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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Random Forest feature importance: how many are actually used?

I use RF twice in a row. First, I fit it using max_features='auto' and the whole dataset (109 feature), in order to perform features selection. The following is ...
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29 views

Making Recursive Feature Elimination using Caret parallel on Windows

I'm trying to run recursive feature elimination for a random forest on a data frame containing 27 predictor variables, each with 3653 values. So there's 98631 values total in the predictor dataframe. ...
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15 views

R: randomForest's MDSplot Error

I have run randomForest() on a dataframe to generate the output object 'rf', as in: rf <- randomForest(forestPREDICTORS, forestDV, data=forestData, do.trace = 10, ntree=300, mtry = 190, ...
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19 views

Random forest regression severely overfits single variable data

I am trying to use sklearn's random forest regression for a toy example. I generated 500 uniform random numbers between 1 and 100 as the predictor variables, and then took their logs and added ...
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10 views

Why can't I save my trained RandomForestRegressor model?

I have a trained RandomForestRegressor model I would like to save to a file for re-use. I'm following the instructions on the scikit-learn persistence page, and can save the trained model. The ...
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6 views

Multiple response models on same dataset

Can I have two response variables for the same training dataset in random forest? If not, can I combine the output of the two models (assuming running two models separately on the same dataset) and ...
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1answer
15 views

Missing value error in the randomForest package of R

I am using the randomForest package to classify a binary outcome variable with the standard process. I first had to force a change on all variables to make sure they were numeric and then used ...
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24 views

Elaborate reading material or tutorial on Random Forest Needed for R Programming [on hold]

I have been trying to find some academic material but whatever i have my hands own isn't explicit as to explain what and how random forest is being used and how can it be used in conjunction with ...
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19 views

R: parallelRandomForest - function not found

I installed the R package "parallelRandomForest", and called it successfully by library(parallelRandomForest) However, when I used it by parallelRandomForest() The following message showed up: ...
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31 views

Correlation in neural network and random forest

I run multilayer perceptron and random forest on a set of data. but the correlation coefficient of these 2 run differ significently. for example for multilayer neural net, I got 0.3, but for random ...
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2answers
27 views

Error with Sklearn Random Forest Regressor

When trying to fit a Random Forest Regressor model with y data that looks like this: [ 0.00000000e+00 1.36094276e+02 4.46608221e+03 8.72660888e+03 1.31375786e+04 1.73580193e+04 ...
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16 views

Random Forest Classifier: clf.fit(x, y) error: Number of labels=1 does not match number of samples=42

I appear to be getting the following error message: ValueError: Number of labels=1 does not match number of samples=6037 The relevant section of my code is: x = pd.DataFrame() x = x.as_matrix y = ...
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31 views

SyntaxError: invalid Syntax using the .tolist() function in python while assigning values to columns

I have a column in my csv file called 'sport' containing different sport names. I'm trying to assign them a popularity score. But when I type in the following (I'm using Python), I get the proceeding ...
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1answer
36 views

RandomForestClassifier not predicting probability for all classes

clf = RandomForestClassifier(min_samples_leaf=20) clf.fit(X_train, y) prob_pos= clf.predict_proba(X_test) Dimensions: (Pdb) print X_train.shape,X_test.shape,y.shape (1422392L, 14L) (233081L, ...
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16 views

How to find non-numeric data that generates an error with na.roughfix within the randomForest package in R

I am running a random forest with 1016 variables and dealing with missing values with the na.roughfix function within the randomForest package: rdsdata <- read.csv("data.csv") rdsdata <- ...
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1answer
29 views

implementation of R random forest feature importance score in scikit-learn

I'm trying to implement R's feature importance score method for random forest regression models in sklearn; according to R's the documentation: The first measure is computed from permuting OOB ...
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1answer
58 views

How to use RandomForest in Spark Pipeline

I want to tunning my model with grid search and cross validation with spark.In the spark, it must put the base model in a pipeline, the office demo of pipeline use the LogistictRegression as an base ...
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3answers
58 views

Why doesn't my Python RandomForestRegressor accurately predict training set data?

I'm taking my baby steps with machine learning and would like to use scikit-learn's RandomForestRegressor() on a fairly complex dataset. To first get the hang of it though, I'm trying to work through ...
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1answer
51 views

feature importance results differ in R and sklearn random forest regression

I'm working on a regression problem, and have been using both the R randomForest package as well as the python sklearn random forest regression estimator. The R package can calculate the feature ...
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1answer
24 views

Broadcast Random-Forest Model in PySpark

I'm using spark 1.4.1. When i'm trying to broadcast random forest model it shows me this error: Traceback (most recent call last): File "/gpfs/haifa/home/d/a/davidbi/codeBook/Nice.py", line 358, in ...
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32 views

Import error when importing RandomForestClassifier from sklearn.ensemble

I have been trying to run the Randomforest algorithm using Python. I have followed all the instructions online. But whenever I run the code, I get the following error Harshvardhan's MacBook ...
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45 views

How do I replace the bootstrap step in the package randomForest r

First some background info, which is probably more interesting on stats.stackexchange: In my data analysis I try to compare the performance of different machine learning methods on time series data ...
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33 views

Changing names of variables in randomForest object

I want to predict a randomForest object to a huge RasterStack. The randomForestobject was trained with a dataframe with vairables named like "05_absor_1", "05_absor_2" ... The RasterStack has 189 ...
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2answers
69 views

Spark Multiclass Classification Example

Do you guys know where can I find examples of Multiclass classification in Spark, I spent a lo of time searching in books and in the web, and so far I just know that it Is possible since the latest ...
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28 views

Difference between random forest and random tree algorithm

please I need a clarification on random tree and random forest classification algorithm. please if there is any book or site that gives a detailed explanation, kindly suggest.
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43 views

PCA for dimensionality reduction before Random Forest

I am working on binary class random forest with approximately 4500 variables. Many of these variables are highly correlated and some of them are just quantiles of an original variable. I am not quite ...
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1answer
73 views

compare variables and remove one with lowest value R [closed]

I have a dataframe of the correlation between 45 variables, and have added the the random forest importance value given to each by the 'varImp' function (I ran a random forest training model with this ...
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1answer
36 views

R - Random Forest - Delete New factor levels not present in the training data

I'm debugging a code with Random Forest package, with barely no previous R experience. I've reached a point where, excecuting predict.randomForest, I get the error: New factor levels not present ...
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1answer
28 views

AUC package - AUC error - r programming

I am trying to get a AUC plot working using the AUC package in R. I am unsure of the error and new to this fit is the trained model: test is the test data test$going_to_cross <- predict(fit, test, ...
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32 views

How to Run a compiled Cython Code

This may seem like a simple question but I tried a lot of links and didn't find any relevent links. I installed cython using pip. (I'm using Win 7 & Python 2.7) Then build a setup.py and did a ...
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34 views

ROC curve - model performace error

I am trying to plot a ROC curve to show my model performance. The model is fitted using the randomForest package prediction <- predict(fit, test, type="prob") pred <- ...
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20 views

r Random Forest runtime

I have 260K observations with 76 variables of mixed classes (numeric, factor, int) and a binary output. I am using randomForest package to build a random forest with default settings: rf_teach ...
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1answer
18 views

Handling case weight in the Random Forest packages in R

I checked both the randomForest and the rfsrc packages in R, but couldn't find an easy way to apply observation/case weight when training the random forest model. Is there any way to do this? As an ...
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47 views

probability of survival at particular time points using randomForestSRC

I'm using rfsrc to model a survival problem, like this: library(OIsurv) library(survival) library(randomForestSRC) data(burn) attach(burn) library(randomForestSRC) fit <- rfsrc(Surv(T1, D1) ~ ...
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37 views

mahout random forest visualization

I made a model using BuildForest of random forest classifier in mahout. I'm wondering how can I show a structure of trees in forests directly. just I opened model at vi. but It doesn't help like ...
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1answer
45 views

Large number of classes

I am working on a multiclass model with a huge number of classes (approx. 3500). Can a large number of classes influence the performance of my model?I would like to use SVM and Random Forest. Does ...
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36 views

P-value of features when using Random Forests

I am using Random forests in scikit-learn and I'm wondering is there any way I can get p-value of features? I know I can use feature_importances_ to get the importance of features, but I need to have ...
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1answer
53 views

Python - Random Forest - Iteratively adding trees

Good afternoon! Sorry for my English, but I need your help. I am doing some machine learning task on Python. I need to build RandomForest and than build a graph that will show how the quality of the ...
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1answer
59 views

Models giving 100% accuracy, random forest, logit, C5.0?

When trying to fit models to predict the outcome "death" I am having a 100% accuracy, this is obviously wrong. Could someone tell me what am I missing? library(caret) set.seed(100) intrain <- ...
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1answer
59 views

Spark, MLlib: Adjusting classifier descrimination threshold

I try to use Spark MLlib Logistic Regression (LR) and/or Random Forests (RF) classifiers to create model to descriminate between two classes reprsented by sets which cardinality differes quite a lot. ...
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8 views

Create Random Forest model with one class using Mahout?

I am trying to create One Class Random Forests ( The dataset has just one class ) using Mahout. I have two questions: 1) Is it a legitimate model generation for Random Forest ? 2) Is there any ...
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32 views

Poor predictive performance for RandomForest in Spark

This might be a long shot, but has anybody run into very poor predictive performance using RandomForest with Mllib? Here is what I'm doing: Spark 1.4.1 with PySpark Python 3.4.2 ~30,000 Tweets of ...
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0answers
32 views

why bootstrap result in overfitting for randomForest prediction? [migrated]

I am dealing with an imbalanced datasets with the R package randomForest. Some one has suggusted that, Bootstrap your data while over-sampling the rare class and under-sampling the common class. But I ...
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0answers
27 views

scikit-learn: feature importances change a lot in each execution of the same RF model

I got an imbalanced dataset (5830 negative instances and 1006 positive instances), which I try to balance before training. It contains numerical and categorical attributes (I also vectorize them ...
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2answers
49 views

random forest with specified false positive and sensitivity

Using the randomForest package in R, I was able to train a random forest that minimized overall error rate. However, what I want to do is train two random forests, one that first minimizes false ...
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1answer
35 views

random forest: error in dealing with factor levels in R

I am using rf model in R to predict a binary outcome 0 or 1. I have categorical variables (coded as numbers) in my input data which are coded as factor while training. I use factor() function in R to ...
2
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1answer
46 views

Trying to balance my dataset through sample_weight in scikit-learn

I'm using RandomForest for classification, and I got an unbalanced dataset, as: 5830-no, 1006-yes. I try to balance my dataset with class_weight and sample_weight, but I can`t. My code is: ...
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2answers
67 views

Random forest evaluation in R

I am a newbie in R and I am trying to do my best to create my first model. I am working in a 2- classes random forest project and so far I have programmed the model as follows: library(randomForest) ...
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1answer
33 views

Scikit ROC auc raises ValueError: Only one class present in y_true. ROC AUC score is not defined in that case

Trying to create a ROC curve. model = RandomForestClassifier(500, n_jobs = -1); model.fit(X_train, y_train) y_pred = model.predict(X_test) probas = model.predict_proba(X_test)[:, 1] precision = ...
2
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1answer
59 views

Random Forest Crossvalidation in R

I am working on a random forest in R and I would like to add the 10- folds cross validation to my model. But I am quite stuck there. This is sample of my code. install.packages('randomForest') ...