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

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1answer
34 views

How to use Pearson Correlation as distance metric in Scikit-learn Agglomerative clustering

I have the following data: State Murder Assault UrbanPop Rape Alabama 13.200 236 58 21.200 Alaska 10.000 263 48 44.500 Arizona 8.100 294 80 31.000 Arkansas 8.800 190 50 19.500 ...
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1answer
16 views

How to use own algorithm to extract features in scikit-learn ( text feature extraction)

I want to use my own algorithm to extract features from training data and then fit and transform using CountVectorize in scikit-learn. Currently I am doing: from sklearn.feature_extraction.text ...
0
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1answer
19 views

Random Forest feature importance: how many are actually used?

I use RF twice in a row. First, I fit it using max_features='auto' and the whole dataset (109 feature), in order to perform features selection. The following is ...
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0answers
14 views

Memory Efficient Agglomerative Clustering with Linkage in Python

I want to cluster 2d points (latitude/longitude) on a map. The number of points is 400K so the input matrix would be 400k x 2. When I run scikit-learn's Agglomerative Clustering I run out of memory ...
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0answers
17 views

AttributeError: 'LogisticRegression' object has no attribute 'coef_' while running the ALT Tools Discourse Parser

I have installed sklearn tool using command apt-get install python-sklearn. But whenever I run the Discourse_Segmenter file, I get following error: ...
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0answers
30 views

What is the correct way to mix feature matrices with sklearn?

The other day I was dealing with a machine learning task that required to extract several types of feature matrices. I save this feature matrices as numpy arrays in disk in order to later use them in ...
2
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1answer
14 views

Inverse Document Frequency Formula

I'm having trouble with manually calculating the values for tf-idf. Python scikit keeps spitting out different values than I'd expect. I keep reading that idf(term) = log(# of docs/ # of docs with ...
1
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1answer
14 views

How to set up ID3 algorith in scikit-learn?

There is a DecisionTreeClassifier for varios types of trees (ID3,CART,C4.5) but I don't understand what parameters should I pass to emulate conventional ID3 algorithm behaviour?
1
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1answer
14 views

scikit - GridSearchCV on CalibratedCV with RandomForrestClassifier as base estimator

I was wondering if there is a way to perform GridSearchCV on a RandomForrestClassifier embedded in CalibratedCV, I would like to optimize for log loss so I need the evaluation to happen on ...
0
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0answers
22 views

Different results between using train_test_split and cross_val_score in sklearn.cross_validation with randomized data

I am performing preliminary tests using sklearn in my code. I am testing: 1) sklearn.cross_validation.cross_val_score 2) sklearn.cross_validation.train_test_split like in this question. The code ...
0
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0answers
9 views

Sparse Coding Library example in scikit-learn

I just started learning about machine learning and using scikit-learn. But scikit-learn is a little bit difficult for me to use and understand completely what it is doing. So cloud you help me to ...
0
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1answer
18 views

How to convert a large sparse matrix to an array(Details given below)?

i have a sparse matrix of features formed as a result of following operations using sklearn: from sklearn.feature_extraction.text import CountVectorizer vectorizer = CountVectorizer(analyzer = ...
1
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1answer
36 views

Problems with a binary one-hot (one-of-K) coding in python

Binary one-hot (also known as one-of-K) coding lies in making one binary column for each distinct value for a categorical variable. For example, if one has a color column (categorical variable) that ...
0
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1answer
16 views

How to solve the dimension mismatch between the training and test set loaded from svmlight format?

X_train, y_train = load_svmlight_file(train_file) X_test,y_test=load_svmlight_file(predict_file) clf = linear_model.LinearRegression() clf.fit(X_train,y_train) y=clf.predict(X_test) This is my code ...
0
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0answers
41 views

Flushing memmap completely to disk [duplicate]

Is there a way to completely flush memmap from memory in Python and somehow just store a pointer? I notice memmap_object.flush() and del memmap_object have different effects. Complete Code: ...
0
votes
1answer
19 views

How to get word count from TF*IDF value in sklearn

I want to get the count of a word in a given sentence using only tf*idf matrix of a set of sentences. I use TfidfVectorizer from sklearn.feature_extraction.text. Example : from ...
1
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1answer
15 views

Nltk Sklearn Unigram + Bigram

I'm building classificator using NLTK and nltk.sklearn wrapper. classifier = SklearnClassifier(LinearSVC(), int,True) classifier.train(train_set) When I was using only unigrams and build featureset ...
1
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1answer
31 views

How to get attribute list from fitted model in Scikit-learn?

Is there any way to get a list of features (attributes) from used model in Scikit-learn (or whole table of used training data)? I am using some preprocessing like feature selection and I would like to ...
0
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2answers
31 views

Load JPEG from URL to skimage without temporary file

Is it possible to load image in skimage (numpy matrix) format from URL without creating temporary file? skimage itself uses temporary files: ...
3
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2answers
73 views

Using memmap files for batch processing

I have a huge dataset on which I wish to PCA. I am limited by RAM and computational efficency of PCA. Therefore, I shifted to using Iterative PCA. Dataset Size-(140000,3504) The documentation ...
1
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1answer
14 views

Finding the corresponding sample fraction for a predicted response in classification trees Python 2.7

I know how to fit a tree using sklearn. I also know how to use it for prediction using either predict or predict_proba. However, for prediction I want to get the (raw) sample fractions rather than the ...
0
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1answer
28 views

Getting the accuracy for multi-label prediction in scikit-learn

In a multilabel classification setting, sklearn.metrics.accuracy_score only computes the subset accuracy (3): i.e. the set of labels predicted for a sample must exactly match the corresponding set of ...
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0answers
16 views

Scikit learn: utf-32-le' codec can't decode bytes

I'm trying to use a custom KNN distance metric for scikit learns KNN I have some strings that I converted to get into a numpy array like so: x=x.values.astype(str) x = ...
-1
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1answer
19 views

Random forest regression severely overfits single variable data

I am trying to use sklearn's random forest regression for a toy example. I generated 500 uniform random numbers between 1 and 100 as the predictor variables, and then took their logs and added ...
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1answer
27 views

How do I get sorted frequency of phrases using n-gram analysis in Python?

I have a file, "filename.txt". I need to get all the n-grams, say trigrams, along with their frequency, in a sorted manner. My aim is basically to get the most commonly used phrases. How do I do this ...
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0answers
23 views

SVM regression ruined by adding polynomial features

I'm trying to get the feel for SVM regression with a toy example. I generated random numbers between 1 and 100 as the predictors, then took their log and added gaussian noise to create the target ...
0
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0answers
10 views

Sklearn joblib load function IO error from AWS S3

I am trying to load a pkl dump of my classifier from sklearn-learn. The joblib dump does a much better compression than the cPickle dump for my object so I would like to stick with it. However, I am ...
0
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2answers
20 views

cluster points after KMeans clustering (scikit learn)

I have done clustering using Kmeans using sklearn. While it has a method to print the centroids, I am finding it rather bizzare that scikit-learn doesn't have a method to print out the cluster-points ...
0
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0answers
39 views

Multivariate gaussian curve fitting

The MATLAB website says - There is a difference between fitting a curve to a set of points, and fitting a probability distribution to a sample of data. Is there any method to fit a Gaussian ...
0
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1answer
23 views

Two category document classification using sklearn

I am messing around with sklearn and support vector machines to classify documents. The categories that I am looking to place the documents in are {course, non-course} where course represents web page ...
0
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0answers
33 views

Apply operations memmap

Code: def wavelet_features_compute_memmap(X_train): temp_train_data=X_train[1000:] final_train_set=[] num_axis1=temp_train_data.shape[0] #the no the samples ...
2
votes
1answer
43 views

ValueError: empty vocabulary; perhaps the documents only contain stop words

I'm using (for the first time) the scikit library and I got this error: ValueError: empty vocabulary; perhaps the documents only contain stop words File ...
2
votes
2answers
38 views

Choosing the number of clusters in heirarchical agglomerative clustering with scikit

The wikipedia article on determining the number of clusters in a dataset indicated that I do not need to worry about such a problem when using hierarchical clustering. However when I tried to use ...
1
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1answer
28 views

Automating the rumour identification process

Currenlty what we do, check the user discussion based on some keywords on social media. As per the keywords detection we identify that this can be rumour. Approach to automate the process: Keyword ...
0
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1answer
24 views

Why can't I import the AgglomerativeClustering class?

I would like to use AgglomerativeClustering from sklearn but I am not able to import it. >>> from sklearn.cluster import AgglomerativeClustering Traceback (most recent call last): File ...
0
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0answers
22 views

sklearn increasing number of jobs leads to slow training

I've been trying to get sklearn to use more cpu cores during gridsearch (doing this on a Windows machine). Code is this: parameters = {'n_estimators': numpy.arange(1,10), ...
1
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0answers
17 views

Optimizing Django+scikit svm model

I am building a django app facilitating scikit SVM inference. Currently the svm model was built offline and has been placed inside the Django site. The problem is the every user request has to load ...
1
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0answers
19 views

simple python implementation of collaborative topic modeling?

I came across these 2 papers which combined collaborative filtering(Matrix factorization) and Topic modelling (LDA) to recommend users similar articles/posts based on topic terms of post/articles that ...
3
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1answer
30 views

Using GridSearchCV with AdaBoost and DecisionTreeClassifier

I am attempting to tune an AdaBoost Classifier ("ABT") using a DecisionTreeClassifier ("DTC") as the base_estimator. I would like to tune both ABT and DTC parameters simultaneously, but am not sure ...
0
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0answers
16 views

Combining Recursive Feature Elimination and Grid Search in scikit-learn

I am trying to combine recursive feature elimination and grid search in scikit-learn. As you can see from the code below (which works), I am able to get the best estimator from a grid search and then ...
0
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0answers
25 views

Fastest PCA Algorithm for huge dataset [closed]

Using normal PCA (sklearn)on huge dataset is very slow. Is there an implementation of below available somewhere in python? ...
1
vote
2answers
27 views

Error with Sklearn Random Forest Regressor

When trying to fit a Random Forest Regressor model with y data that looks like this: [ 0.00000000e+00 1.36094276e+02 4.46608221e+03 8.72660888e+03 1.31375786e+04 1.73580193e+04 ...
0
votes
1answer
47 views

Convert a list of words to a list of integers in scikit-learn

I want to convert a list of words to a list of integers in scikit-learn, and do so for a corpus that consists of a list of lists of words. E.g. the corpus can be a bunch of sentences. I can do as ...
0
votes
1answer
35 views

plotting linear SVM

I tried following the example here but i am having trouble applying it when i have 16 features. lin_svc is trained with those 16 features (i deleted the line to re-train it again from the example). it ...
2
votes
2answers
59 views

Python PCA on Matrix too large to fit into memory

I have a csv that is 100,000 rows x 27,000 columns that I am trying to do PCA on to produce a 100,000 rows X 300 columns matrix. The csv is 9GB large. Here is currently what I'm doing: from ...
0
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1answer
36 views

Predicting classes with a lot of data skewed towards one class

I have a question on how to deal with some interesting data. I currently have some data (The counts are real, but the situation is fake) where we predict the number of t-shirts that people will ...
0
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1answer
32 views

Kernel density estimation of the histogram of an image

I'm trying to perform a Kernel Density Estimation on my histogram which has been computed over an image: I use scikit learn to compute the kernel density estimation using a gaussian kernel: ...
1
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1answer
35 views

Scikit-learn tutorial documentation location

I have scikit-learn 0.16.1 installed on Ubuntu 14.04 and am working through the tutorial. SKL was installed with all default configuration. The tutorial states The source of this tutorial can ...
2
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2answers
48 views

How to add an sklearn wrapper for a new ML algorithm

I would like to integrate factorization machines in sklearn. I checked sklearn documentation and the web for how to wrap a new algorithm but this requirement seems to be not very well documented. So, ...
0
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0answers
35 views

Good results when training and cross-validating a model, but test data set shows poor results

My problem is that I obtain a model with very good results (training and cross-validating), but when I test it again (with a different data set) poor results appear. I got a model which has been ...