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 ...

learn more… | top users | synonyms (2)

0
votes
0answers
7 views

Finding a corresponding leaf node for each data point in a decision tree (scikit-learn)

I'm using decision tree classifier from the scikit-learn package in python 3.4, and I want to get the corresponding leaf node id for each of my input data point. For example, my input might look ...
0
votes
0answers
15 views

scikit-learn HashingVectorizer on sparse matrix

In scikit-learn, how can I run the HashingVectorizer on data already present in a scipy.sparse matrix? My data is in svmlight format, so I am loading it with sklearn.datasets.load_svmlight_file and ...
1
vote
1answer
25 views

ValueError(u“Invalid mode, expected 'c' or 'fortran', got f\x00o\x00r\x00t”,)

I am trying to import sklearn.neighbors in Python, and from there import KNeighborsClassifier. When I try to execute it in Python, I get a ValueError: ValueError(u"Invalid mode, expected 'c' or ...
1
vote
0answers
8 views

Using Scikit RandomizedPCA Python

I'm programming in Python 3.4 and I'm trying to use a package form scikit called RandomizedPCA in my program to recognize persons in photos. from sklearn.decomposition import RandomizedPCA ...
0
votes
0answers
4 views

Avarage values of precision, recall and fscore for each label

I'm cross validating a sklearn classifier model and want to quickly obtain average values of precision, recall and f-score. How can I obtain those values? I don't want to code the cross validation by ...
0
votes
1answer
21 views

Python Scikit-learn - An attempt at a low level OCR

I want to train a SVM to perform a classification of Images of Digits (0-9) and then use it to read images with numerical values(a low level OCR). My idea is to read images one by one and store them ...
0
votes
1answer
11 views

Is there any way to train a sklearn model by disk data like HDF5 or such ?

In my problem, I have very large dataset which is out of my memory. I would like to train my model by using disk data like HDF5 or such. Does sklearn support this or is there any other alternative ?
1
vote
2answers
19 views

Why I am getting the following error in using Lasso from sklearn.linear_model?

I am trying to run Lasso on a dataset with part of the set being a validating set. Below are the dimensions of the sets: train_X_tfidf.shape (15361, 1500) train_y.shape (15361, 3) ...
1
vote
2answers
30 views

Numpy Array python dimension uniform

I have 2 dimensional array with 15 elements in one dimension and variable length in second dimension for example >>print abc.size() 15 >>print abc[0].size() 5873 >>print ...
0
votes
0answers
13 views

Adaboost on Caltech101 dataset using sklearn

Heres my code: tmp_hogs = [] labels = [] rootDir = 'E:\\Work\\CS\\deep learning\\Datasets\\101_ObjectCategories\\test\\' i=0 j=0 for dirName, subdirList, fileList in os.walk(rootDir): ...
0
votes
0answers
6 views

Cannot Import caltech101 through sklearn.datasets.fetch_mldata

I am trying to run adaboost algorithm on the caltech101 dataset. I want to use sklearn in python. For importing dataset into python from mldata.org, sklearn gives sklearn.datasets.fetch_mldata() but I ...
-1
votes
0answers
11 views

using sklearn.cluster.DBSCAN in fedora

I want to use sklearn.cluster.DBSCAN in a python program when i run: python3 1.py Traceback (most recent call last): File "1.py", line 14, in <module> from sklearn.cluster import DBSCAN ...
-1
votes
0answers
17 views

class distribution preserving transform in Python [on hold]

I want to ask, is there any package that is provided by scikit-learn in python to do class distribution preserving transform?
0
votes
2answers
18 views

How to use SGDRegressor in scikit-learn

I am trying to figure out how to properly use scikit-learn's SGDRegressor model. in order to fit to a dataset I need to call a function fit(X,y) where x is a numpy array of shape ...
0
votes
1answer
14 views

RandomForestClassfier.fit(): ValueError: could not convert string to float

Given is a simple CSV file: A,B,C Hello,Hi,0 Hola,Bueno,1 Obviously the real dataset is far more complex than this, but this one reproduces the error. I'm attempting to build a random forest ...
1
vote
0answers
9 views

“Unwrapping” SklearnClassifier Object - NLTK Python

I have used the SklearnClassifier() wrapper from the NLTK python package to train a couple of sklearn classifiers (LogisticRegression() and RandomForest()) for a binary classification problem where ...
0
votes
0answers
7 views

How to remove features that give same values for a dataset in sklearn?

I wanted to run a GaussianProcess function with sklearn. I got this error Multiple input features cannot have the same value. How can I remove the duplicated features?
0
votes
0answers
18 views

Why won't Python RadiusNearestNeighbor accurately predict known/training points?

I'm working with python's radiusnearestneighbor regressor to model a six dimensional space. I have set weights = distance and metric = minkowski. One requirement of my model is that the regressor ...
0
votes
1answer
19 views

Can one train estimators in a scikit-learn pipeline simultaneously?

Is it possible to do the following in scikit-learn? We train an estimator A using the given mapping from features to targets, then we use the same data (or mapping) to train another estimator B, then ...
1
vote
1answer
12 views

Can't import GMM function from sckits.learn

I'm getting error ImportError: No module named gmm when I'm using from scikits.learn.gmm import GMM.. I installed scikits using windows installer and no error.. How I can fix it?
0
votes
1answer
21 views

Difference between using train_test_split and cross_val_score in sklearn.cross_validation

I have a matrix with 20 columns. The last column are 0/1 labels. The link to the data is: https://www.dropbox.com/s/8v4lomociw1xz0d/data_so.csv?dl=0 I am trying to run random forest on the dataset, ...
0
votes
1answer
12 views

Is there a way to project new sample points onto already calculated PCA basis?

There is exactly the same question, but it is for Matlab: How to project a new point to PCA new basis? Can the same thing be done in sklearn?
0
votes
0answers
8 views

sklearn: Evaluating LinearSVC's AUC

I know that one would evaluate the AUC of sklearn.svm.SVC by passing in the probability=True option into the constructor, and having the SVM predict probabilities, but I'm not sure how to evaluate ...
-2
votes
1answer
23 views

One Hot Encoding for representing corpus sentences in python

I am a starter in Python and Scikit-learn library. I currently need to work on a NLP project which firstly need to represent a large corpus by One-Hot Encoding. I have read Scikit-learn's ...
0
votes
1answer
34 views

python: How to get real feature name from feature_importances

I am using Python's sklearn random forest (ensemble.RandomForestClassifier) to do classification and am using feature_importances_ to find significant feature for the classifier. Now my code is: for ...
0
votes
0answers
11 views

Calculate sensitivity and specificity of binary classification in python sci-kits learn package [on hold]

Is any function to calculate sensitivity and specificity of binary classification in sci-kits learn package of python?
1
vote
2answers
49 views

Time series forecasting with scikit learn

I am a complete newbie to SVM-based forecasting and so looking for some guidance here. I am trying to set-up a python code for forecasting a time-series, using SVM libraries of scikit-learn. My data ...
0
votes
0answers
18 views

GridSeachCV OLS vs Scikit OLS vs Statsmodel OLS

I am trying to build multiple linear regression model with 3 different method and I am getting different results for each one. I think that I have to get the same results but Where is this difference ...
1
vote
1answer
31 views

scikit overfitting all the time

Scikit is overfitting when I am using it for machine learning. For example, I am using decisiontree for a regression. The training set gave me 0.9998 for the r_value; the test set gave me 0.3134 for ...
1
vote
1answer
21 views

Python Scikit Decision Tree with variable number of outputs

I'm looking to setup a multi-output decision tree using the Python SciKit library. The problem I'm facing however is that it's not a simple "n_outputs" classification. Some samples will have 3 ...
1
vote
0answers
19 views

sklearn.mixture.DPGMM: only one cluster?

I have a dataset for which I keep getting odd results with the Dirichlet process Gaussian mixture model in sklearn. import sklearn.mixture, pandas import numpy as np from matplotlib import pyplot as ...
-1
votes
0answers
10 views

Version error (15.2 ->16.1) in sci-kit.learn.svmSVC

I was running a script using sci-kit SVM package with a custom kernel. I have two drastically different results with the 15.2 and the 16.1 release (consistent across different computers). I fail to ...
0
votes
1answer
31 views

Normalize Time Series - Scikit

I have: 3 wikipedia article access counts (weekly) (A-B-C) Ground truth data (weekly) Total wikipedia english article traffic counts (weekly) My purpose is, build a multiple linear regression ...
0
votes
0answers
29 views

Python scikit-learn PCA to Augment Missing Data in Historical VaR Cacluation

I have an array of time series data I want to use to calculate historical VaR for a large equity portfolio. The portfolio has a significant number of instruments with missing time series data and I ...
1
vote
2answers
43 views

I'm not sure how to interpret accuracy of this classification with Scikit Learn

I am trying to classify text data, with Scikit Learn, with the method shown here. (http://scikit-learn.org/stable/tutorial/text_analytics/working_with_text_data.html) except I am loading my own ...
0
votes
1answer
35 views

Python scikit-learn KMeans is being killed (9) while computing silhouette score

I'm currently working on an image dataset (250 000 images, so just as much as features vectors, everyone of them composed of 132 features) and trying to use the KMeans function provided by sklearn. I ...
0
votes
0answers
31 views

How to handle catagorical data while training decision tree using scikit-learn/ sklearn?

I am new to scikit. I am trying to use the sklearn module to train a decision tree classifier. The data consists of some categorical features and some continuous features. But when I train the ...
1
vote
1answer
37 views

classifiers in scikit-learn that handle nan/null

I was wondering if there are classifiers that handle nan/null values in scikit-learn. I thought random forest regressor handles this but I got an error when I call predict. X_train = np.array([[1, ...
0
votes
1answer
19 views

LDA with Python - input files

I'm running the lda library in Python and I am running this example. Does anyone know the format of X, vocab and titles? I can't find the documentation. import numpy as np import lda X = ...
-3
votes
0answers
27 views

Why MATLAB tree bagger better than Scikit-Learn RandomForestClassifier? [on hold]

I've tried both out on a variety of data sets and MATLAB seems to consistently outperform Scikit-Learn's by a couple of percent (accuracy or roc_auc etc) I suspect it's because of a difference in ...
0
votes
0answers
13 views

How to get progress information or time remaining from sklearn.mixture.GMM

I am running gaussian mixture models (sklearn.mixure.GMM) on a fairly large data set. The class get a parameter called n_iter which is the number of iteration of expectation-maximization iterations to ...
0
votes
0answers
30 views

Balancing unbalance classfication data

I am training a Python random forest classifier. My data is very unbalanced: total training data 7656 class 1 1052 class 2 95 class 3 215 class 4 109 class 5 2170 class 6 4015 In testing mode I ...
0
votes
1answer
46 views

Lasso Generalized linear model in Python

I would like to fit a generalized linear model with negative binomial link function and L1 regularization (lasso) in python. Matlab provides the nice function : lassoglm(X,y, distr) where distr can ...
0
votes
2answers
22 views

CountVectorizer matrix varies with new test data for classification?

I have created a model for text classification using python. I have CountVectorizer and it results in a document term matrix of 2034 rows and 4063 columns ( unique words ). I saved the model I used ...
2
votes
0answers
44 views
+50

Why does CalibratedClassifierCV underperform a direct classifer?

I noticed that sklearn's new CalibratedClassifierCV seems to underperform the direct base_estimator when the base_estimator is GradientBoostingClassifer, (I haven't tested other classifiers). ...
-2
votes
0answers
15 views

Decision Tree in Machine Learning, weights sign ?

I'm using sklearn.linear_model.DecisionTreeClassifier() to classify some data, and I was wondering if the weights of this classifier (given by the attribute feature_importances_) can be positive and ...
2
votes
1answer
36 views

Categorical & Numerical Features - Categorical Target - Scikit Learn - Python

I have a data set containing both categorical and numerical columns and my target column is also categorical. I am using Scikit library in Python34. I know that Scikit needs all categorical values to ...
0
votes
1answer
10 views

Printing confusion matrix to file produces illegal characters

I am classifying a set of images stored as tuples in a csv file. The confusion matrix that I get on terminal display is correct. But when I write that same conf. matrix to a file, it produces illegal ...
0
votes
1answer
12 views

Output the subset of instances used to train each base_estimator of a BaggingClassifier

I am using decision stumps with a BaggingClassifier to classify some data: def fit_ensemble(attributes,class_val,n_estimators): # max depth is 1 decisionStump = ...
0
votes
1answer
14 views

Why does KernelDensity.score_samples compute the distance on each node?

I'm using a KD-estimation with a custom metric. The metric is obviously slower than the builtin euclidean distance, but works fine. When doing kde=KernelDensity(...) kde.fit(X) I get results in a ...