scikit-learn is a machine-learning library for Python that provides simple and efficient tools for data analysis and data mining. It is accessible to everybody and reusable in various contexts. It is built on NumPy, SciPy, and matplotlib. The project is open source and commercially usable (BSD ...

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9 views

scikit-learn. PolynomialFeatures fit_transform is giving Value error

I am getting a ValueError while trying to run the Polynomial Regression example: from sklearn.preprocessing import PolynomialFeatures import numpy as np poly = PolynomialFeatures(degree=2) ...
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1answer
10 views

No output for idf_ in scikit-learn

I am using the TfidfVectorizor function in scikit-learn. I am trying to include the tf-idf element using "use_idf=True". In the docs, it says after this, result.idf_ should return the array and shape ...
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1answer
23 views

sklearn decomposition top terms

Is there a way I can determine the top features/terms for each cluster in while the data was decomposed? in th example from the sklearn documentation, the top terms are extracted by sorting the ...
3
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1answer
28 views

sklearn, LassoCV() and ElasticCV() broken?

sklearn provides LASSO method for regression estimation. However, when I try to fit LassoCV(X,y) with y a matrix, it throws an error. See screenshot below, and the link for their documentation. The ...
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0answers
8 views

scikit-learn 0.15.2 Python 3.4 Windows cannot import cluster [duplicate]

I have installed scikit-learn 0.15.2 for Python 3.4 in Windows (8.1) using the MS windows installer: https://pypi.python.org/packages/3.4/s/scikit-learn/scikit-learn-0.15.2.win-amd64-py3.4.exe The ...
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1answer
300 views

Predict interesting articles with scikit-learn

I'm trying to build an algorithm capable of predicting if I will like an article, based on the previous articles I liked. Example: I read 50 articles, I liked 10. I tell my program I liked them. ...
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0answers
14 views

Loading svmlight style file when the number of features is lower than “n_features” with sklearn

I have updated my scikit-learn version to the latest, 0.15.2 (more specifically, I have created a new anaconda environment). It seems that, in this version, a new ValueError has been defined in the ...
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35 views

Parallel function in Python [on hold]

I do machine learning project in Python, so I have to parallel predict function, that I'm using in my program. The problem is that I can't use multiprocessing module, because the function I use for ...
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1answer
14 views

Why does the “partial_fit” method take much longer than the “fit” method

I'm playing around with dictionary learning of the scikit-learn library and I wanted to build a dictionary based on a sequence of images. I tried to use the partial_fit method of ...
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1answer
11 views

Extremely slow import of module skimage.io

Just reinstalled numpy (built against MKL), scipy, cython, pil, scikit-learn and scikit-image in a new virtualenv and I am getting extremely slow import time of the module skimage.io: import ...
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10 views

Get OOB data DecisionTree

Can we get the bag data used in a DecisionTree or the unused data (OOB data) ? If would like to compute the importance of a variable in a random forest with the permutation method.
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34 views

KMeans parallel processing failing

I'm running k-means on a big data set. I set it up like this: from sklearn.cluster import KMeans km = KMeans(n_clusters=500, max_iter = 1, n_init=1, init = 'random', precompute_distances = 0, ...
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2answers
49 views

How to use string kernels in scikit-learn?

I am trying to generate a string kernel that feeds a support vector classifier. I tried it with a function that calculates the kernel, something like that def stringkernel(K, G): for a in ...
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0answers
8 views

Find best threshold for RandomForrestRegressor used as a classifier

I have been given a model that is using a RandomForrestRegressor in scikit learn to classify a multi feature model as either one class or another. I do a train_test_split on my data and then run a fit ...
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1answer
22 views

python.trainData = trainData.astype(np.float)/255.0 ValueError: setting an array element with a sequence

i am trying to run this code. import csv import numpy as np from sklearn import svm, datasets, cross_validation from sklearn.grid_search import GridSearchCV ###Load Training Data trainTargetArray = ...
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0answers
18 views

A keyword list as a feature in Scikit Learn

I have a dataframe with many features, one of them is a list of keywords (space separated). In Weka you can specify a field as being a list of Strings. What is the best way to solve this situation in ...
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2answers
36 views

scikit Perceptron bias

I am using the very basic linear classifier provided by scikit class Perceptron: clf = linear_model.Perceptron(n_iter=12) clf.fit(X,Y) I have a X array where the rows are instances and the ...
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2answers
32 views

Numpy CountVectorizer: AttributeError: 'numpy.ndarray' object has no attribute 'lower'

I have an one-dimensional array with large strings in each of the elements. I am trying to use a CountVectorizer to convert text data into numerical vectors. However, I am getting an error saying: ...
2
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1answer
42 views

Choice of distance metric in sklearn.feature_extraction.text - feature engineering

I am following a tutorial about building machine learning systems in Python, and I am modifiying it as I go and trying to classify a new post as belonging to one of 7 different categories. ...
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1answer
26 views

Accessing gradient boosting tree weights in fitted model

Gradient Boosting learns a function that looks something like this: F(X) = W1*T1(X) + W2*T2(X) + ... + Wi*Ti(X) where Wi are weights and Ti are weak learners (decision trees). I know how to extract ...
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2answers
36 views

What is a good range of values for the svm.SVC() hyperparameters to be explored via GridSearchCV()?

I am running into the problem that the hyperparameters of my svm.SVC() are too wide such that the GridSearchCV() never gets completed! One idea is to use RandomizedSearchCV() instead. But again, my ...
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1answer
28 views

Converting python sparse matrix dict to scipy sparse matrix

I am using python scikit-learn for document clustering and I have a sparse matrix stored in a dict object: For example: doc_term_dict = { ('d1','t1'): 12, \ ...
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0answers
19 views

Clustering text data with Sklearn

I think my question is related to this one, but I couldn't understand it. My dataset is just 10 first files from 3 subdir of fro20 NewsGroups. Actually, I have two questions in this piece of code: ...
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1answer
31 views

Value Error while running SVM in Sklearn

I have the following problem of doing support vector machine with numpy arrays. import numpy as np from sklearn import svm I have 3 classes/labels (male, female, na), denoted as follows: labels = ...
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1answer
21 views

scikit learn prediction from coef_

I am trying to generate prediction from fitted model (using scikit-learn, a simple linear regression using MultiTaskLasso). I assume coef_ stores the weight of feature. Suppose there are 5 labels and ...
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1answer
19 views

Sci-kit and Regression Summary

As an R user, I have been wanted to also get up to speed on scikit. Started off with Linear, Ridge and Lasso. I have gone through the examples. Below is for the basic OLS. To set up the model(s) ...
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1answer
17 views

Choosing Features and restoring Features using K Mean in Scikit

I want to do some K Mean Clustering in Scikit. I have 9 features, but I only want to select four of them in clustering, also since each of four clustering is measured in different metrics, I want to ...
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0answers
23 views

When importing sklearn pythonw.exe stops working

When from sklearn import * is executed in IDLE, it pops up that pythonw.exe has stopped working. Numpy and Scipy work normally. I have tried to reinstall the package sklearn with ...
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0answers
18 views

Large memory consumption with Ridge

I'm trying to do cross-validation with scikit-learn, and I'm running into some memory issues that are hard to figure out. Basically, I've found that when I increase the number of hyperparameters ...
0
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1answer
10 views

Adding features to transformer returned by sklearn vectorizer [closed]

I am testing out text classification with sklearn and would like to add a feature of the words count to the csr_matrix returned by TfidfVectorizer. After apply fit_transform to my training data, I ...
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0answers
17 views

Get the document name in scikit-learn tf-idf matrix

I have created a tf-idf matrix but now I want to retrieve top 2 words for each document. I want to pass document id and it should give me the top 2 words. Right now, I have this sample data: from ...
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0answers
25 views

Canonical Correlation Analysis in Python with sklearn

I'm trying to use sklearn to carry out Canonical Correlation Analysis (CCA). I'm starting with the simple example that is included in the manual: from sklearn.cross_decomposition import CCA X = [[0., ...
2
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0answers
20 views

How to extend scikit CountVectorizer with pattern or nltk stemming?

Assume that i have the following opinions in Spanish language. How to lower case the opinions, extract all individual words and lemmatize the individual words?. This is what i done thanks to this ...
0
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1answer
33 views

Summing up n number matrix in python

I have a matrix of 40*2000 a vector of of dimension 1500. I used numpy.outer to compute outer product of vector with each column of matrix as: np.outer(vector, matrix) It showed memory error so ...
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0answers
22 views

Is it possible to use the bagging technique with two different algorithms in scikit learn?

I was wondering if it is possible to use a bagging technique with two different algorithms like Logistic Regression and Random Forest or (almost) any other algorithm? I would need somethings that ...
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2answers
20 views

Why is the logloss negative?

I just applied the log loss in sklearn for logistic regression: http://scikit-learn.org/stable/modules/generated/sklearn.metrics.log_loss.html My code looks something like this: def perform_cv(clf, ...
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0answers
22 views

which is best svm example which classifies plain input text?

I have checked various svm classification tools, mainly svmlight, pysvmlight, libsvm, scikit learn svm classifier. Each take input test file in some different format like pysvmlight: [(0, [(13.0, ...
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1answer
20 views

Python Sklearn doesn't work anymore in eclipse IDE

I updated Sklearn package: sudo pip install -U numpy scipy scikit-learn in mac osx 10.8 (mountain lion), and, aparently, everything was fine. I tested it via terminal (command line) and it works. ...
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0answers
20 views

Inexplicably different results for balanced vs. unbalanced testing datasets in scikit-learn

I've trained three different classifiers with the same data, and they all got similar results. I trained them with 1500 positive examples and 1500 negative examples. When I tested them with 500 ...
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0answers
20 views

How to pass text features to a scikit-learn classifier?

I'm in a sentiment analisys task, right now i have extracted some linguistic features or bigrams (the ocurrence of noun/adjective). At some point of this task i'll need to use scikit to classify this ...
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0answers
12 views

how to get the objective function value of model train with the class sklearn.svm?

How can I get the objective function value of svm model? I'm using the python library sklearn which contains the class sklearn.svm.SVC, and I don't know how to return the objective function value.
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1answer
23 views

scikit-learn, linearsvc - how to get

I am using LinearSVC from scikit-learn library and I wonder if it is possible to somehow pull out the vectors which my model uses after training to make predictions. Tried to google it for some time ...
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0answers
14 views

How to implement the predict_proba(X) -equivalent of Scikit-Learn in MLlib

python-wise I am preferring .predict_proba(X) instead of .decision_function(X) since it is easier for me to interpret the results. as far as I can see, the latter functionality is already implemented ...
0
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1answer
43 views

scipy/sklearn sparse matrix decomposition for document classification

I'm trying to do documentation classification on a large corpus (4 mil documents) and keep running into memory errors when using the standard scikit-learn methods. After cleaning/stemming my data, I ...
0
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1answer
9 views

Difference in SGD classifier results and statsmodels results for logistic with l1

As a check on my work, I've been comparing the output of scikit learn's SGDClassifier logistic implementation with statsmodels logistic. Once I add some l1 in combination with categorical variables, ...
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1answer
23 views

skimage slic: getting neighbouring segments

There is a nice implementation of super resolution segment generation (SLIC) in skimage.segmentation package in the python sklearn package. The slic() method returns the integer sets of labels. My ...
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0answers
17 views

sklearn- error about single class in sklearn

This one is killing me. Traceback (most recent call last): File "C:\Source Code\Thesis(FINAL)\Genre\MusicClassifier.py", line 58, in lr.fit(X_array, y_array) File ...
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1answer
20 views

extracting overlapping categories through machine learning

I have what I think a peculiar problem, I am trying to get attributes of products that may overlap. In my case, given the title, manufacturer, description, I need to know whether the product is a ...
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1answer
14 views

Do I need to transform nominal variables to be distinct fields for sklearn random forest? [duplicate]

This is a sample of dataset I'm using to look at lapsed customers. I've converted categorical values to be numbers. However I believe that sklearn random forest will treat these fields as discrete ...
0
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1answer
21 views

Scikit-learn GridSearch giving “ValueError: multiclass format is not supported” error

I'm trying to use GridSearch for parameter estimation of LinearSVC() as follows - clf_SVM = LinearSVC() params = { 'C': [0.5, 1.0, 1.5], 'tol': [1e-3, 1e-4, 1e-5], ...