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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RandomForestClassfier.fit(): ValueError: could not convert string to float

Given is a simple CSV file: A,B,C Hello,Hi,0 Hola,Bueno,1 Obviously the real dataset is far more complex than this, but this one reproduces the error. I'm attempting to build a random forest ...
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9 views

Convert CSV file into sequence using Mahout 0.10 for classification using random forest

I have a CSV file which I would like to convert to a SequenceFile to use in classification task using random forest algorithm. How can I do this using mahout 0.10 and netbeans? my data contains ...
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33 views

How to compute ROC and AUC under ROC after training using caret in R?

I have used caret package's train function with 10-fold cross validation. I also have got class probabilities for predicted classes by setting classProbs = TRUE in trControl, as follows: ...
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24 views

Variable importance Randomforest [on hold]

In a random forest model we get an output variable importance in R. How do I understand a variable is positively or negatively correlated using random forest?
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9 views

python: how to know important features for each class using Random Forest

I am using sklearn.ensemble.RandomForestClassifier to do classification. I have 14 classes (14 labels) in total. Now my code is like clf = RandomForestClassifier(n_estimators = 50) ...
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9 views

which way of representing boolean attribute in weka is memory efficient?

I know that there is no boolean attribute in Weka, so what is the memory efficient way of representing the boolean attribute? Is it considering it as Numeric attribute with 0 and 1 values or Nominal ...
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18 views

Random Forest using Mahout

I want to use Random Forest using Mahout for my work. I have started from this tutorial. But I don't know how can I do with my own data? Please, anyone, help me or suggest me how can I do that
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26 views

Why MATLAB tree bagger better than Scikit-Learn RandomForestClassifier? [on hold]

I've tried both out on a variety of data sets and MATLAB seems to consistently outperform Scikit-Learn's by a couple of percent (accuracy or roc_auc etc) I suspect it's because of a difference in ...
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24 views

How to extract information about the trees in the Random Forest?

In the randomForest package by Breiman and Cutler, how can you know: the exact subsample (S_t) used to train each tree (the subsample used just for training and not including the sample points used ...
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13 views

difference between sampsize and classwt random forest

Can some one explain difference between sampsize and classwt in random forest part of R package. Is there any relation between two parameters (assuming problem is a classification problem) Thanks
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27 views

h2o randomForest variable importance

I am using h2o package to create randomForest regression model. I have some problems with the variables importance. The model I am creating is here. Everything works fine. Some of the variables are ...
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12 views

SMOTE not working in Random forest for Hold Out Sample

I am using SMOTE for oversampling, The event rate in my Traning sample is ~4%. The results validates well in the Training sample but does not validate well in Hold Out Sample. I have tried different ...
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1answer
21 views

R randomForest: prediction values for non-terminals?

There is a discrepancy between the documentation for R randomForest and the output of the getTree() method. The documentation states that the value of the prediction field in getTree() should be ...
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55 views

predict function not working on R

I am creating a random forest in my local desktop and saving the model and loading in remote Linux machine. Following is the code chunk iris.rf <- randomForest(species ~ ., data=iris, ntree=11) ...
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7 views

How to get the Gini coefficient using random forests in the caret R package?

I'm trying to understand the difference between the random forest implementation in the randomForest package and in the caret package. For example, this specifies 2000 trees with mtry = 2 in ...
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1answer
30 views

csv files in python

i am working on a machine leaning project and here is my code import csv import numpy as np import string from sklearn.ensemble import RandomForestRegressor def main(): alchemy_category_set = {} ...
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1answer
36 views

R: Kaggle Titanic Dataset Random Forest NAs introduced by coercion

Im currently practicing R on the Kaggle using the titanic data set I am using the Random Forest Algorthim Below is the code fit <- randomForest(as.factor(Survived) ~ Pclass + Sex + Age_Bucket + ...
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1answer
20 views

What splitting criterion does Random Tree in Weka 3.7.11 use for numerical attributes?

I'm using RandomForest from Weka 3.7.11 which in turn is bagging Weka's RandomTree. My input attributes are numerical and the output attribute(label) is also numerical. When training the RandomTree, ...
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1answer
28 views

different variables training/test set with 'randomForest' package

Let's say I have a classification problem, and want to use the randomForest package in R to solve this. In my training set I want to add a third variable, var3, which is the product of var1 and ...
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1answer
54 views

How to get Best Estimator on GridSearchCV (Random Forest Classifier Scikit)

I'm running GridSearch CV to optimize the parameters of a classifier in scikit. Once I'm done, I'd like to know which parameters were chosen as the best. Whenever I do so I get a AttributeError: ...
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1answer
28 views

Making AUC the metric to optimize training

I have 2 levels factor outcome variable in my dataset str(as.factor(train2$outcome)) Factor w/ 2 levels "0","1": 1 1 1 1 2 1 2 1 1 1 ... When i use a train function with default metric to optimise ...
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1answer
48 views

Error when using predict() on a randomForest object trained with caret's train() using formula

Using R 3.2.0 with caret 6.0-41 and randomForest 4.6-10 on a 64-bit Linux machine. When trying to use the predict() method on a randomForest object trained with the train() function from the caret ...
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3answers
118 views

isolation forest algorithm in python

I am trying to reproduce the algorithm described in the Isolation Forest paper in python. http://cs.nju.edu.cn/zhouzh/zhouzh.files/publication/icdm08b.pdf?q=isolation This is my current code: import ...
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36 views

Random Forest in R (multi-label-classification)

I'm fairly new to R, trying to implement Random Forest algorithm. My training and test set have 60 features in the format: Train: feature1,feature2 .. feature60,Label Test: ...
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19 views

How to reduce error rate of Random Forest in R? [migrated]

I want to build a prediction model on a dataset with ~1.6M rows and with the following structure: And here is my code to make a random forest out of it: fitFactor = ...
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8 views

Mahout Generate a File Descriptor Error

I am trying to run a random forest algorithm on a Cloudera virtual machine using Mahout. I have simplified the dataset to have only 6 numerical variables and the label variable in a .csv file: 6000 ...
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11 views

Using partialPlot after fitting a Random Forest model in caret

After I fit a randomForest using the train() function, I'm having problems invoking partialPlot() and plotmo(). Here's some reproducible code: library(AER) library(caret) data(Mortgage) fitControl ...
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23 views

How to set training parameters in Random decision forest for classification?

I am using Random Decision Forest for face recognition.I have database of 51 people. For each person I have used 34 images for training the classifier and 17 images for testing. Size of my feature ...
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1answer
37 views

How to select features for random forest using varImp function?

I have applied random forest on a training data which has about 100 features. Now I would like to apply feature selection technique in order to reduce the number of features before applying random ...
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35 views

Combining Multiple Random Forest Models from Amelia Imputed Data

I just created 40 imputed data sets using the Amelia package, and they are stored in a.out. I then used the lapply function to create randomforest models on the data sets: rf.amelia.out = ...
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33 views

While creating a random forest using foreach() in R, I am getting error, cannot find randomForest() function

While trying to perform parallel processing in R for creating random forests of 51 trees using 3 cores, I am getting error "Error in randomForest(x, y, ntree = ntree) : task 1 failed - "could not ...
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2answers
40 views

Getting random forest prediction accuracy for a continuous variable in R

I'm trying to predict a continuous variable (count) in R with random forest. The values of the predicted variable are min=1 and max=1000. I tried getting the prediction accuracy with ...
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1answer
14 views

R PMML probabilities precision

Using PMML model file to score a random forest. When scoring getting the following output. Is there a way to increase the number of decimal points for probability? (ie. 0.8 to 0.8000 or 0.2 to ...
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37 views

randomForest prediction issue in r

I have been using the randomForest package for a classification model with only categorical factors as predictors. The predict function usually fails when there are new levels in the test that were ...
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0answers
22 views

How to change the number of integers in Random forest probability output in R

So I build a simple random forest model in R without any additional arguments ForestModel = randomForest(x ~ . , data = Train) Then I use the predict function on a test set PredictForest = ...
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1answer
44 views

Python: In which cases will random forest and SVM classifiers can produce high accuracy?

I am using Random Forest and SVM classifiers to do classification, and I have 18322 samples which are unbalanced in 9 classes (3667, 1060, 1267, 2103, 2174, 1495, 884, 1462, 4210). I use 10-fold CV ...
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29 views

Running randomForest in a forloop

I currently have a data-set that is (315:420). I want to run randomforest and receive an accuracy. Begin a for-loop then remove a column from the data-set then run randomforest and compare accuracys. ...
2
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1answer
45 views

rfsrc() command in randomForestSRC package R not using multi core functionality

I am using R (for Windows 7, 32 -bit) for doing text classification using randomForests. Due to large dataset, I looked up the Internet for speeding up model-building and came across randomForestSRC ...
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1answer
34 views

How to predict new raster using model generated by cforest

I use randomForest model to predict class memberships. 'x' consists of 10 classes that I use to train 'training_predictors' values extracted from a large rasterstack/brick. The specific line of codes ...
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6 views

OpenCV - Export a CvRTrees object to a file?

I was wondering if it was possible to export (write) a CvRTrees object (effectively the forest of trees) to a file, and then import that model into a different OpenCV session. I ask as my ...
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1answer
60 views

random forest package in R

I use random forest package in R for regression, it gives me two kind of information: Mean of squared residuals and % Var explained. But I wanna calculate the RMSE and R^2 of the training and test ...
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1answer
40 views

RandomForestClassifier import

I've installed Anaconda Python distribution with scikit-learn. While importing RandomForestClassifier: from sklearn.ensemble import RandomForestClassifier I have the following error: File ...
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0answers
22 views

Interpretation of negative value in varImp() of Random Forest

I am using randomForest() function from package randomForest. I am trying the understand the output given by the function varImp() of package caret. For few variables it is showing negative values. ...
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1answer
29 views

pyspark---randomForests specify categorical variables using “categoricalFeaturesInfo”

how do you specify categoricalFeaturesInfo in pyspark randomForests? the documentation isn't very clear on this and I tried a few like: categoricalFeaturesInfo= {(12,4)} categoricalFeaturesInfo= ...
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21 views

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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52 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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32 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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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
17 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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27 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 ...