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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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17 views

KNN with categorical values can not predict correctly

I am trying to build a model that given an item, predicts which store it belongs to. I have a data-set of ~250 records which are supposed to be items in different online stores. Each record is ...
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1answer
22 views

Imbalanced dataset doesn't produce good 'Precision' or 'Recall'

The dataset is extremely imbalanced the positive results were only 10% approximately compared to negative results. Eg: (0 - 11401, 1- 1280). I have tried 1. RandomForestClassifier with GridSearchCV - ...
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15 views

The difference between accuracy of test(60%) and training(99.9%) data sets is huge indicating high variance

What should I do to to reduce variance.I checked for multicollinearity using VIF.VIF for all the parameters was less than 2.AIC and BIC are high.Adj R^2 is around 0.45 which is less.The condition ...
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22 views

Exactly the same score values for different Hyperparamter Configuration sklearn RandomizedSearchCV

I am trying to find optimal Hyperparameter configuration for a sklearn pipeline of a customised unsupervised model which transforms my data into vector representations, which is then used in a ...
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2answers
19 views

What might be causing this error message when running the confusion matrix of a Random Forest algorithm? [on hold]

I am getting the following error message when running this piece of R code in my Random Forest analysis: Error in confusionMatrix.default(pred_rf, TestData$Attrition) : The data must contain some ...
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12 views

Any possibility to get featureImportances for Spark Regression RandomForest against each prediction, not only for overall model

I guess importances of feature is for overall model, but I want to know if I can get feature importances for each prediction point. I want to know for prediction value X on 1st Jan, feature A is ...
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12 views

PySpark MLLib Random Forest Feature Importances w/ feature names [duplicate]

I am trying to determine the most useful features for my PySpark, MLLib, random forest classifier. However, the output is a SparseVector without the feature names mapped to the feature indices. I'm ...
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2answers
42 views

R random forest inconsistent predictions

I recently built a random forest model using the ranger package in R. However, I noticed that the predictions stored in the ranger object during training (accessible with model$predictions) do not ...
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13 views

Evaluate() Random Forest model giving warning messages

I have ran an RF model in R studio, and I am trying to evaluate it. I'm running into 16 of these warning messages: In Ops.factor(a, tr[i]) : ‘<’ not meaningful for factors. The evaluation goes ...
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19 views

RandomForest regression p-Value [migrated]

Dear smart people of the internet, I'm currently working on a data set (a regression problem) and compare OLS vs RandomForest explanation power. Working with p-Values of those regressions would be ...
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1answer
22 views

How to select variables from this heatmap?

Here This is My problem. In this heatmap i did eliminate some variables. This is after elimination of some variables My Question Is: Is There Any correlated variables there in 2nd image? Is My ...
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1answer
20 views

Custom scoring function RandomForestRegressor

Using RandomSearchCV, I managed to find a RandomForestRegressor with the best hyperparameters. But, to this, I used a custom score function matching my specific needs. Now, I don't know how to use ...
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1answer
51 views

Can we use LDA with Random Forest Algorithm

Here is my R code. It show 100% Accuracy. # PCA and Random Forest database<-read.csv('data.csv') database<-database[,-31] library('caTools') set.seed(1000) split<-sample.split(database$...
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2answers
55 views

Cross validation dataset folds for Random Forest feature importance

I am trying to generate random forest's feature importance plot using cross validation folds. When only feature (X) and target(y) data is used, the implementation is straightforward such as: rfc = ...
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1answer
52 views

Confused about random_state in sklearn

So, basically, I'm using a RF for descriptive modelling as follows: from sklearn.model_selection import cross_val_score from sklearn.ensemble import RandomForestClassifier from sklearn.utils import ...
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1answer
11 views

Python - Using GridSearchCV with NLTK

I'm a little unsure as to how I can apply SKLearn's GridSearchCV to a random forest I'm using with NLTK. How to use GridSearchCV normally is discussed here, however my data is formatted differently to ...
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1answer
17 views

NotFittedError when using RandomForestRegressor

Python newbie. I'm trying to run simple random forest model with 5 features and one label but when I run RandomForestRegressor I get a NotFittedError (Below) which I do not understand. Any help ...
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9 views

What am I doing wrong with multprocessing using pool

I couldn't find any question related to my problem and I am unable to solve it. Just starting to use parallel computing in data analysis.I am using random forest for my prediction. When I run it using ...
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21 views

Getting same output from almost every tree of random forest

I'm trying to build a model through Random Forest in R. My target variable is binary. It has 76% as 1 and 24% as 0. While running Random Forest, I'm getting almost all 1 for every tree and getting 24%...
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38 views

Random forest fully fits training sample [migrated]

Using the randomforest package in R, I am getting 100% accuracy on the training dataset. Here is a reproducible example : library(randomForest) #### generate dataset #### n.obs <- 10000 # two ...
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1answer
19 views

Height of a random forest decison tree increasing till 25 and the test accuracy also increases

I have a dataset of [~16k] and am doing binary classsfication [0/1].When i am doing hyperparameter grid search in random forest my train and test accuracy increase as increase the depth[optimum is ...
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19 views

Retrieve Array of Target (y) Values in Regression Tree Leaf - Scikit Learn

I am trying to perform regression using ensembles of decision trees. I have trained and grown an ensemble of regression trees on an array X_train. Using X_test, I understand that I can retrieve the ...
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1answer
54 views

Confusion Matrix on H2O

Final Edit: this problem ended up occurring because the target array were integers that were supposed to represent categories so it was doing a regression. Once I converted them into factors using ....
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23 views

Best metrics to compare regression models

I have used the same dataset on different ML models such as SVR, XGBoost etc and obtained sets of results using python sklearn. I have also calculated the R2 scores, Mean Absolute Error (MAE) and Root ...
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21 views

Error while running RandomForestClassifier

clf=RandomForestClassifier(n_jobs=2,random_state=0) Showing error as name RandomForestClassifier is not defined while running in Jupyter notebook . Can anybody help ?
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1answer
30 views

Implementing custom stopping metrics to optimize during training in H2O model directly from R

I'm trying to implement the FBeta_Score() of the MLmetrics R package: FBeta_Score <- function(y_true, y_pred, positive = NULL, beta = 1) { Confusion_DF <- ConfusionDF(y_pred, y_true) if (...
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1answer
15 views

Error encountered: Classification metrics can't handle a mix of multiclass-multioutput and binary targets

from pandas import read_csv from sklearn.model_selection import train_test_split from sklearn.ensemble import RandomForestClassifier file = './BBC.csv' df = read_csv(file) array = df.values X = ...
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0answers
12 views

Event Driven Time Series Random Forest

I have some event-driven alarm data. Essentially I have information on when the alarm went off, want sensor caused the alarm, where it was located, along with whether or not the alarm is valid. I ...
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3answers
50 views

XGBoost: minimize influence of continuous linear features as opposed to categorical

Lets say I have 100 independent features - 90 are binary (e.g. 0/1) and 10 are continuous variables (e.g. age, height, weight, etc). I use the 100 features to predict a classifier problem with an ...
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0answers
26 views

Error in Oversampling example in R

I am runing below code for oversampling in R varNames1 = paste0("Quote.Type","+","Quote.State","+","Forecast.Type","+","Suggested.Reseller.Discount","+","Territory","+","Pricing.Type") ctrl <- ...
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1answer
19 views

How to construct dataframe for time series data using ensemble learning methods

I am trying to predict the Bitcoin price at t+5, i.e. 5 minutes ahead, using 11 technical indicators up to time t which can all be calculated from the open, high, low, close and volume values from the ...
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1answer
21 views

permutation importance in h2o random Forest

The CRAN implementation of random forests offers both variable importance measures: the Gini importance as well as the widely used permutation importance defined as For classification, it is the ...
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1answer
65 views

Why does performance suffer when fitting a Random Forest model after reducing with PCA?

This question has to do with comparing speed between a Random Forest Classifier model on a full set of features vs a Random Forest model on a reduced number of components after doing PCA. I'm using ...
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9 views

Postprocess predictions from bootstrapped replicates of randomForest model

I am using the boot package to do make some variations of a randomForest model by bootstrapping the training data. I then want to process the predictions to get an average frequency for each category ...
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1answer
14 views

Why there is need to randomly select the samples from data in random forest?

We can also form different decision trees from same data by randomly selecting the features without creating so many samples.
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1answer
26 views

Statistical significance of important features in a random forest?

I have a random forest classifier which gave me a feature importance rank. How can I derive statistical significance of the important features, similar to a regression model where you can infer ...
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18 views

Random forest shows higher feature importance over features that are not so relevant

Now I am trying to use local features to predict local targets using random forest regressor. For example, the total data contains information about 3 areas but I only want to predict the target value ...
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0answers
25 views

Quantile random forests from scikit-garden very slow at making predictions

I've started working with quantile random forests (QRFs) from the scikit-garden package. Previously I was creating regular random forests using RandomForestRegresser from sklearn.ensemble. It appears ...
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1answer
54 views

Unable to remove NaN values from dataset

When I am tring to predict the values for z, I am getting an error of "ValueError: Input contains NaN, infinity or a value too large for dtype('float32')." Am I making a mistake in line data.fillna(0,...
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1answer
40 views

Test accuracy is greater than train accuracy what to do?

I am using the random forest.My test accuracy is 70% on the other hand train accuracy is 34% ? what to do ? How can I solve this problem.
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1answer
28 views

ShinyApp reactive error while trying to select variables from imported data set

I am very new to Shiny and R in general and I am building an app that allows users to import data, select their variables, number of trees.. ect and then run that through a random forest script and ...
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32 views

GWAS - Random forest feature selection on SNPs with R [closed]

I'm working on a high dimensional individual x SNPs dataset. My goal is to predicate an epistasis binary phenotype (gene-gene interactions) based on supervised ML. SNP are encoded as 0,1,2 integer ...
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0answers
32 views

R TensorFlow tfestimators - SVM and random forest how to?

The R package tfestimators (https://tensorflow.rstudio.com/tfestimators/) lists several canned estimators currently available: linear_regressor() Linear regressor model. linear_classifier() Linear ...
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28 views

Random Forest using Multiple imputation “Error in as.data.frame.default(data) : cannot coerce class ”“mids”“ to a data.frame”

My aim is to make a radnomforest classifiation model but to impute the missing value. I am imputing the dataset with MIPCA() method but after having imputed data, I am applying the random forest ...
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1answer
18 views

Attempt to apply non- function, randomForest

I have a data set(train2) with 79 variables(numeric and text combined) and the SalePrice as the last column. I am trying to create a randomForest model, this is what I get as an error: Forest <- ...
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0answers
70 views

Find p-value and F-statistics in scikit learn RandomForestRegressor

How can I find p-value and F-statistics in following regression task with Random Forest Regressor rf = RandomForestRegressor(n_estimators=100, random_state=76) result = cross_val_score(rf, X, y, cv=...
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2answers
46 views

Why are my precision-recall and ROC curves not smooth?

I have some data labeled as either a 0 or 1 and I am trying to predict these classes using a random forest. Each instance is labeled with 20 features that are used to train the random forest (~30.000 ...
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27 views

How to get mean, standard deviation and p-values of accuracy scores across 10 fold cross validation

Hi so Im running a random forest recursive feature extraction with 10 fold cross validation and I need to report the means, the standard deviations and p-values of the accuracies achieved across all ...
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1answer
24 views

Time Weighted Samples when using Random Forest

I am wondering if there is a best practice for exponentially weight the training samples for random forest by time (putting more weights on more recent samples)? One way I can think of is to sample ...
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0answers
42 views

subsample size in RandomForest classifier

The documentation for Random Forest Classifier in Scikit-Learn says A random forest is a meta estimator that fits a number of decision tree classifiers on various sub-samples of the dataset and ...