1
vote
1answer
22 views

Python Sklearn - RandomForest and Missing values

I'm trying to perfome RandomForest on a dataset that contain missing values. My data set looks like : train_data = [['1' 'NaN' 'NaN' '0.0127034' '0.0435092'] ['1' 'NaN' 'NaN' '0.0113187' ...
-1
votes
1answer
15 views

Does sklearn support a cost matrix?

Is it possible to train classifiers in sklearn with a cost matrix with different costs for different mistakes? For example in a 2 class problem, the cost matrix would be a 2 by 2 square matrix. For ...
0
votes
2answers
54 views

Python vectorization for classification [duplicate]

I am currently trying to build a text classification model (document classification) with roughly 80 classes. When I build and train the model using random forest (after vectorizing the text into a ...
0
votes
1answer
19 views

How does scikit's cross validation work?

I have the following snippet: print '\nfitting' rfr = RandomForestRegressor( n_estimators=10, max_features='auto', criterion='mse', max_depth=None, ) rfr.fit(X_train, y_train) # ...
0
votes
0answers
63 views

sklearn random forest: oob score too low?

I was searching for applications for random forests, and I found the following knowledge competition on Kaggle: https://www.kaggle.com/c/forest-cover-type-prediction. Following the advice at ...
0
votes
1answer
49 views

random forest with categorical features in sklearn

Say I have a categorical feature, color, which takes the values ['red', 'blue', 'green', 'orange'], and I want to use it to predict something in a random forest. If I one-hot encode it (i.e. I ...
0
votes
1answer
48 views

Weak learner in scikit learn random forest and extra tree classifiers

In the paper "Decision Forests for Classification, Regression, Density Estimation, Manifold Learning and Semi-Supervised Learning", the authors speak of different types of weak learners: axis-aligned ...
3
votes
3answers
271 views

Recursive feature elimination on Random Forest using scikit-learn

I'm trying to preform recursive feature elimination using scikit-learn and a random forest classifier, with OOB ROC as the method of scoring each subset created during the recursive process. However, ...
0
votes
1answer
99 views

how to access the python scikit learning code for Random Forest Classifier, Ada Boost Classifier, Extra Trees Classifier

Is it possible to access the python code for Random Forest Classifier, Ada Boost Classifier, Extra Trees Classifier which are python scikit learning methodes can be activated using below code:- from ...
0
votes
1answer
66 views

How are “feature_importances_” ordered in Scikit-learn's RandomForestRegressor

If I run a model (called clf in this case), I get output that looks like this. How can I tie this to the feature inputs that were used to train the classifier? >>> clf.feature_importances_ ...
1
vote
0answers
60 views

Scikit learn + Random forest - features of single trees

I have a very specific question regarding random forests and its implementation in scikit. I constructed a forest, and prediction works just fine so far. However, I need to know which particular ...
1
vote
0answers
74 views

Random forests: weighting individual observations when resampling

I'm currently using a random forest on a nationally representative dataset with probability weights incorporated for each observation, with the hope that I can use these weights in the bootstrapping ...
0
votes
1answer
123 views

Random Forests with a Customized Loss Function

I am a complete beginner in the field of machine learning. For a project, I have to use a customized loss function in the Random Forest Classification. I have used scikit till now. Suggestions on ...
0
votes
1answer
35 views

Manual tree fitting memory consumption in sklearn

I'm using sklearn's RandomForestClassifier for a classification problem. I would like to train the trees of the a forest individually as I am grabbing subsets of a (VERY) large set for each tree. ...
2
votes
2answers
274 views

How to output RandomForest Classifier from python?

I have trained a RandomForestClassifier from Python Sckit Learn Module with very big dataset, but question is how can I possibly save this model and let other people apply it on their end. Thank you!
0
votes
2answers
99 views

Algorithm for Multi-Class Classification of News Article

I want to classify the news article into the category it belongs to. I have 4 categories of news eg." Technology,Sports,Politics and Health." And i have collected around 50 documents for each category ...
1
vote
1answer
52 views

Scikit-learn, random forests - How many samples does each tree contain?

In scikit-learn's RandomForestClassifier, there is no setting to specify how many samples each tree should be built from. That is, how big the subsets should be that are randomly pulled from the data ...
1
vote
1answer
331 views

RandomForestClassifier vs ExtraTreesClassifier in scikit learn

Can anyone explain the difference between the RandomForestClassifier and ExtraTreesClassifier in scikit learn. I've spent a good bit of time reading the paper: P. Geurts, D. Ernst., and L. Wehenkel, ...
2
votes
1answer
213 views

How does sklearn random forest index feature_importances_

I have used the RandomForestClassifier in sklearn for determining the important features in my dataset. How am I able to return the actual feature names (my variables are labeled x1, x2, x3, etc.) ...
4
votes
1answer
603 views

Scikit learn - fit_transform on the test set

I am struggling to use Random Forest in Python with Scikit learn. My problem is that I use it for text classification (in 3 classes - positive/negative/neutral) and the features that I extract are ...
0
votes
0answers
84 views

troubleshooting random forests classifier in sci-kit learn

I am trying to run the random forests classifier from sci-kit learn and getting suspiciously bad output - less than 1% of predictions are correct. The model is performing much worse than chance. I ...
2
votes
2answers
416 views

Classifying text documents with random forests

I've a set of 4k text documents. They belong to 10 different classes. I'm trying to see how random forest method performs classification. The issue is my feature extraction class extracts 200k ...
3
votes
2answers
473 views

When using multiple classifiers - How to measure the ensemble's performance? [SciKit Learn]

I have a classification problem (predicting whether a sequence belongs to a class or not), for which I decided to use multiple classification methods, in order to help filter out the false positives. ...
1
vote
1answer
524 views

Use of scikit Random Forest sample_weights

I've been trying to figure out scikit's Random Forest sample_weight use and I cannot explain some of the results I'm seeing. Fundamentally I need it to balance a classification problem with unbalanced ...
0
votes
1answer
571 views

Handling categorical features using scikit-learn

What am I doing? I am solving a classification problem using Random Forests. I have a set of strings of a fixed length (10 characters long) that represent DNA sequences. DNA alphabet consists of 4 ...
0
votes
1answer
54 views

Returning the memory used so I can predict the memory required to compute ML algorithm

I am running a Random Forest ML script using a test size data set 5 k observations with a set number of parameters with a varying number of forests. My real model is closer to 1 million observations ...
-3
votes
2answers
76 views

Using python generators in scikit-learn [closed]

I was wondering whether and how it is possible to use a python generator as data input to scikit-learn classifier's .fit() functions? Due to huge amounts of data, this seems to make sense to me. In ...
4
votes
1answer
326 views

Save python random forest model to file

In R, after running "random forest" model, I can use save.image("***.RData") to store the model. Afterwards, I can just load the model to do predictions directly. Can you do a similar thing in ...
2
votes
1answer
737 views

Random Forest Classification - SciKit vs Weka on prediction with 100 features

I wanted to get a much faster random forest classifier than the one from Weka, I first tried the C++ Shark implementation (results: few speed improvement, drop in correctly classifed instances) and ...
1
vote
2answers
193 views

How do I output the regression prediction from each tree in a Random Forest in Python scikit-learn?

I'm new to scikit-learn and random forest regression and was wondering if there is an easy way to get the predictions from every tree in a random forest in addition to the combined prediction. I ...
2
votes
2answers
682 views

How do I solve overfitting in random forest of Python sklearn?

I am using RandomForestClassifier implemented in python sklearn package to build a binary classification model. The below is the results of cross validations: Fold 1 : Train: 164 Test: 40 Train ...
2
votes
1answer
402 views

Why is scikit-learn's random forest using so much memory?

I'm using scikit's Random Forest implementation: sklearn.ensemble.RandomForestClassifier(n_estimators=100, max_features="auto", ...
2
votes
1answer
231 views

Can sklearn Random Forest classifier adjust sample size by tree?

Perhaps this is too long-winded. Simple question about sklearn's random forest: For a true/false classification problem, is there a way in sklearn's random forest to specify the sample size used to ...
7
votes
1answer
350 views

Random Forest Classifier Segmentation Fault

been trying to run the RF classifier on a data set of ~50,000 entries with 20 or so labels which I thought should be fine but I keep coming across the following when trying to fit... Exception ...
8
votes
2answers
1k views

how to extract the decision rules from scikit-learn decision-tree?

Can I extract the underlying decision-rules (or 'decision paths') from a trained tree in a decision tree - as a textual list ? something like: "if A>0.4 then if B<0.2 then if C>0.8 then ...
4
votes
1answer
821 views

Unbalanced classification using RandomForestClassifier in sklearn

I have a dataset where the classes are unbalanced. The classes are either '1' or '0' where the ratio of class '1':'0' is 5:1. How do you calculate the prediction error for each class and the ...
1
vote
1answer
94 views

Extract Knowledge from RandomForest (scikit-learn)

i am using a RandomForest classifier and after having trained and tested the model i would like to extract "some Knowledge" from it. I know that a RandomForest combine the votes of a number of ...
1
vote
0answers
786 views

Scikit Learn - ValueError: Array contains NaN or infinity

There are no NaNs in my dataset, I have checked thoroughly. Any reason why I keep getting this error when trying to fit my classifier? Some of the numbers in the data set are rather large and some ...
0
votes
1answer
1k views

“Invalid Index to Scalar Variable” - When Using Scikit Learn “accuracy_score”

Not sure what is wrong exactly. However, my goal is to establish a cross-validtion python code. I know that there are various metrics, but I think that I am using the correct one. Instead of getting ...
3
votes
1answer
239 views

Proximity Matrix in sklearn.ensemble.RandomForestClassifier

I'm trying to perform clustering in Python using Random Forests. In the R implementation of Random Forests, there is a flag you can set to get the proximity matrix. I can't seem to find anything ...
0
votes
1answer
280 views

Can you extract scoring algorithm from Scikit-learn RandomForestClassifier and Load coefficients into Oracle?

I have run a RandomForestClassifier model in Python using the sklearn module. I saved the model in a pickle file. I then extract data from Oracle, save it as a .csv file, send this .csv file to a ...
0
votes
1answer
206 views

Export “RandomForestRegressor” model created with scikit-learn library

I'm developing C# application where I need to use machine learning algorithm (Random Forest). C# is not very suitable for data analysis, so I saved data to .csv file and then analyzed them in Python ...
3
votes
0answers
1k views

How to weight classes in a RandomForest implementation

I am working on 3D point identification using the RandomForest method from scikit. One of the issues I keep running into is that certain classes are present more often then other classes. This means ...
3
votes
1answer
2k views

Random Forest implementation in Python

all! Could anybody give me an advice on Random Forest implementation in Python? Ideally I need something that outputs as much information about the classifiers as possible, especially: which ...
0
votes
3answers
270 views

Features considered by ExtraTreeRegressor of Scikit Learn to construct Random Forest

I came across this example which involves completion of face for the test data set. Here, a value of 32 for max_features is passed to the ExtraTreesRegressor() function. I learnt that decision trees ...
1
vote
2answers
953 views

What is the way to represent factor variables in scikit-learn while using Random Forests?

I am solving a classification problem using Random Forests. For that I have decided to use Python library scikit-learn. But I am new to both Random Forest algorithm and this tool. My data contains ...
5
votes
2answers
613 views

Random Forest interpretation in scikit-learn

I am using sklearn.ensemble.RandomForestRegressor to fit a random forest regressor on a dataset. Now, that I have the results, is it possible to interpret this in some format where I can then ...
1
vote
1answer
278 views

How to obtain all ensemble estimates in RandomForestRegressor (scikit-learn)

I'm trying to fit a random forest regression and I'd like to obtain a distribution of my estimate by looking at the output of every regression tree in the ensemble, returned to me in some sort of ...
0
votes
2answers
437 views

Random Forest - Predict using less estimators

I've trained a Random Forest (regressor in this case) model using scikit learn (python), and I'would like to plot the error rate on a validation set based on the numeber of estimators used. In other ...
3
votes
1answer
1k views

Sklearn: How to Feed Data to sklearn RandomForestClassifier

I have this data: print training_data print labels # prints [[1, 0, 1, 1], [1, 1, 1, 1], [1, 0, 1, 1], [1, 1, 1, 0], [1, 1, 0, 1], [1, 1, 1, 1], [1, 1, 1, 1], [1, 1, 1, 1], [1, 1, 0,0], [1, 1, 1, ...