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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23 views

difference between penalty and loss parameters in Sklearn LinearSVC library

I'm not very familiar with SVM Theory and I'm using this LinearSVC class in python: http://scikit-learn.org/stable/modules/generated/sklearn.svm.LinearSVC.html#sklearn.svm.LinearSVC I was wondering ...
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29 views

How to extract weights for each single predictor using LDA

I trained a LDA classifier on a dataset (X_train) (33 subjects x 6 predictors) where two groups are classified based on 6 predictors. I check the generalisation on a different dataset (X_test) and ...
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1answer
12 views

How can sklearn select categorical features based on feature selection

My question is i want to run feature selection on the data with several categorical variables. I have used get_dummies in pandas to generate all the sparse matrix for these categorical variables. My ...
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1answer
12 views

sci-kit SVM multi-class classification with unseen label

is there any possibility to configure an svm classifier from sci-kit such that: 1.) the svm classifier is trained with examples from 0,...,n - 1 2.) If none of the single classifiers (one-vs-rest) ...
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1answer
16 views

Predicting missing values with scikit-learn's Imputer module

I am writing a very basic program to predict missing values in a dataset using scikit-learn's Imputer class. I have made a NumPy array, created an Imputer object with strategy='mean' and performed ...
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1answer
21 views

scikit-learn's k-means: what does the predict method really do?

When I use scikit-learn's implementation of k-means I usually just call the fit() method and that is enough to get the cluster centers and the labels. The predict() method is used to calculate the ...
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1answer
34 views

sklearn: get feature names after L1-based feature selection

This question and answer demonstrate that when feature selection is performed using one of scikit-learn's dedicated feature selection routines, then the names of the selected features can be retrieved ...
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2answers
14 views

What is sklearn.cross_validation.cross_val_score

Just wondering what exactly is sklearn.cross_validation.cross_val_score? The documentation says it to be internal scoring method. Does it give FPR/Precision/Recall ?
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32 views

ImportError: cannot import name murmurhash3_32

I am trying to use the sklearn.qda package in python. I have installed it successfully but when Itry to import it I get the error message below. Can anybody tell me what should I do to fix this? ...
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2answers
135 views

Bug in scikit-learns LDA function - plots shows non-zero correlation

I did some LDA using scikit-learn's LDA function and I noticed in my resulting plots that there is a non-zero correlation between LDs. from sklearn.lda import LDA sklearn_lda = LDA(n_components=2) ...
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1answer
39 views

ImportError: cannot import name choice when importing sklearn.mixture

I am using scikit learn 0.15.0. When I try to import sklearn.mixture I get ImportError: cannot import name choice Any ideas? =================================================================== In ...
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2answers
61 views

python based naive base classifer for new language

I am not trying to build a whole new naive bayes classifier. There are plenty already for example scitkit learn has Naive Bayes implementation, NLTK has its own NaiveBayesClassifier. I have 1000+ ...
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20 views

how to fill-in (approximate) the missing values of a sparce matrix

I have a big sparse matrix of data. The matrix has already been discretized, that is, every nominal-type column have been converted into a series of boolean-type columns. So, assuming that rows ...
1
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1answer
28 views

One-hot encoding of large dataset with scikit-learn

I have a large dataset which I plan to do logistic regression on. It has lots of categorical variables, each having thousands of features which I am planning to use one hot encoding on. I will need to ...
0
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2answers
23 views

print statement not appearing in terminal

I'm starting to play with scikit-learn after enjoying my AI class last semester. I have no prior experience with python (we used WEKA) so I set up python3 with a virtual env that has all the packages. ...
0
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1answer
16 views

Scikit-learn ValueError when implementing logistic regression in Python

I am new to machine learning and am trying to set up a logistic regression for prediction purposes in Python using scikit-learn. I already set one up with a small, mock dataset, but when expanding ...
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0answers
8 views

Scikit RFE taking a long time

I'm not sure if I'm using RFE right, I've been running a program from the last couple of hours and it still didn't complete. I'm using a pretty powerful computer, so I don't think that is the issue. ...
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1answer
28 views

Using scikit-learn to train on multidimensional data

It's a very basic concept: I have more than one dependency for training. My data is all text and I have three separate fields. Every example I have been able to find has text data set up like this: ...
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2answers
16 views

Error after re-installing sklearn

I get the following error once i updated sklearn to a newer version - i don't know why this is . Traceback (most recent call last): File ...
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0answers
31 views

Python multidimensional x_train scikit-learn

So I am trying to classify title to description using SVMs. My data looks like the following: x_train = [ #hashingvectorizer #string #hashingvectorizer ] y_train = #string classifier = ...
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1answer
21 views

scikit svm regression predicts constant result

This is my data: (I reset the index. Date should be the index) Date A B C D 0 2013-10-07 -0.002169 0.000000 0.000880 -0.002331 1 2013-10-08 -0.019130 ...
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1answer
27 views

scikit learn: update countvectorizer after selecting k best features

I have a count vectorizer with a large number of features, and I would like to be able to select the k best features from a transformed set and then update the count_vectorizer to contain only those ...
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3answers
65 views

Logistic Regression function on sklearn

I am learning Logistic Regression from sklearn and came across this : ...
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1answer
29 views

Logit estimator in `statsmodels` and `sklearn`

I'm pretty sure it's a feature, not a bug, but I would like to know if there is a way to make sklearn and statsmodels match in their logit estimates. A very simple example: import numpy as np import ...
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1answer
29 views

X and y have incompatible shapes

I was trying to fit a classifier on a 1 dimensional feature vector of 1997 training examples with a sample of the same size containing my y's: clf = svm.SVC() j = 0 a = 0 listX = [] listY = [] ...
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2answers
19 views

Mini-batch k-means returns less than k clusters

I've been working with mini-batch k-means using the scikit-learn implementation to cluster datasets of about 45000 observations with about 170 features each. I noticed that the algorithm has trouble ...
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1answer
9 views

Scikit-learn: _count_vocab is throwing empty vocabulary error

I'm passing two strings for example: $1-2$ $3-4$ 5-6$ & $7-8$ $9-10$ $10-11$ In such case the count_vocab function is throwing an error: empty vocabulary: perhaps the document contains only ...
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1answer
34 views

Python: faster function for kernel evaluation

I've got a function like below that evaluates a kernel between the instances x and y: def my_hik(x, y): """Histogram-Intersection-Kernel """ summe = 0 for i in xrange(len(x)): ...
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1answer
29 views

Information gain using scikit.learn on Python

i have this issue as am working on decision trees using scikit.learn on Python. I would like to obtain better leaf for a chosen depth of my decision tree. clf = ...
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32 views

python sklearn - clustering visited web pages

I have a large database (arround 2 millions entries) of the form: userId url 54 : myjournal.eng/politic/technology_in_city 32 : myjournal.eng/life/food 45 : ...
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2answers
31 views

sklearn: Have an estimator that filters samples

I'm trying to implement my own Imputer. Under certain conditions, I would like to filter some of the train samples (that I deem low quality). However, since the transform method returns only X and ...
0
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1answer
33 views

building 2D datasets from text file

In scikit-learn, i have to implement a linear SVM classifier on a text documents collection. The documentation on feature extraction shows how to convert only the available datasets, iris, etc. I need ...
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1answer
36 views

Leave-one-out cross-validation

I am trying to evaluate a multivariable dataset by leave-one-out cross-validation and then remove those samples not predictive of the original dataset (Benjamini-corrected, FDR > 10%). Using the ...
1
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1answer
36 views

Scikit-learn: don't use some words as one word feature, but use in collocations

I'm doing text classification with using Python and scikit-learn. Now, I use TfidfVectorizer as vectorizer (for transform raw text to a feature vector) and MultinomialNB as a classifier. I use ...
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0answers
18 views

high error rate for learning data using one-class SVM [closed]

My learning data gives 60% error. How to improve that? My data are 2-dimension, with values in thousands (e.g. [3488,114987]). Should i normalize them first? (to the range 0-1). What is the parameter ...
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0answers
25 views

Sklearn Randomized Logistic Regression gives error “ValueError: The number of classes has to be greater than one”

I discovered what appears to be a bug in sklearn.RandomizedLogistic, and since it took me a long time to solve it, I'll post it here in case others have the same problem! What happens is: on ...
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2answers
20 views

from module import vs import big_module [python]

For some reason, this works: from sklearn import svm but this one does not import sklearn sklearn.svm.LinearSVC() saying module svm is not a subnodule of sklearn. shouldn't they be the ...
2
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1answer
40 views

Randomized PCA .explained_variance_ratio_ sums to greater than one in sklearn 0.15.0

When I run this code with sklearn.__version__ 0.15.0 I get a strange result: import numpy as np from scipy import sparse from sklearn.decomposition import RandomizedPCA a = np.array([[1, 0, 0, 0, 0, ...
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1answer
30 views

Get the score of a single sample in a multivariable model?

I'm trying to make a simple scikit-learn example work, but I keep getting the error: multiclass-multioutput is not supported. The first part of my code, which follows any basic tutorial, works as ...
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0answers
17 views

Spyder IPython Freezes with n_jobs?

I've been playing around with some sklearn tutorials using anaconda, but have run into a strange issue when working in Spyder. import numpy as np from sklearn.ensemble import RandomForestRegressor x ...
4
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0answers
123 views

How to improve the performance of this tiny distance Python function

I'm running into a performance bottleneck when using a custom distance metric function for a clustering algorithm from sklearn. The result as shown by Run Snake Run is this: Clearly the problem is ...
0
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2answers
39 views

DBSCAN algorithms in rapidminer and scikit-learn

I am trying to find a clustering algorithm to cluster nominal data with python. For that purpose I tried DBSCAN algorithm with RapidMiner and it worked with nominal data. But when I try same dataset ...
0
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0answers
18 views

importing KernelDensity in Python2.7 and 3.2

I am trying to learn scikit using examples on the following page: http://scikit-learn.org/stable/auto_examples/neighbors/plot_kde_1d.html#example-neighbors-plot-kde-1d-py I have both Python2.7 and ...
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1answer
30 views

pre-processing for clustering of network data

I will apply clustering (k-means) to network data which has columns like ip address and port number. Despite port numbers are integer, for example relation between 80th and 81th ports are not closer ...
0
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1answer
35 views

combine independent features in scikit-learn

i've a small question about the combination of different feature-sets. my situation: there are documents with a title, some tags and a text to classify into "spam" or "ham". to extract the ...
2
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1answer
31 views

Scikit-learn (Python): what does f_regression() compute?

I'm trying to understand what f_regression() in the feature selection package does. ...
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0answers
51 views

Numpy View Reshape Without Copy (2d Moving/Sliding Window, Strides, Masked Memory Structures)

I have an image stored as a 2d numpy array (possibly multi-d). I can make a view onto that array that reflects a 2d sliding window, but when I reshape it so that each row is a flattened window (rows ...
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1answer
34 views

How can I capture return value with Python timeit module?

Im running several machine learning algorithms with sklearn in a for loop and want to see how long each of them takes. The problem is I also need to return a value and DONT want to have to run it ...
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2answers
75 views

SGDClassifier with class_weight=auto fails on scikit-learn 0.15 but not 0.14

When I train an scikit-learn v0.15 SGDClassifier with these options: SGDClassifier(loss='log', class_weight=None, penalty='l2'), training completes with no error. Yet when I train this classifier ...
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2answers
45 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 ...