Questions tagged [random-forest]

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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Number of features of the model must match the input. Model n_features is 696 and input n_features is 2

""" i have list of link i want to classify links to two group based on contenten group 1 related to lets say(marvel comics) and other not i scrap each link content and translate text and path to vect ...
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How come cross-validation is not picking up on an overfitted model?

I'm running RandomForestClassifier() without parameter tuning, on a dataset that has a balanced number of examples per class (2 classes overall), and I'm using cross_val_score with StratifiedKFold(...
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Warm_start/Batch training Random Forest classifier (Python)

I have made a random forest classifier (rfc) but since my data consist of 130k rows each with 7250 coloumns I do not have enough memory to load it all and pass it to RFC, thus I'm searching for some ...
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How tree works in scikit-learn

In a nutshell, I'm trying to code a random forest for my own benefit, but the aspects below surge as I test the code performance. I'm novice to this and hope some one can throw some light and point to ...
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Can I say Random Forest fits better than Linear Regression in my case?

I have a regression problem and I tried both Regular Regression and Random Forest. Here is my code from sklearn import linear_model clf = linear_model.LinearRegression() clf.fit(X, y) print('Raw ...
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Manual coding a Random Forest in R

I have been tasked to manually code a random forest predictor with bootstrapping in R. Upon completion of my code, i realised that the model returns twice the number of rows than the input test data, ...
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Does Random Seed affects my models after trained/exported

I am in great doubt about one of my models. I've trained a Random Forest model and found the best parameters after a grid search, however i forgot to set at seed at the moment. Once I had my best ...
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1answer
31 views

train/test split with repeated measures

I want to try a random forest on this data where y = happy after x = ate. Some of these people were lucky and got two free meals, while some only got one. Could I use rsample to make sure that the ...
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Random forest sklearn

I am confused if explicit cross validation is necessary for Random Forest? In random forest we have Out of Bag samples and this can be used for computing test accuracy. Is explicit cross validation ...
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10 views

How to interpret interaction results from random forest?

I used a Random Forest to find the interactions of all pairs in my glm that is aiming to find the conditional average treatment effect given that the student went to class. dummy_formula <- ...
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1answer
15 views

Right way to serialize a Random Forest Regression File

I am working on building a Random Forest Regression model for predicting ETA. I am saving the model in pickle format by using pickle package. I have also used joblib to save the model. But the size of ...
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1answer
23 views

Random forest sklearn- OOB score

what is the difference in including oob_Score =True and not including oob_score in RandomForestClassifier in sklearn in python. The out-of-bag (OOB) error is the average error for each calculated ...
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R Code-Random Forest Regression-Variable Importance Analysis- Significance Testing

Good day, I am performing a Variable Importance Analysis using the Randomforest package. The model runs fine and I get the output I desire. However, I want to test the statistical significance of the ...
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21 views

Random Forest Multi Class Python does not improve accuracy

I am making a random forest multi-classifier model. Basically there are hundred of households which have 200+ features, and based on these features I have to classify them in one of the classes {1,2,3,...
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1answer
39 views

Feature selection pipeline: X has a different shape than during fitting

I am trying to make a pipeline that selects 250 best features from a set and then fits a Random Forest Regressor on these features. Then I wish to use this to make predictions about fresh data X_fresh....
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20 views

Can variable importance be negative?

I have my variable importance code. It does not normalize the importance i.e, the importance are not divided by standard deviation of their differences.Here is the code for that, def ...
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18 views

Format of code for classification with randomForest

In two online courses they wrote the code like: randomForest(x = response, y = independent) But I would prefer to do the folllowing: randomForest(response ~ ., data = data.frame) Is there any ...
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After clustering data for training/validation/testing in ML, should I use all samples or make sure there is no bias?

To make sure that there is no information leakage between the training/validation/testing sets, I cluster my dataset. As an example, imagine that I want to train an algorithm to detect whether ...
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Random Forest feature importance values very low? Which ones should I pick?

Feature ranking: feature 1819 (0.011278) feature 884 (0.011278) feature 4810 (0.011278) feature 1807 (0.007519) feature 880 (0.007519) feature 6053 (0.007519) feature 854 (0.007519) feature 1710 (0....
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Read Categorical Value split in Random forest in R

I have a dataset which contains various categorical variables and no numeric variable. I converted the variables to ordered factors by: df$colA= factor(df$colA,levels=unique(df$colA), ordered=TRUE) ...
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1answer
43 views

Why Machine Learning Models give 100% accuracy for several models though did better split with scikit learn?

I'm going to evaluate accuracy of the models (RF,DT,GaussianNB,LinearSVC,SVC and XGBClassifier). Before model fitting, I have removed duplicated values. Also I did NAN imputations,One-Hot-Encoding and ...
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Error in predict.randomForest(modelFit, newdata) : missing values in newdata

I'm failing to understand why the random forest won't return predictions if I impute missing values. Below is a sample traceback call. stop("missing values in newdata") 6. predict....
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1answer
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I have different features in my train and test set for Random Forest

Should I choose only the important features from the train set and use that for predictions or create columns with 0 values for those features not included? training set 6160 features test set 4000 ...
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Locating tempory files from raster processes in R: 140 Gb missing

I recently ran a script that was meant to stack multiple large rasters and run a randomforest classification on the stack. I've done this numerous times with success, though it always takes up ...
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26 views

In decision trees, what log base should I use if I have a node with multiple branches?

The following question confuses me a lot. could you help me with it?(preferably by finding some academic reference.) We normally use base-2 log function to calculate entropy in decision trees, is ...
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Training hyperparameters on validation + training set using sklearn

I'm a newbie to Data Science. I have split my data into training (60%), validation(20%) and test(20%). Then trained my Random Forest Classifier using the sklearn library on the training data. Next I ...
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How to express the accuracy of RandomForestRegressor

I have been expressing the RandomForestRegressor accuracy based on MAPE as below and surprisingly I get the accuracy of more than 90%. def get_accuracy(model,X_test, y_test): pred = model....
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1answer
33 views

RandomForestClassifier implemented in Python does not work

I have this csv file : name,likes,trabels,rapn,aps,class 0,name1,22,0.3,0.893818566,2,0 1,name2,2,0.3,0.910212895,2,0 2,&#122;endym.,6,1,0.195939375,1,0 3,smok,16,0.3,0.56267631,2,0 4,d,3,0.3,0....
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regRF not available in Random forest package in R

I am trying to run a regresssion random forest and get the following error : Error in .C("regRF", x, as.double(y), as.integer(c(n, p)), as.integer(sampsize), : "regRF" not available for .C() ...
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31 views

Adjusting test size of K-Fold Cross Validation

I am looking to use k-fold cross validation on a random forest regressor in Python. I understand that k refers to the number of folds in the data-set, but how can I adjust the test-set size? Say I ...
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Why does Random Forest using SAP PAL predict the same value for every input?

I am using SAP Predictive Analytics Library to predict a certain variable. For this, I am using Random Decision Tree( also known as Random Fores) algorithm. I have 24 features and 25k rows. I am using ...
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how to read find.interaction() output in randomforestRSC package

I'm reading randomforestRSC package's readme but couldn't find how to use its output, which has these columns: Var 1 Var 2 Paired Additive Difference Are the rows ordered by highest to lowest ...
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2answers
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RandomForest, how to choose the optimal n_estimator parameter

I want to train my model and choose the optimal number of trees. codes are here from sklearn.ensemble import RandomForestClassifier tree_dep = [3,5,6] tree_n = [2,5,7] avg_rf_f1 = [] search = [] ...
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What is the runtime complexity of training a forest of T extremely randomized trees in terms of the Big O notation?

If n is the number of samples and there are m attributes then tree learning is O(m* n* log n), a Random forest which optimises for best split is O(T* m* n* log n) where there are T trees. For ...
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1answer
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Python - dot file to png file not found error

I am trying to convert dot file into a png or jpeg file where I can view the Random Forest Tree. I am following this tutorial: https://towardsdatascience.com/how-to-visualize-a-decision-tree-from-a-...
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2answers
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Regression like quantification of the importance of variables in random forest

Is it possible to quantify the importance of variables in figuring out the probability of an observation falling into one class. Something similar to Logistic regression. For example: If I have the ...
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1answer
35 views

Increase feature importance

I am working on a classification problem. I have around 1000 features and target variable has 2 classes. All the 1000 features have values 1 or 0. I am trying to find feature importance but my feature ...
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1answer
41 views

Random Forest Classification, test training data

I'm new in the machine learning environment. I noticed that a random forest classifier is composed of Decision trees, which rely on statistics to classify a sample. is it possible for a random forest ...
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2answers
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Random Forests interpretability

I have been using the sklearn RandomForestClassifier to solve a binary classification problem. For a particular sample prediction, I would like to be able to know how to change the features values to ...
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1answer
37 views

How to serialize a large randomforest classifier

I am using sklearn's randomforestclassifier to predict a set of classes. I have over 26000 classes and therefore the size of classifier is exceeding over 30 GBs. I am running it on linux with 64 GB of ...
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1answer
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Random Forest Using R with 4000+ variables

I want to build a random forest model using R. I have 4000+ variables. Is there a simple way to enter the variables without typing each one into the syntax? Or is there another way to reduce the ...
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0answers
35 views

Python 3: ValueError: Array contains NaN or infinity

I am having some trouble with the infinity error... that i just dont know where/what to fix. My data X_train looks like this: account_id name total_revenue account_age max_spend min_spend ...
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2answers
21 views

RandomForestClassifiers sklearn apply(X)

Apply returns indices of leafs. Could anyone explain which indices does it return? Related fucntion in Matlab? Thanks
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1answer
49 views

no applicable method for 'mutate_' applied to an object of class “c('integer', 'numeric')”

My overall goal is to classify an image using random forest. The dataframe contains training data; where 'landcover' contains the classes 0, 1 and 2. I am trying to reduce the number of classes by ...
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How to combine Random Forest learner with XGBoost?

XGBoost converts weak learners to strong learners. Therefore I need to enhance the Random Forest predictions in sklearn using XGBoost. I managed to predict the values separately from the each model. ...
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Bad prediction on testing the random forest model

I am playing some random forest model to predict the credit card payment will be delayed or not. The steps are as followed: data = pd.read_csv('data.csv') data.head(3) # 'feature1', '...
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Error: At least one of the class levels is not a valid R variable name

I am trying to implement Random Forest on a dataset using the caret package in R. Looking at the previous examples on this site I changed the column names and the factor levels. Nothing seems to ...
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1answer
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Random Forest not predicting zeros

I'm running a random forest on a data-set which contains a lot of zeros. These zeros represent a count of something (or absence thereof) and therefore are meaningful, by contrast to data that could be ...
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Why do the plots I make not match the partial dependence plots from the randomForest package?

So I'm trying to understand random forests and partial dependence plots at a fundamental level. To do this, I've tried using a simple system in which I know the equations being put into the random ...
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29 views

PySpark & MLLib: random forest prediction result always 0

df = pd.read_csv(r'main.csv', header=0) spark = SparkSession \ .builder \ .master("local") \ .appName("myapp") \ .getOrCreate() s_df = spark.createDataFrame(df) transformed_df = s_df....