Questions tagged [random-forest]

In learning algorithms and statistical classification, a random forest is an ensemble 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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16 views

R for Windows GUI front-end has stopped working (VSURF)

I am currently running VSURF in R Version 4.0.2 on 20 cores to eliminate redundant predictors in a large dataset. The predictor data.frame imported from csv (x.pred) contains 39 predictors and 289,000 ...
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21 views

High Score in Train Test Split but Low Score in CV in Python Scikit-Learn

I am new in Data Science and have struggled in the problem for the Kaggle's problem. When I use random forest regression for predicting the rating, it is found high Score using Train Test Split but ...
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6 views

Boosting Random Forest classifier by changing data type from numeric to nominal

I have recently worked on some datasets (very small, small, medium) and was able to boost the prediction accuracy of Random Forest (RF) models by simply changing the data types from continuous to a ...
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6 views

Skater for global interpretation of the model

I can see that the feature importance for Interpreter from skater is different from the feature importance of random forest. Why is it so? PFB the code and the feature importance obtained from skater &...
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How to predict probabilities from a new data set from an already built and validated model in Python? [migrated]

I have built a classification model using the following steps (and in the mentioned order) in Python - Data cleaning - Removing unwanted variables and separating Predictor variables from response ...
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14 views

Can normalization decrease model performance of ensemble methods?

Normalization e.g. z-scoring is a common preprocessing method in Machine Learning. I am analyzing a dataset and use ensemble methods like Random Forests or the XGBOOST framework. Now I compare models ...
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8 views

Error in eval(predvars, data, env) : object 'Clay' not found

I'm trying to find the root mean square error between my training and testing data. I use the code rmse_reg(rf.mehgdata, testdat, "MeHg") but I keep getting Error in eval(predvars, data, ...
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Hi i have trained a model using Random Forest Classifier for Web Phishing Detection [closed]

Successfully i have trained the model using Random Forest Classifier. After creating the model whenever i input in it it gives me : Value Error : could not convert string to float 'www.facebook.com'....
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39 views

Pyspark ML - Random forest classifier - One Hot Encoding not working for labels

I am trying to run a random forest classifier using pyspark ml (spark 2.4.0) with encoding the target labels using OHE. The model trains fine when I feed the labels as integers (string indexer) but ...
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18 views

How is Training Root-Mean-Square Error calculated?

Here is my code import Cocoa import CreateML let stockCSV = URL(string: "file:///Users/scottlydon/Desktop/iOS/DataFrame/TSLA_2020-06-28-20:19:11.csv")! let stockData = try MLDataTable(...
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Illegal Argument Exception using Random Forest in PySpark mllib

I am using Random Forest algorithm for classification in Spark MLlib using PySpark. My codes are as follows:\ model = RandomForest.trainClassifier(trnData, numClasses=3, categoricalFeaturesInfo={}, ...
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R: Image Classification - extracting pixel densities into an appropriate dataframe - part 2

EDIT: I asked a somewhat related question yesterday and got a helpful response, but this question is still different in terms of what I am after I am creating an R code that uses random forest ...
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37 views

Random Forest Regression in scikit-learn with criterion MAE instead of MSE is ~150 times slower [duplicate]

I'm trying to use Random Forest Regression with criterion = mae (mean absolute error) instead of mse (mean squared error). It have very significant influence on computation time. Roughly it takes 6 ...
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24 views

R: Image Classification - extracting pixel densities into an appropriate dataframe

I am creating an R code that uses random forest classification on food images. The jpg images (train and test dataset) are stored in a local folder and I want to make a dataframe that contains the ...
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Using reduced feature set for classification using random forest

I am using random forest for feature reduction. After selected the reducted feature sub set I want to classify it using any classifier. I need to take the reduced feature set where the unselected ...
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Results of Variable Importance of RF Classifier in GEE

I create a RF modulu in GEE like this; //Random Forest Result Function Module exports.getRfResults = function(image, title, bands, trainPoint, testPoint, area, label) { //Create Sample Points ...
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17 views

Using class encoding for prediction?

I was wondering if you can use class encoding, specifically OneHotEncoder in Python, for prediction, if you do not know all the future feature values? To give more context. I am predicting whether or ...
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2answers
37 views

Using pickle to load random forest model gives the wrong prediction

I have built a random forest model using sklearn and python, and I pickled the file as 'finalizedmode.sav'. I am now trying to load the pickled model to get predictions on the first two rows of my ...
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23 views

Using pickle to predict with random forest model and sklearn

I built a random forest model using sklearn and python and pickled to model, saving it as 'finalizedmode.sav' I am now trying to create a test file to make sure the pickling works, and I want to test ...
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24 views

Scikit learn models gives weight to random variable? Should I remove features with less importance?

I do some feature selection by removing correlated variables and backwards elimination. However, after all that is done as a test I threw in a random variable, and then trained logistic regression, ...
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18 views

How to divide my binary classification model into 3 classes based on probabilties?

I'm using Random forest Algorithm to create my model. My train data has 2 classes, and hence my predicted values also consist of 2 classes. I want to add the 3rd class, i.e "Can't say", ...
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1answer
37 views

pyspark random forest regressor predict multiclass

I have randomforest regressor pyspark ml model .response variable is of 9 classses. When I predict the test data I am getting probability I need to get the classes instead. Code used: rf = ...
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1answer
59 views

package ‘randomForest ’ is not available (for R version 4.0.2)

package ‘randomForest ’ is not available (for R version 4.0.2) I am taking that kind of not available messages? even RANDOMFOREST!!! what is that? Anybody have idea about that? Thanks!!
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1answer
24 views

Why does the permutation importance box plot look strange? How to plot a horizontal bar plot instead

I am using a RandomForestClassifier and using the permutation_importance plot by scikit-learn to observe feature importance which can be found here. However my box plot looks strange, with seemingly ...
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cuML vs sklearn: different accuracies for random forest classifier

I am using the rapidsai docker container as obtained via docker pull rapidsai/rapidsai:cuda10.0-runtime-ubuntu18.04 docker run --gpus all --rm -it -p 8888:8888 -p 8787:8787 -p 8786:8786 \ rapidsai/...
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how the randomForest package deals with the variable in factor vs character classes differently

I found an interesting issue: while we started an initial modelling with random forest, and for some variables, if we use them in the class "character" and "factor", the results, ...
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26 views

R Random forest extract - gsub and str_replace won't work [duplicate]

I'm trying to extract random forest rules as text. dat1 <- readRDS("model_2020-03-01_12.rds") Features <- c(rownames(dat1$importanceSD[,0])) featMarks <- c() for(i in 1:length(...
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1answer
25 views

Score obtained from cross_val_score is RMSE or MSE?

I am using following code:- from sklearn.model_selection import cross_val_score accuracies = cross_val_score(estimator = regressor, X=X,y=y, cv =10) accuracies.mean() This mean value is RMSE or MSE ? ...
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38 views

sklearn RandomForestClassifier's class_weights seems to have no effect

I'm trying to use sklearn's RandomForestClassifier to classify a dataset into two categories. The training data is highly unbalanced, with about 100,000 samples in the 'False' class, and 10,000 in the ...
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1answer
24 views

Strange classification in R and Error in eval(predvars, data, env) : object […] not found error (no typo!)

I am very new to R and have spent hours trying to solve the following problems (which I sense may be interrelated). I have read other answers mainly suggesting that there may be a typo in the DRB1 ...
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19 views

Noice predictor variables in random forest model in R

I need to fit a random forest model with {5, 25, 50, 100, 150} noise predictors with additional informative 2 variables in R by using randomForest function. The issue is i do not really get what is ...
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23 views

the randomForest() function from e1071 throws me an error saying that NAs are introduced, when there are no NAs in the dataset

I have been taking some machine learning courses in R with use cases for trading. I have downloaded some data, GE in this example, added a few indicator columns and separated the data into my training ...
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19 views

'issubclass() arg 2 must be a class or tuple of classes' error in gridsearchCV

i have the following training dataset: >>> x_train.head() macd obv topbolly lowbolly st_osc 0 0.419159 0.053660 0.013555 0.026964 0.687500 1 0....
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21 views

How do I stop showing the status of my random forest parallel computing in Python?

How can I clean up the output by removing these updates, I receive this by using: n_jobs = -1 : [Parallel(n_jobs=6)]: Using backend ThreadingBackend with 6 concurrent workers. [Parallel(n_jobs=6)]: ...
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12 views

BPE Tokenizer taking a long time to encode some html text

I am using BPE tokenizer to encode the HTML text for classification problem. For the most part it is working as expected few webpages the encoder is taking a long time to encode the HTML. Pages like ...
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1answer
39 views

RandomForestRegressor in sklearn giving negative scores

I'm surprised that i get a negative score on my predictions using the RandomForestRegressor, I'm using the default scorer(coefficient of determination). any help will be appreciated. my dataset looks ...
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random forest error- Found input variables with inconsistent numbers of samples: [80, 1]

I have built a random forest model using sklearn and python, and I want to now use my model to predict the label from new data, not with the data the model was created on. Is there a way to do this? ...
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23 views

How do I correct this error: “Elementwise comparison failed” in Pandas?

I'm making a Machine Learning Prediction algorithm to predict the ICC World Cup Winner in 2023 (assuming there will be a world cup...). I'm using Random Forest Classifier to predict the outcome of a ...
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21 views

Using random forest model to predict values from a new dataset

I have built a random forest model to predict 'size' from several values of 'shape'. I now want to input new data, not from the data the model was created on, and for it to predict the values of 'size'...
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Sample a feature in every tree of a Random Forest

As we know, random forests sample a subset A of features to be used in growing a tree. I have a feature v which I need to make sure appears in every tree (v in A at every feature sampling; this comes ...
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18 views

How do we find the fitted values and residuals of a Random Forest model (using H2O package in R) when forecasting a time series?

The Forecast package in R returns the fitted values and residuals by default as a part of the output. I was trying to build a H2O Random Forest model for forecasting and wanted to structure the output ...
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9 views

Building regression model on top of results from classification model

I´d like to build a RandomForest Regression Model on top of the results of my RandomForest Classifier predictions. I´m starting of with a dataframe that contains customer information from years 2016-...
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33 views

Using original data in output of random forest

I have built a random forest model using sklearn and python to predict 'pages' from a variety of size features. In my data, I also have a variable 'seconds' that was used initially to determine 'pages'...
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Can DecisionTreeClassifier be better than RandomForestClassifier?

Using Titanic dataset, I've got better test score with simple Tree that Forest using GridSearchCV with the same ranges. How does Random Forest exactly use Decision Trees?
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changing output of random forest classifier

I have built a random forest classifier using sklearn and python, and I wanted to change the format of the outputs of the prediction. I am using a csv file and predicting 'pages' from various size ...
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11 views

enforce test set and training set based on conditions (feature values)

I am trying to predict the first column of my input file: the gold column. My input file looks like this: gold,AtLeast1TCallers, AtLeast1TCallees, ...,Program T, 1, 0,...
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How to interpret the importance table of variables in random forest using Ilastik (VIGRA algorithme)

887/5000 Hi everyone, I use Ilastik, pixel classification software, for vessel segmentation. Given the labels and a set of functionalities, it uses a random forest algorithm from the VIGRA lybrary ...
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14 views

pdp partial plot string mismatch

I have problems plotting the effect plots of a brt and rf model with pdp's partial function. brt_m <- gbm(sum ~ ., data = na.omit(hbg_model_rf), n.trees = 5000, interaction.depth = 3, ...
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22 views

Can I use caret RFE result for subsequent random forest with CV?

I've been googling and reading alot about my issue but couldn't find a clear answer. In order to prevent data leakage, I use caret RFE for feature elimination: rfFuncs$summary <- twoClassSummary #...
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How to interpret the importance of the feature in XG boost or random forest?

While working on a kaggle challenge regression problem, I found useful to use the function/method 'Feature importance' for XG boost and random forest (see image below). What is the best way to ...

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