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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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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70 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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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
64 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') ...
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61 views

Random Forest pruning

I have sklearn random forest regressor. It's very heavy, 1.6 GBytes, and works very long time when predicting values. I want to prune it to make lighter. As I know pruning is not implemented for ...
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16 views

The Effect of Specifying Training Data as New Data when Making Random Forest Predictions in R

While using the predict function in R to get the predictions from a Random Forest model, I misspecified the training data as newdata as follows: RF1pred <- predict(RF1, newdata=TrainS1, type = ...
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28 views

R- Can't predict with randomForest

I have a training set with 14 variables (13 predicting and 1 response) and a test set with 13 variables (13 predicting, with exact same name as ones in training set). Here is the details: > ...
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1answer
19 views

What is PermutedVarDeltaError in Random Forest?

In MATLAB, the TreeBagger class provides a property PermutedVarDeltaError to measure the variable importance. I have gone through the provided definition several times: For any variable, the ...
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89 views

Random Forest - Caret - Time Series

I have a time series (apple stock prices -closing prices- turn into a data frame to fit a random forest using caret. I lagged on 1 day, 2 days and 6 days. I want to predict the next 2 days. Two step ...
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1answer
28 views

How can I get randomized grid search to be more verbose? (seems stopped, but can't diagnose)

I'm running a relatively large job, which involves doing a randomized grid search on a dataset, which (with a small n_iter_search) already takes a long time. I'm running it on a 64 core machine, and ...
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33 views

Passing levels to predict randomForest with a raster

I try to predict forest stand types (n=43 classes coding landform, geology, water- and nutrient supply etc.) on a large 1027206000 cell raster by randomForests. Among many DEM derived parameters that ...
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17 views

Random Forest Interpretation

I've run a Random Forest in R: fit.rf. All I want to know is: When I type 'fit.rf' the output shows '% var explained' Is the % Var explained the out of bag variance explained? Thanks in advance.
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27 views

Parameter oob_score_ in scikit-learn equals accuracy or error?

I implemented Random Forest classifiers (RF) from Python scikit-learn package for a ML problem. In the first stage I used cross validation to spot check other algorithms and RF is now my choice. ...
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21 views

sklearn randomforest pipeline doest not avoid overfitting

I am using a randomForestClassfier, and tune the parameters via the pipeline. However, the pipeline selects the model that fits perfectly the training set ! How can avoid the overfitting ? pipeline = ...
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29 views

How to do prediction of rasterstack data based point data?

I have RasterStack of five variable, each 1000 (this is time series). Let's say these are the five RasterStack objects. r <- raster(nrow=5, ncol=5) s1 <- stack(sapply(1:20, function(i) ...
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10 views

Setting a seed for alglib decision forest implementation

I am using alglib to train a random forest. I would like to actually train a number of forests using the same input data and the same set of input variables. To do this I need to control the seed of ...
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1answer
28 views

Classifying delivers strange results

I've got a classifying problem. I have a data set of physiological data (pulse, skin resistance etc., 4 features) from an experiment with 19 persons. In the experiment they had to do a sequence of ...
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29 views

RandomForest proximity between training and test

Using randomForest, I want to create a low-level projection of the instance proximities, as produced by MDSPlot(). However, I not only want the training proximities, but proximities between all the ...
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1answer
45 views

Random Forest: R code to identify the specific correctly-predicted records

Using the simple example dataset "iris", with "trainData" to train a Random Forest model and "testData" to predict/classify Species. # 1 - Create a Random Forest Model. iris.rf <- ...
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33 views

Can I see the out of bag error for regression tasks in the R randomForest package?

I'm using the randomForest package in R for prediction, and want to plot the out of bag (OOB) errors to see if I have enough trees, and to tune the mtry (number of variables at each split) variable. ...
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48 views

Error in initiating RandomForest model in R - Text Analytics

I am trying to set up 3 models - logistic regression, CART and randomForest to model a binary factor "spam" (dependent variable) from a list of independent variables (a Document Term Matrix where rows ...
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1answer
36 views

Are RandomForestRegressor features handles as categories?

i'm using RandomForestRegressor (from the great Scikt-Learn library in python) for my project, it gives me good results, but i think i can do better. when i'm giving features to 'fit(..)' function, ...
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1answer
44 views

Unexpected exception when combining random forest trees

Using the information described in this question, Combining random forest models in scikit learn ,I have attempted to combine several random forest classifiers into a single classifier using ...
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2answers
86 views

A simple explanation of Random Forest

I'm trying to understand how random forest works in English and not in mathematic. Can anybody give me a really simple explanation of how this algorithm works? As far as I understand, we feed the ...
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15 views

Productionalizing train set or train + test set

After a ton of feature engineering I was happy with the test results on the 20% of the leftover data that I held out. Now that I have my ROC curve and expected results at each probability threshold, ...
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33 views

scikit- RandomForest categorical features

My data has a lot of categorical features. I encode them using Dict_vectorizer. For example df['color']=['green','blue','white'] df['size']=['small','big','medium'] . I use RandomForest ...
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85 views

How to make Decision Tree rules more understandable?

I'd like to extract useful rules from Decision Trees/Random Forest in order to develop a more applicable way to handle the rules and predictions. So I need an application which makes the rules more ...
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2answers
42 views

Size of sample in Random Forest Regression

If understand correctly, when Random Forest estimators are calculated usually bootstrapping is applied, which means that a tree(i) is built only using data from sample(i), chosen with replacement. I ...
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2answers
57 views

How can you reduce the default ntree=500 parameter passed to RF from caret?

I believe the "rf" (randomForest) method in caret sets the default number of trees at 500. Unfortunately, this causes the time complexity to grow out of control for larger datasets. Is there any quick ...
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42 views

Random Forest Bootstrapping Option

Is there any open source implementation of random forest in C++ or Matlab that allows multiple dataset bootstrapping (second figure) instead of random sampling from only one dataset? (I have done my ...
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0answers
13 views

Is it possible to have better prediction on test data set?

I divided my data into 70% training and 30% test. Built a classifier using the training data, fit the model to the training data then use it to predict for the test data. My cross validated precision ...
0
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1answer
54 views

Multiclass classification with Random Forest in Apache Spark

The Apache Spark's documentation (1.4.0) promises that Random Forest (the same promise is for decision trees) can be extended to multiclass classification setting. However, I can't find any way to ...
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16 views

Is it the same to use 1) StandardScaler & Classifier vs 2) Pipeline(Scalar, Classifier)?

Does running a standard scaler and then a classifier give the same result as using a pipeline? Hi, I have a classification problem and trying to scale the X variables using scikit learn's ...
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1answer
48 views

How to plot a decision boundary of random forect model

I have ## Classification: library("randomForest") data=iris data<-data[data$Species!="setosa",] data$Species<-factor(as.character(data$Species)) iris.rf <- randomForest(Species ~ ...
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1answer
126 views

How to get the probability per instance in classifications models in spark.mllib

I'm using spark.mllib.classification.{LogisticRegressionModel, LogisticRegressionWithSGD} and spark.mllib.tree.RandomForest for classification. Using these packages I produce classification models. ...
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2answers
66 views

RANDOM FOREST for multi-label classification

I am making an application for multilabel text classification . I've tried different machine learning algorithm. No doubt the SVM with linear kernel gets the best results. I have also tried to sort ...
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22 views

How do I cross validate my predictions from Random Forest in python/sklearn?

Can someone please let me know, if this is the correct way to calculate the cross-validated precision of my classifier? I divided my dataset into xtrain and ytrain for training data and xtest & ...
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30 views

Is it correct to calculate sensitivity and specificity for a non-binary classification algorithm?

I have perfomed a supervised random forest classification on a medium-sized dataset with 20 possible classes. The data is in the form (header shown): object_id class meta_data_1 meta_data_2 ...
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1answer
43 views

How to control feature subsetting in random forest in scikit-learn?

I am trying to change the way that random forest algorithm using in subsetting features for every node. The original algorithm as it is implemented in Scikit-learn way is randomly subsetting. I want ...
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1answer
49 views

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

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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1answer
50 views

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
29 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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1answer
41 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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1answer
83 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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1answer
30 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 ...
0
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0answers
43 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
50 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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37 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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1answer
25 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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1answer
55 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 ...