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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3 views

CountVectorizer fit_transform does not return all features properly

I was trying to use the tf-idf of scikt-learn and using CountVectorizer for the same purpose. My code is as below:- count_vectorizer = CountVectorizer() data = count_vectorizer.fit_transform(corpus) ...
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0answers
4 views

Getting model attributes from scikit-learn pipeline

I typically get PCA loadings like this: pca = PCA(n_components=2) X_t = pca.fit(X).transform(X) loadings = pca.components_ If I run PCA using a scikit-learn pipline ... from sklearn.pipeline ...
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0answers
15 views

one-class SVM for a parking application

I am using one-class SVM in scikit-learn to make some predictions on a parking application with 10 parking slots. An example of the features that I use is:hour, number of cars parked in slot 1, number ...
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0answers
9 views

Is it possible to plot KS-chart for multiclass classifier

I need to evaluate the performance of the classifiers using KS-Chart.Is it possible to use KS-Chart?
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0answers
10 views

Pycharm throws error :ImportError: No module named sklearn

I used pip to install scikit-learn on mac os.I can successfully execute this command:from sklearn import datasets on my python console. However when it comes to pycharm, it throws this ...
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1answer
39 views

AttributeError: 'str' object has no attribute 'read'

list=[] ct = 1 import numpy as np import os, os.path isfile = os.path.isfile join = os.path.join fn = 'C:\\Users\\Keshav\\Desktop\\xyz\\data1\\black_and_white\\' target = np.array([1, 2, 3, 4, ...
0
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0answers
31 views

Random Forest Classifier With Very High Success Rate

I'm having a weird problem that may suprise you all. My classification rate is too high on my test set. I'm using scikit-learn packages, and I'm very suspicious of these classification rates, as they ...
0
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1answer
18 views

No module named numpy_pickle when executing script under a different user

I have a python script that uses sklearn joblib to load a persistent model and perform prediction. The script runs fine when I run it under my username and when some other user tries to run the same ...
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0answers
8 views

IndexError: too many indices for array with sklearn datasets

I have problem with sklearn library. I wrote two line, simple code: from sklearn.datasets import fetch_lfw_pairs data_set = fetch_lfw_pairs(subset='train') And unfortunately this simple code ...
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0answers
31 views

Design Pattern For Feature Extraction [Python]

I am writing a machine learning classifier using Python's scikit-learn library (using Python 2.7.9). I am looking for a "design pattern" to extract a feature vector from an object, with these ...
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0answers
12 views

Obtain optimal number of boosting iterations in GradientBoostingClassifier using grid search

With GradientBoostingClassifier suppose I set n_estimators to 2000 and use GridSearchCV to search across learning_rate in [0.01, 0.05, 0.10] - how do I know the number of boosting iterations that ...
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0answers
29 views

Multivariate Multiple Regression in Python

I am trying to a perform a multivariate multiple linear regression, so I have multiple inputs and outputs that I am trying to optimize for. I would like to do this in python. Are than any software's ...
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0answers
12 views

Trying to run sklearn text classification on Apache Spark..GETTING Expected sequence or array-like, got PythonRDD[1] at RDD at PythonRDD.scala:43

I am trying to run sklearn SDG classifier on twitter data which is manually labelled into two classes 0 and 1. I am pretty new to spark and would like your help on this. I saw some code online and ...
0
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1answer
20 views

Scikit-learn SVR Speed

I'm trying to build a kernel model for some training data. The model used is Support Vector Regression and the input data-set is about 58 samples with X a vector of size 5 and Y a double value. ...
0
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1answer
14 views

predict_proba for a cross-validated model

I would like to predict the probability from Logistic Regression model with cross-validation. I know you can get the cross-validation scores, but is it possible to return the values from predict_proba ...
0
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1answer
15 views

Scikit Learn - ValueError: X has 26879 features per sample; expecting 7087

I am doing feature selection by first training LogisticRegression with L1 penalty and then using the reduced feature set to re-train the model using L2 penalty. Now, when I try to predict test data, ...
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0answers
9 views

python error:unable to find vcvarsall.bat while installing sklearn windows 8 (installed python2.7 32bit installer and packages(numpy,scipy,etc)) [duplicate]

i recently installed python 2.7 and installed numpy,scipy and matplotlib via pip (setting env ) for sklearn kit for machine learning , i also installed vcpython.exe for c++ and it but it show the ...
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0answers
31 views

Efficient way of segmenting a column

I have a column having age. I wan to segment the column with an interval of 5 in pandas. I later intend to use this in randomforest classifier in scikit. What is the most efficient way to segment this ...
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votes
3answers
58 views

Write CSV file with one row per each list of lists - python

Fom parsing an HTML file with Beautifulsoup (python 2.7), I have the following list of lists structure (and I want it like this in one CSV file row). [[['aaa', 'bbb', 'ccc'], ['ddd', 'eee', 'fff']], ...
-4
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0answers
26 views

How to identify which cluster stands for what level of difficulty?

I am doing a project in Artificial Intelligence. I want to sort text on difficulty. I have 13 features extracted, and I am passing these features to two classifiers: K-Means and hierarchical ...
2
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0answers
38 views

Comparison of R, statmodels, sklearn for a classification task with logistic regression

I have made some experiments with logistic regression in R, python statmodels and sklearn. While the results given by R and statmodels agree, there is some discrepency with what is returned by ...
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0answers
10 views

How to find out which text file is misclassified with sci-kit learn

I am new to programming and sci-kit learn and I have used it to classify some articles into one of the two categories I defined and now I would like to see which articles, i.e. article01, have been ...
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2answers
29 views

Ensemble of different kinds of regressors using scikit-learn (or any other python framework)

I am trying to solve the regression task. I found out that 3 models are working nicely for different subsets of data: LassoLARS, SVR and Gradient Tree Boosting. I noticed that when I make predictions ...
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1answer
25 views

Text Documents Clustering - Non Uniform Clusters

I have been trying to cluster a set of text documents. I have a sparse TFIDF matrix with around 10k documents (subset of a large dataset), and I try to run the scikit-learn k-means algorithm with ...
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0answers
31 views

Matching the most relevant word from a list to a text

I want to pick the most relevant word from a list, that matches a piece of text. Say, I am trying to pick the most relevant profession for a person and I have these professions: Film Producer, ...
2
votes
1answer
38 views

Controlling the threshold in Logistic Regression in Scikit Learn

I am using the LogisticRegression() method in Scikit Learn on a highly unbalanced data set. I have even turned the class_weight feature to 'auto'. I know that in Logistic Regression it should be ...
0
votes
2answers
24 views

strings as features in decision tree/random forest

I am new to machine learning! Right now I am doing some problems on application of decision tree/random forest. I am trying to fit a problem which has numbers as well as strings (such as country ...
0
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1answer
27 views

is it proper to use float64 data type with scikit-learn ML algorithms?

I am trying to execute Decision Tree and SVM for a dataset given here using scikit-learn. My purpose is to compare these two algorithms so that I am using KFold cross-validation method for both ...
-1
votes
1answer
17 views

Scikit: Changing the value of C

I've been looking at the documentation for scikit for so long, and it says I am able to change the value of C in the SVC to a different value, but I can't see to find the actual code to do so. I want ...
1
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0answers
50 views

Cross validation in logistic regression

I want to perform cross validation in logistic regression using arr as input from load_data function. I have code outline here. The function runs but does not give output. import pandas as pd ...
1
vote
1answer
31 views

scikit learn installation difficulty

I am facing the same problem as mentioned in this question while installing scikit learn from C:\Python34\Lib\site-packages\sklearn. My OS is Windows 8.1 and Python 3.4. I have checked that ...
1
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0answers
32 views

Python: UnboundLocalError: local variable 'mostfrequent' referenced before assignment (KNeighborsClassifier)

I am trying to run KNeighborsClassifer for multiple "k" as follows, but get an error on line where I am doing the "predictions". When I run the same code with k = 1, even multiple times, it works ...
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votes
1answer
14 views

CountVectorizer in sklearn with only words above some minimum number of occurrences

I am using sklearn to train a logistic regression on some text data, by using CountVectorizer to tokenize the data into bigrams. I use a line of code like the one below: vect= ...
0
votes
1answer
28 views

AdaBoosting with several different base estimators at once

I know you can AdaBoost with multiple instances of a single model (e.g., 600 Decision Trees, Bayesian Ridges, or Linear Models). Is it possible to AdaBoost with a gauntlet of models at the same time, ...
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votes
1answer
22 views

Sklearn One Class SVM

I am trying to use OneClassSVM in Sklearn for outlier detection. A user is visiting websites everyday but one day he visits a website which has never been visited before. I want to catch this outlier ...
0
votes
2answers
38 views

Loading .csv files into python using sklearn

I am trying to import .csv file into scikit-learn. I know that I can use pandas, but don't know how to use my data set looks like this 0.9731 0.9695 0.9857 0.9909 0.9448 0.9367 0.9976 0.9672 ...
0
votes
1answer
28 views

Getting different result each time I run a linear regression using scikit

Hi I have a linear regression model that i am trying to optimise. I am optimising the span of an exponential moving average and the number of lagged variables that I use in the regression. However I ...
0
votes
2answers
49 views

Plotting graph using matplotlib

I'm trying to plot train and testing learning learning curves using the code below : import numpy as np from sklearn import cross_validation import matplotlib.pyplot as plt from ...
1
vote
1answer
16 views

Centering Sparse Data for SVM

I learned that when you run SVMs, you should center the data and normalize components to unit variance. However, my original data is very sparse and pre-processing my data in this way makes it dense. ...
2
votes
1answer
16 views

Linking sklearn LogisticRegression coefficients to terms in a sparse matrix, and getting statistical significance / C.I

This is a continuation of a question that started in another thread. I have run a logistic regression using sklearn using code similar to that below: from pandas import * from ...
1
vote
1answer
13 views

Increase predict_proba precision in sklearn

Can I set a higher precision on the results given by the method predict_proba from sklearn? Thanks
0
votes
1answer
27 views

Using Scikit's LabelEncoder correctly across multiple programs

The basic task that I have at hand is a) Read some tab separated data. b) Do some basic preprocessing c) For each categorical column use LabelEncoder to create a mapping. This is don somewhat like ...
1
vote
1answer
20 views

Write multifeature text classifier in sklearn

I am new to sklearn. I wrote a text classifier with the help of following link http://nbviewer.ipython.org/gist/rjweiss/7158866 In this link there is only one feature. Following example is working ...
3
votes
3answers
73 views

What is python's equivalent of R's NA?

What is python's equivalent of R's NA? To be more specific: R has NaN, NA, NULL, Inf and -Inf. NA is generally used when there is missing data. What is python's equivalent? How libraries such as ...
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0answers
24 views

numpy sklearn import error

When running from python console the following code works fine' However when trying to use the same code in a myxxx.py it does not: from sklearn import datasets iris = datasets.load_iris() ...
1
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2answers
48 views

Regression with big data

I have data on two variables (y,x): 7 years of weekly data (364 weeks) for 80,000 groups. I need to demean the data by groups, and do a regression of y on (x plus 8 dummy variables that need to be ...
1
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1answer
34 views

kNN Estimation with Sparse Matrices in Python using scikit-learn?

I have data that looks like this: line1 = '-0.9821 1:15 2:20 4:10 8:10' line2 = '0.1235 1:15 2:20 6:10 10:10' line3 = '0.2132 1:15 3:20 5:10 9:10' line4 = '0.328 2:15 4:20 6:10 7:12 8:16 10:10' line5 ...
2
votes
1answer
25 views

CountVectorizer deleting features that only appear once

I'm using the sklearn python package, and I am having trouble creating a CountVectorizer with a pre-created dictionary, where the CountVectorizer doesn't delete features that only appear once or don't ...
0
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0answers
13 views

confusion with sklearn svm when using Unicode to train and test

When I use Unicode data to train and test, I get 76.5% accuracy. But if I map all Unicode word to number, I get 85.0% accuracy.. For the same dataset, my sentiment classifier gives 76.5% and 85.0%. ...
0
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1answer
30 views

scorer issue in GridSearchCV in sklearn

I am trying to perform grid search on a RF classifier where the scoring function is precision_score from the sklearn.metrics module. This is the code. from sklearn.metrics import precision_score ...