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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Having problems with dimensions in machine learning ( Python Scikit )

I am a bit new to applying machine learning, so I was trying to teach myself how to do linear regression with any kind of data on mldata.org and in the Python scikit package. I tested out the linear ...
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1answer
30 views

Normalize PCA with scikit-learn when data is split

I have a followup question on: How to normalize with PCA and scikit-learn. I'm creating an emotion detection system and what I do now is: Split data over all emotion (distributing data over ...
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5 views

Multiprocessing backed parallel loops cannot be nested below threads

What is the reason of such issue in joblib? 'Multiprocessing backed parallel loops cannot be nested below threads, setting n_jobs=1' What should I do to avoid such issue? Actually I need to implement ...
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1answer
19 views

Problems fitting vocabulary in scikit-learn?

I have a directory full of .txt files (documents). First I load the documents and strip some parenthesis and remove some quotes, so the documents looks as follows, for example: document1: is a ...
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18 views

Normalization of Scikit-learn MultinomialNB output

In Scikit-learn documentation it is possible to see that the MultinomialNB estimator has a method called predict-proba in which it has the following description: "Returns the probability of the ...
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1answer
24 views

ValueError : Random forest classification by scikit learn

I am solving a classification problem using Random Forests.I transformed a sentence to num by BOW.and I put a label into it, and built a tree. data_train = [[1.0, 1.0], [2.0, 2.0]] label_train = ...
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1answer
24 views

Which features selects fit_transform?

I'm selecting features using LinearSVC. All the features are binaries. This is how it looks like: In> X0.shape Out> (6876299, 49) In> lsvc = LinearSVC(C=0.01, penalty="l1", dual=False) ...
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1answer
13 views

Pandas OneHotEncoder.fit(dataframe) returns ValueError: invalid literal for long() with base 10

I'm trying to convert a Pandas dataframe to a NumPy array to create a model with Sklearn. I'll simplify the problem here. >>> mydf.head(10) IdVisita 445 ...
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13 views

scikit-learn ignore column, but not drop

I have created a scikit-learn model that seems to have learned well. It predicts the test data produced by StratifiedShuffleSplit well, but that test is not sufficient. I want to do some further ...
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34 views

How to save a randomforest in scikit-learn?

Actually there is a lot of question about persistence,but i have tried a lot using pickle or joblib.dumps . but when i use it to save my random forest i got this: ValueError: ("Buffer dtype mismatch, ...
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47 views

R's caret for sklearn user

I've used sklearn for machine learning modelling over the last couple of years and grew accustomed to what seems like a very logical and cohesive framework: from sklearn.ensemble import ...
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1answer
46 views

Predict movie reviews with scikit-learn

I'm using scikit-learn MultinomialNB and Vectorizer to build a prediction model of whether the review is good or bad. After training on the labelled data, how do I use it to predict new reviews (or ...
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2answers
33 views

How does kmeans know how to cluster documents when we only feed it tfidf vectors of individual words?

I am using scikit learn's Kmeans algorithm to cluster comments. sentence_list=['hello how are you', "I am doing great", "my name is abc"] vectorizer=TfidfVectorizer(min_df=1, max_df=0.9, ...
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1answer
10 views

Getting a negative score on using LassoCV.score() in scikit-learn

I have tested 2 models using LassoCV, one without any explicit alphas list, and the other with alphas list- Model1 = LassoCV(alphas=None, copy_X=True, cv=None, eps=0.001, fit_intercept=True, ...
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1answer
23 views

Acces data points scikit KNNR

Question After fitting the data with neigh.fit() I would like to access these data-points, how do I do this? Details >>> samples = [[0., 0., 0.], [0., .5, 0.], [1., 1., .5]] >>> ...
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57 views

How to precisely generate a similarity measure between line charts with similar features

I am trying to compare one line chart to a number of other line charts and I would like to find all charts that are similar with regard to their significant markers' positions. I already tried a ...
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1answer
42 views

how to use feature hashing correctly in python

I have many arrays of same dimension,such as x = np.array([3,2,0,4,5,2,1...]) #the dimension of the vectors is above 50000 y = np.array([1,3,4,2,4,1,4...]) What I want to do is to use Feature ...
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40 views

How to load_files and process a .txt file with scikit-learn?

Let's say that I have in a folder in the desktop with different .txt files. They look like this. File_1: ('this', 'is'), ('a', 'very'),....., ('large', '.txt'), ('file', 'with'), ('lots', 'of'), ...
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20 views

Scikit Learn Train SVM Character Recognition

I' m new to SciKit Learn. I have generated with OpenCV 5000 20X20 images with characters and random noise in order to train a SVM for character recognition. I have succesfully trained the SVM, but ...
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1answer
76 views

What is a good way to get a similarity measure of two images that contain a line chart?

I have tried the dHash algorithm which is applied on each image, then a hamming_distance is calculated on both hashes, the lower the number, the higher the similarity. from PIL import Image import os ...
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2answers
24 views

Understanding accuracy_score with scikit-learn with my own corpus?

Suppose that i all ready do some text classification with scikit learn with SVC. First i vectorized the corpus, i split the data into test and train sets and then i set up the labels into the train ...
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11 views

py2exe no module named lgamma

I am trying to create an exe file for a python file. py2exe creates the executable, but when I run the executable, I get the following traceback: ...
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2answers
53 views

sentiment analysis using sklearn in python

I am very new to python as well as machine learning. I am trying to work on Sentiment Analysis of twitter data , so while working out I directly use sklearn without any preprocess in nltk. #reading ...
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1answer
16 views

scikit 0.15 classifiers without predict_proba

In scikit some classifiers do not implement the "predict_proba" function. While I understand that some classifiers do not predict probabilities, I would expect that there is always a confidence ...
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1answer
28 views

Precision-recall curve with average='micro' for multiclass classifier in scikit-learn

All I'm doing is running the supplied code on this page: http://scikit-learn.org/stable/auto_examples/plot_precision_recall.html to find ROC curves. All I've done is copied the code, but I'm getting ...
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10 views

ROC AUC score discrepancy for multi-class depending on whether class probabilities or binarized predictions are used

I am using sklearn to perform a one-vs-all ROC AUC calculation for multiple classes. When I do y_score = clf.predict(X_test) roc_auc_score(label_binarize(y_test,classes=classes), ...
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1answer
28 views

Saving Random Forest

I want to save and load a fitted Random Forest Classifier, but I get an error. forest = RandomForestClassifier(n_estimators = 100, max_features = mf_val) forest = forest.fit(L1[0:100], L2[0:100]) ...
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1answer
21 views

PDF estimation in Scikit-Learn KDE

I am trying to compute PDF estimate from KDE computed using scikit-learn module. I have seen 2 variants of scoring and I am trying both: Statement A and B below. Statement A results in following ...
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1answer
21 views

How to realise BP network width scikit-learn? [closed]

everybody! Recently, I am learning artificial neural nets, and I want to use python to realize BP network, but I don't know how to use scikit-learn, which is a package of python, to realize the BP ...
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1answer
26 views

stacking 3 variables for kmeans scikit

I have 3 variable that i want to fit into a kmeans model. One is the TFIDF vector, One is the Count vector and the third one is the number of words in a document (sentence_list_len). Here is my ...
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23 views

Decision Tree Cut Points

I have been looking at scikit-learn and have been trying to work out how to output an array or a dictionary of the cut points for each level of a decision tree. I can see how to generate an image of ...
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13 views

RandomForestClassifier Regression Probabilities

Using sklearn's RandomForestClassifier, if the class is a float then it will predict with regression trees and the prediction will be a float. I am trying to use arr = model.predict_proba(newdata) ...
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1answer
14 views

Trying to avoid .toarray() when loading data into an SVC model in scikit-learn

I'm trying to plug a bunch of data (sentiment-tagged tweets) into an SVM using scikit-learn. I've been using CountVectorizer to build a sparse array of word counts, and it's all working fine with ...
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33 views

scikit's GridSearch and Python in general are not freeing memory

I made some weird observations that my GridSearches keep failing after a couple of hours and I initially couldn't figure out why. I monitored the memory usage then over time and saw that it it started ...
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26 views

difference between np.linalg.lstsq and linear regression in scikit learn

comb 1 is a pandas data frame with following values. yearID    teamID     salary         W 408         ANA ...
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1answer
63 views

Is there a way to vectorize this loop

Is there a way to vectorize this code to eliminate the for loop: import numpy as np Z = np.concatenate((X, labels[:,None]), axis=1) centroids = np.empty([len(unique(labels))-1,2]) for i in ...
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1answer
37 views

Does it make sense to use both countvectorizer and tfidfvectorizer as feature vectors for text clustering with KMeans?

I am trying to build out my feature vectors from my csv file which contain about 1000 comments. One of my feature vector is tfidf using scikit learn's tfidf vectorizer. Does it make sense to also use ...
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4 views

scikit-learn: Learning Curve don't accept fit_params

Is there a specific reason why learningcurve doesn't accept fit_params as one of the parameters? I use sample_weights in several different aspects of my modeling, but learningcurve doesn't accept it ...
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1answer
11 views

what is the definition of the parameter 'verbose' in scikit learn kmeans clustering

Here is the kmeans algorithm class from scikit learn. class sklearn.cluster.KMeans(n_clusters=8, init='k-means++', n_init=10, max_iter=300, tol=0.0001, precompute_distances=True, verbose=0, ...
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1answer
16 views

DPGMM Clustering All Values into Single Cluster

So I have converted my corpus into a nice word2vec matrix. This matrix is a floating point matrix of with negative & positive numbers. I can't seem to get the infinite dirichlet process to give ...
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25 views

How do i visualize data points of tf-idf vectors for kmeans clustering?

I have a list of documents and the tf-idf score for each unique word in the entire corpus. How do I visualize that on a 2-d plot to give me a gauge of how many clusters I will need to run k-means? ...
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1answer
18 views

Sci-kit learn pipeline returns indexError: too many indices for array

I'm trying to get to grips with sci-kit learn for some simple machine learning projects but I'm coming unstuck with Pipelines and wonder what I've done wrong... I'm trying to work through a tutorial ...
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3answers
39 views

scikit-learn: Finding the features that contribute to each KMeans cluster

Say you have 10 features you are using to create 3 clusters. Is there a way to see the level of contribution each of the features have for each of the clusters? What I want to be able to say is that ...
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1answer
44 views

Training different regressors with sklearn

I have a list of Xs (http://goo.gl/oMZhu5) and their output value Ys (http://goo.gl/1UP0zy). And using the following code, I am able to train the following regressors: Linear Regressor Isotonic ...
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1answer
29 views

Scikit Learn CountVectorizer

I'm trying to compute a simple word frequency using scikit-learn's CountVectorizer. import pandas as pd import numpy as np from sklearn.feature_extraction.text import CountVectorizer texts=["dog cat ...
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3 views

Scikit learn manual GMM for random values

I am looking to use the random sample generator (.sample()) function of the Gaussian mixture models. However, I want to define the means, covariances, and weights in the GMM rather than fit any data. ...
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1answer
22 views

Calculating probability with sklearn GMM

I want to determine the probability that a data point belongs to a population of data. I read that sklearn GMM can do this. I tried the following.... import numpy as np from sklearn.mixture import ...
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1answer
13 views

Understanding DictVectorizer in scikit-learn?

I'm exploring the different feature extracccion classes that scikit-learn provide. Reading the documentation i did not understand very well for what DictVectorizer can be used?. Other questions come ...
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1answer
36 views

How to vectorize labeled bigrams with scikit learn?

I'm self studying how to use scikit-learn and i decided to start the second task but with my own corpus. I obtained some bigrams by hand, let's say: training_data = [[('this', 'is'), ('is', ...
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1answer
26 views

scikit-learn : Installation problems

I'm trying to install machine learning package scikit-learn in OSX unsuccessfully. When I write the command "python setup.py install" to check if my installation is OK, I got build_src: building ...