am working with the iris dataset, and the rules generated are like this: Rule, Class PetalLength > 2.45 AND PetalWidth <= 1.7, versicolour ...
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147 views

for loop adding the variable name to a formula

I am trying to perform Random Forest regression in R and have come across several problems and have fixed most of them myself however I just cannot get around this last issue. I have a list of files I ...
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What is the correct order of the prior vector in fitensemble?

When using matlabs fitensemble to learn a classifier I can specify the parameter prior as well as parameter classnames. Has the order of the elements in both vectors be the same? And what is the ...
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84 views

Re-use a random forest with R

I'd like to know if it's possible to re-use the rules of a random forest, on different test set. For now, I'm using this : rf <-randomForest(x=train,y=labels_train,xtest=test, ...
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207 views

R party conditional varimp error

I have a data set with 6 predictor variables (all of which are categorical), a response variable and a column for the weights, and ~3500 observations. The levels that the predictor variables have vary ...
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311 views

Levels in R - Setting Correctly Against New Data Sets

I'm using randomForest in R. I train upon a set of data which includes a factor variable. This variable has the following levels: [1] "Economics" "Engineering" "Medicine" [4] "Accounting" ...
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199 views

Export “RandomForestRegressor” model created with scikit-learn library

I'm developing C# application where I need to use machine learning algorithm (Random Forest). C# is not very suitable for data analysis, so I saved data to .csv file and then analyzed them in Python ...
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339 views

Correct ratio of positive to negative training examples for training a random forest-based binary classifier

I realized that the related question Positives/negatives proportion in train set suggested that a 1-to-1 ratio of positive to negative training examples is favorable for the Rocchio algorithm. ...
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173 views

R - Combine multiple random forests contained in a list

Is there a quick and easy way to pass randomForest objects contained in a list into the combine() function? As a result of calling randomForest through lapply(), I now have 10 randomForests in a ...
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210 views

parallel randomForest with different results using doSNOW

I thought I found a way to make a reproducible foreach loop with doSNOW with the following code library(foreach) library(doSNOW) library(parallel) ncores <- 2 cl <- makeCluster(ncores) ...
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84 views

Visualizing a set of tree based rules in R

I have a set of rules generated from a ranfomForest using the rattle package, and the support, confidence and lift for the rules have been calculated. The final set of rules look like this Rule ...
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710 views

random forest variable lengths differ

I am trying to run RF using a feature as the response variable. I am having trouble passing a string through a variable to be used as the response in RF. First I try running RF on the string ...
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349 views

How to handle variable names that starts with a number in randomForest Package

In the toy example below, I converted the variable name cyl to 1_cyl. I am doing this as in my actual data there are some variables that starts with a number. I am applying randomForest using that ...
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292 views

corr.bias parameter in Random forest regression model in R

I'm using the regression model of random forest in R and I found the parameter corr.bias which according to the manual is "experimental", my data is nonlinear and I just wonder if setting this ...
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211 views

how to calculate the confidence level for random forest regression model in R

I'm using Random Forest (RF) package in R,for the purpose of predicting the distances between proteins (regression model of RF) "for a homology modeling purposes" and I obtained quite good results. ...
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How to weight classes in a RandomForest implementation

I am working on 3D point identification using the RandomForest method from scikit. One of the issues I keep running into is that certain classes are present more often then other classes. This means ...
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703 views

MATLAB Treebagger and Random Forests

Does the Treebagger class in MATLAB apply Breiman's Random Forest algorithm? If I simply use Treebagger, is it the same as using Random Forests, or do I need to modify some parameters? Thanks.
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229 views

Minimum number of observation when performing Random Forest

Is it possible to apply RandomForests to very small datasets? I have a dataset with many variables but only 25 observation each. Random forests produce reasonable results with low OOB errors (10-25%). ...
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188 views

progressive random forest?

I am considering using random forest for a classification problem. The data comes in sequences. I plan to use first N(500) to train the classifier. Then, use the classifier to classify the data after ...
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5k views

random forests: Does it make any difference if the test-set is also labeled?

All the examples I can find of making predictions using random forests already have the actual answers (i.e. the test-set has labels). What do you do when you don't have that column? For example, ...
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171 views

NAs in classCenter function of the R randomForest package

I am trying to retrieve class prototypes for a two-class classification problem using the randomForest package version 4.6-7 for the R programming language version 2.13.1. For this, I call the ...
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2k views

Random Forest implementation in Python

all! Could anybody give me an advice on Random Forest implementation in Python? Ideally I need something that outputs as much information about the classifiers as possible, especially: which ...
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1answer
969 views

New factor levels not present in the training data

When trying to use the output of randomForest to classify new data (or even the original training data), I get the following error: > res.rf5 <- predict(model.rf5, train.rf5) Error in ...
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467 views

Split data set and pass the subsets in parallel to function then recombine the results

Here is what I am trying to do using the foreach package. I have data set with 600 rows and 58000 column with lots of missing values. We need to impute the missing values using package called ...
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500 views

Error in Random Forest: “Need at least two classes to do classification”

I'm trying to do a species distribution model and I'm following the guide "Species distribution modeling with R" from Robert J. Hijmans and Jane Elith. Everything seems to be OK but when I'm trying ...
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124 views

A Neverending cforest

how can I decouple the time cforest/ctree takes to construct a tree from the number of columns in the data? I thought the option mtry could be used to do just that, i.e. the help says number of ...
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106 views

How to use random forests in R for classification to decide if the value of a column is less or greater than a value N?

I have already used random forests in R for classification where the concerned column has categorical values ( 0 or 1 for example). For example, for the iris database, we can use random forests to ...
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1answer
576 views

TreeBagger (Random Forests) Parameters in MATLAB

When I compared the Random Forest implementation of MATLAB (TreeBagger class) with the OpenCV implementation (Random Trees class), I found that several parameters that are present in the latter were ...
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1answer
843 views

R cannot find specific function in a package

I'm using the randomForest package (v 4.6-7) in R (v 2.15.3) and can easily use the function randomForest to create a model. However, when I try to predict on my test set, the predict.randomForest ...
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711 views

Random forest package in R shows error during prediction() if there are new factor levels present in test data. Is there any way to avoid this error?

I have 30 factor levels of a predictor in my training data. I again have 30 factor levels of the same predictor in my test data but some levels are different. And randomForest does not predict unless ...
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952 views

Does random forest in R have a limitation of size of training data?

I am training randomforest on my training data which has 114954 rows and 135 columns (predictors). And I am getting the following error. model <- randomForest(u_b_stars~. ...
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257 views

Features considered by ExtraTreeRegressor of Scikit Learn to construct Random Forest

I came across this example which involves completion of face for the test data set. Here, a value of 32 for max_features is passed to the ExtraTreesRegressor() function. I learnt that decision trees ...