0
votes
2answers
17 views

RoC curve from csv file

How can I use scikit learn or any other python library to draw a roc curve for a csv file such as this: 1, 0.202 0, 0.203 0, 0.266 1, 0.264 0, 0.261 0, 0.291 .......
-1
votes
1answer
28 views

Random Forests with a Customized Loss Function

I am a complete beginner in the field of machine learning. For a project, I have to use a customized loss function in the Random Forest Classification. I have used scikit till now. Suggestions on ...
-3
votes
0answers
21 views

Stemmer with TdfVectorizer in scikit-learn

can someone please tell how to use NLTK stemmer [porter stemmer ] with TfidfVectorizer in scikit-learn . i am pre-processing the documents. Thanks
2
votes
2answers
58 views

Does the SVM in sklearn support incremental (online) learning?

I am currently in the process of designing a recommender system for text articles (a binary case of 'interesting' or 'not interesting'). One of my specifications is that it should continuously update ...
1
vote
0answers
48 views

Content based recommender system with sklearn or numpy

I am trying to build a content-based recommender system in python/pandas/numpy/sklearn. Here are the matrix involved and their size: X: n_customers * n_features (contains the features of each ...
2
votes
2answers
31 views

Recovering features names of explained_variance_ration in PCA with sklearn

I'm trying to recover from a PCA done with scikit-learn, which features are selected as relevant. A classic example with IRIS dataset. import pandas as pd import pylab as pl from sklearn import ...
0
votes
1answer
30 views

Can I use CountVectorizer in scikit-learn to count frequency of documents that were not used to extract the tokens?

I have been working with the CountVectorizer class in scikit-learn. I understand that if used in the manner shown below, the final output will consist of an array containing counts of features, or ...
0
votes
1answer
20 views

Partial fit multivariate SGDRegressor

I am currently trying to use the SGDRegressor from scikits learn to solve a multivariate target problem over a large dataset, X ~= (10^6,10^4). As such I am generating the design matrix (X) in parts ...
0
votes
2answers
47 views

Using decision tree in Recommender Systems

I have a decision tree that is trained on the columns (Age, Sex, Time, Day, Views,Clicks) which gets classified into two classes - Yes or No - which represents buying decision for an item X. Using ...
4
votes
1answer
67 views

What is the inverse of regularization strength in Logistic Regression? How should it affect my code?

I am using sklearn.linear_model.LogisticRegression in scikit learn to run a Logistic Regression. C : float, optional (default=1.0) Inverse of regularization strength; must be a positive float. ...
0
votes
2answers
31 views

Different results with StratifiedShuffleSplit function (scikit-learn) when random_state is None

I'm performing a cross-validation in order to classify properly. First, I was using the function StratifiedKfold from scikit-learn. At some point, I wanted to make more iterations and I changed to ...
0
votes
0answers
16 views

Method to do Feature Agglomeration/summation?

I.E - Combining least frequent or informative bigram frequency counts together. E.G - If I have frequency counts of letter pairs for a sequence, what's a good way to merge similar features together. ...
0
votes
0answers
27 views

Saving SGD Classifier with Dictvectorizer vocabulary

I am trying to save a trained SGD classifier.I am using Divtvectorizer.But after loading the pickled classifier when i am using it for prediction i am getting following error AttributeError: ...
-1
votes
2answers
36 views

PCA transform messes up learning [closed]

I have the following code, which PCA-transforms data without skipping any dimension. It just does the linear transform itself: from sklearn import datasets import numpy as np # Initialize digits = ...
0
votes
0answers
44 views

Python Non negative Matrix Factorization that handles both zeros and missing data?

I look for a NMF implementation that has a python interface, and handles both missing data and zeros. I don't want to impute my missing values before starting the factorization, I want them to be ...
0
votes
0answers
21 views

How to load our own text data to scikit for MeanShift clustering?

I am planning to load my own set of unstructured textual data to which can be seen as follows: 64.242.88.10 - - [07/Mar/2004:16:05:49 -0800] "GET ...
-1
votes
0answers
34 views

Scipy: segmentation or clustering of 1d array

In a 1D array I have timestamps of events occurring randomly. These events tend to cluster in time interval of about 10ms. I would like to identify all the groups of events occurring in 10ms or less. ...
0
votes
1answer
35 views

Algorithm for Multi-Class Classification of News Article

I want to classify the news article into the category it belongs to. I have 4 categories of news eg." Technology,Sports,Politics and Health." And i have collected around 50 documents for each category ...
0
votes
1answer
35 views

Scikit-learn using Naive Bayes for multiclass classification with 10 fold cross validation

I am trying to use the Naive Bayes classifier in sklearn for multi-class classification. I want to obtain the scores using 10-fold cross-validation. Assuming that x is my feature array and y is the ...
0
votes
1answer
59 views

incremental training SGD Classifier of Sklearn with sentences

How to incrementally train SGDClassifier available in Sklearn linear models for sentences. It is usually trains with docs.But i want to train it with sentences one by one.I want to incrementally train ...
2
votes
1answer
45 views

Concatenate custom features with CountVectorizer

I have a bunch of files with articles. For each article there should be some features, like: text length, text_spam (all are ints or floats, and in most cases they should be loaded from csv). And what ...
1
vote
0answers
22 views

sklearn's GradientBoostingRegressor gives the same prediction for different inputs

I encountered a weird behavior while trying to train sklearn's GradientBoostingRegressor and make prediction. I will bring an example to demonstrate the issue on a reduced dataset but issue remains on ...
0
votes
2answers
42 views

Custom Features using scikit-learn

I am working on a project to classify short text. One requirement I have is along with the vectorizing the short text, I will like to add additional feature like length of the text, number of url's ...
0
votes
3answers
34 views

best way to deal with imbalanced test set in scikit-learn

What is the best way to deal with an imbalanced test set in scikit-learn? My training data is split 70/30 between two classes, where as the out-of-sample data is likely to be more like 90/10. I'm ...
0
votes
3answers
62 views

Why does classifier.predict() method expects the number of features in the test data to be the same as in training data?

I am trying to build a simple SVM document classifier using scikit-learn and I am using the following code : import os import numpy as np import scipy.sparse as sp from sklearn.metrics import ...
0
votes
2answers
43 views

Scikit-learn Ridge classifier: extracting class probabilities

I'm currently using sklearn's Ridge classifier, and am looking to ensemble this classifier with classifiers from sklearn and other libraries. In order to do this, it would be ideal to extract the ...
0
votes
0answers
28 views

Visualization on the features with sklearn

I'm using Python+Sklearn, and working on multivariate classification/regression. Currently I use scatter and plot in matplotlab and pylab to visualize the variable distributions with the chosen ...
-1
votes
1answer
25 views

How to create a single value using time series data set?

I have following data sets(265 data sets). Its a heart beat data set which is collected in every 1 second interval. **Heart rate pattern** 82 82 87 87 89 90 89 89 89 89 88 89 89 87 87 87 88 88 90 90 ...
2
votes
2answers
91 views

scikit learn creation of dummy variables

In scikit-learn, which models do I need to break categorical variables into dummy binary fields? For example, if the column is political-party, and the values are democrat, republican and green, for ...
2
votes
1answer
43 views

Predicting how long an scikit-learn classification will take to run

Is there a way to predict how long it will take to run a classifier from sci-kit learn based on the parameters and dataset? I know, pretty meta, right? Some classifiers/parameter combinations are ...
0
votes
1answer
39 views

how to analyse and predict(machine learning) a time series data set using scikit-learn for python

i got data-set like this http://i57.tinypic.com/2604w0n.png i need to analyse and predict the status column. This is just 2 entrees from the training data set. In this data set there is heart rate ...
0
votes
2answers
56 views

What is the O() runtime complexity of AdaBoost?

I am using AdaBoost from scikit-learn using the typical DecisionTree weak learners. I would like to understand the runtime complexity in terms of data size N and number of weak learners T. I have ...
3
votes
2answers
77 views

How can KMeans be used to assert that a dataset has noise?

I have come across an extract from an old paper which casually mentions, If required, we could use KMeans as a method of asserting that this dataset is noisy, thus proving that our classifier ...
-1
votes
1answer
87 views

Tested implementation of APriori and FP-growth in python [closed]

I am searching for (hopefully) a library that provides tested implementations of APriori and FP-growth algorithms, in python, to compute itemsets mining. I searched through SciPy and Scikit-learn but ...
2
votes
1answer
135 views

How to get scikit learn to find simple non-linear relationship

I have some data in a pandas dataframe (although pandas is not the point of this question). As an experiment I made column ZR as column Z divided by column R. As a first step using scikit learn I ...
0
votes
1answer
19 views

Number of trainings done with Pipeline and GridSearchCV

I'm reading this tutorial that combines PCA and then logistic regression in a pipeline and after then apply cross validation with a defined set of parameters for PCA and Logistic Regression. Here is ...
0
votes
0answers
19 views

How come the output is different when the order of input samples is changed?(GradientBoostingRegressor of scikit-learn)

For example: params = {'n_estimators': 200, "max_depth": 4, 'subsample': 1, 'learning_rate': 0.1, 'random_state': 1} boost = ensemble.GradientBoostingRegressor(**params) ghostBoost = ...
0
votes
1answer
23 views

How to print out an accuracy score for each combination within Gridsearch?

I have set up a GridSearchCV and have a set of parameters, with I will find the best combination of parameters. My GridSearch consists of 12 candidate models total. However, I am also interested in ...
2
votes
1answer
196 views

Joining columns in pandas incorrectly

I am running TF-IDF on a single column. I want to use this TF-IDF and another scaled integer column to train my Logistic Regression classifier. Unfortunately I am running into problems doing this as I ...
-1
votes
1answer
65 views

How does TF-IDF produce features for machine-learning ? What is different from a bag of words?

I was hoping to get a brief explanation of how TF-IDF produces features that can be used for machine learning. What are the differences between bag of words and TF-IDF? I understand how TF-IDF works; ...
0
votes
2answers
89 views

What's the difference between using libSVM in sci-kit learn, or e1070 in R, for training and using support vector machines?

Recently I was contemplating the choice of using either R or Python to train support vector machines. Aside from the particular strengths and weaknesses intrinsic to both programming languages, I'm ...
4
votes
2answers
276 views

Using ranking data in Logistic Regression

I will be putting the max bounty on this as I am struggling to learn these concepts! I am trying to use some ranking data in a logistic regression. I want to use machine learning to make a simple ...
2
votes
0answers
47 views

How do you visualize a ward tree from sklearn.cluster.ward_tree?

In sklearn there is one agglomerative clustering algorithm implemented, the ward method minimizing variance. Usually sklearn is documented with lots of nice usage examples, but I couldn't find ...
2
votes
1answer
180 views

How to normalize ranked data in scikit learn?

I am doing some machine learning and need help with one aspect of my coding. In my training data, I have a number of URLs of webpages and some features for these webpages. I am running TF-IDF on the ...
0
votes
2answers
55 views

importing sklearn into python

I am going through an awesome tutorial in order to learn the scikit library for python; however, I am stuck because I am unable to run this: from sklearn.cross_validation import train_test_split ...
0
votes
0answers
113 views

contour in 2-dimensional data projection of multi-dimension data classification

I have a csv of iris dataset: sepal length, sepal width, petal length, petal width, class 5.1,3.5,1.4,0.2,Iris-setosa 4.9,3.0,1.4,0.2,Iris-setosa 4.7,3.2,1.3,0.2,Iris-setosa ... ...
0
votes
1answer
33 views

Scikit learn - initialize DictVectorizer with numpy.float32

I would like to use DictVectorize from Scikit-learn, but initialize it with numpy.float32 instead of the default numpy.float64. I tried to do it like this: from sklearn.feature_extraction import ...
1
vote
1answer
36 views

Calculate constant b in primal form SVM using scikit

In the case of a binary classification for Support Vector Machines, each new point x' is classi ed by evaluating, y' = sign(w . x' + b) This is the case for the primal problem. I wanted to find ...
0
votes
1answer
41 views

Scikit classification report - change the format of displayed results

Scikit classification report would show precision and recall scores with two digits only. Is it possible to make it display 4 digits after the dot, I mean instead of 0.67 to show 0.6783? from ...
4
votes
1answer
186 views

Scikit learn - Random Forest Classifier

I am struggling to use Random Forest in Python with Scikit learn. My problem is that I use it for text classification (in 3 classes - positive/negative/neutral) and the features that I extract are ...