1
vote
1answer
42 views

How to apply a binary classifier in Scikit learn when attributes are string (not int or float)

I have a list of first and last name of people with a binary language class (speak English or not). Here is a sample file (I changed the names with dummy values to keep the privacy of people): ...
0
votes
1answer
31 views

Machine learning for finding even/odd number getting incorrect/correct output for two different classifiers

I tried a Machine Learning algorithm on a hypothetical problem :- I made a fake feature vector and a fake result data set by the following python code :- x=[] y=[] for i in range(0,100000): ...
2
votes
2answers
58 views

Scikit-learn categorisation: binomial log regression?

I have texts that are rated on a continous scale from -100 to +100. I am trying to classify them as positive or negative. How can you perform binomial log regression to get the probability that test ...
-1
votes
1answer
16 views

Improving quality of logistic regression prediction and identify important parameters

I'm new to machine learning/prediction modeling and have set up a logistic regression in Python which, given 231 input variables, predicts either a 0 or a 1. I have some questions regarding ...
0
votes
1answer
12 views

Mathematical forumlation of sklearn weighted classification tree

I'd like to weight each sample differently when growing a simple classification tree. I understand that you can specify a vector of sample weights when fitting the tree. I'd like to know, however, ...
1
vote
1answer
35 views

Updating the scikit multinomial classifier

I am trying to update the scikit multinomial classifier with the new training data. Here is what i had tried from sklearn.feature_extraction.text import HashingVectorizer import numpy as np from ...
-1
votes
1answer
15 views

Does sklearn support a cost matrix?

Is it possible to train classifiers in sklearn with a cost matrix with different costs for different mistakes? For example in a 2 class problem, the cost matrix would be a 2 by 2 square matrix. For ...
0
votes
1answer
48 views

combine independent features in scikit-learn

i've a small question about the combination of different feature-sets. my situation: there are documents with a title, some tags and a text to classify into "spam" or "ham". to extract the ...
1
vote
1answer
29 views

Interpretation of the output of sklearn.metrics.precision_recall_fscore_support

I am using sklearn to compute precision and recall for a binary classification project. scores = cross_validation.cross_val_score(clf, numpy.asarray(X_features), numpy.asarray(Y_targets), \ ...
6
votes
3answers
291 views

Naive Bayes: Imbalanced Test Dataset

I am using scikit-learn Multinomial Naive Bayes classifier for binary text classification (classifier tells me whether the document belongs to the category X or not). I use a balanced dataset to train ...
0
votes
0answers
26 views

Comparing Results from Undersampling Data

I have a very imbalanced dataset, where the majority class makes up 98% of the data and the minority class makes up 2% of the data. I've dug into this, and tried various methods of dealing with this ...
0
votes
1answer
104 views

how to access the python scikit learning code for Random Forest Classifier, Ada Boost Classifier, Extra Trees Classifier

Is it possible to access the python code for Random Forest Classifier, Ada Boost Classifier, Extra Trees Classifier which are python scikit learning methodes can be activated using below code:- from ...
0
votes
0answers
50 views

Extract decision boundary with scikit-learn linear SVM

I have a very simple 1D classification problem: a list of values [0, 0.5, 2] and their associated classes [0, 1, 2]. I would like to get the classification boundaries between those classes. Adapting ...
0
votes
1answer
61 views

Classifying new occurances - Multinomial Naive Bayes

So I have currently trained a Multinomial Naive Bayes classifier, using [SKiLearn][1] Now what I can do is classify test data by using predict. But if I want to run this every night, as a script, I ...
1
vote
1answer
122 views

What's the meaning of p-values which produced by feature selection (i.e. chi2 method)? [closed]

Recently, I have used sklearn(a python meachine learning library) to do a short-text classification task. I found that SelectKBest class can choose K best of features. However, the first argument of ...
0
votes
0answers
35 views

supervised classification of multiple categories with a natural ordering

I try to train a model to classify samples into three categories: weak, medium, and strong. As far as I know, the best way to do this is to use weighted kappa score to measure the model performance. ...
0
votes
1answer
73 views

Difference between classification and regression score in Python scikit learn

I'm kind a new for python scikit learning i develop a data mining algorithm using scikit learn classification methods and now i need to find its accuracy. first just need to know, What is difference ...
0
votes
1answer
65 views

classification using sklearn RandomForestClassifier

I am using Scikit RandomForestClassifier to classify unbalanced data. The target class data is either '1' or '0' (99% of the values are 0). I'd like to assign a weight. how can I do that. I found ...
1
vote
1answer
55 views

Plotting a graph on axes but getting no results while trying to classify image based on HoG features

I need to use boosted cascaded training to classify some images in scikit-learn. I want to classify according to HoG features. My code below is adapted from this example. This part of the code is ...
0
votes
1answer
171 views

Classification test in Scikit-learn, ValueError: setting an array element with a sequence

Using the tutorial on multiclass adaboost, I'm trying to classify some images that have two classes (but I don't suppose the algorithm shouldn't work if the problem is binary). Then I'm going to ...
0
votes
2answers
135 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
2answers
146 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 ...
2
votes
1answer
120 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 ...
-1
votes
1answer
175 views

combine two different classifier result in scikit-learn python

I got data sets like below:- patient id-1 Heart rate pattern-82 82 87 87 89 90 89 89 89 89 Blood pressure-110 71 Body temperature-37.2 SPO2-94 Sex-0 Age-8 Hereditary-1 Smoking-0 Alcohol ...
0
votes
1answer
87 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
0answers
42 views

Adaboost with bordeline SMOTE gives poor results on validation set

I do classification in scikit-learn on an imbalanced set where the minority class is 2%. I use borderline SMOTE to avoid classifier bias towards the majority class. This gets me excellent results in ...
2
votes
1answer
44 views

building a feature set for scikit learn

Im using RandomForestClassifier for a probability prediction task. I have a featureset of around 50 features and two possible labels - first team wins and second team wins. The feature set contains ...
0
votes
1answer
86 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
609 views

Scikit learn - fit_transform on the test set

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 ...
0
votes
1answer
849 views

Scikit learn - How to use SVM and Random Forest for text classification?

I have a set of trainFeatures and a set of testFeatures with positive, neutral and negative labels: trainFeats = negFeats + posFeats + neutralFeats testFeats = negFeats + posFeats + neutralFeats ...
0
votes
0answers
183 views

Support for distance metrics for sparse input in scikit-learn KNeighborsClassifier

I have sparse data on which I would like to run the KNeighborsClassifier, but am running into trouble with the distance metrics I can use. The documentation variously states: For sparse matrices, ...
6
votes
2answers
444 views

Best way to combine probabilistic classifiers in scikit-learn

I have a logistic regression and a random forest and I'd like to combine them (ensemble) for the final classification probability calculation by taking an average. Is there a built-in way to do this ...
0
votes
1answer
48 views

Sci-kit learn: applying custom error function to favor False Positives?

While the Scikit Learn documentation is fantastic, I couldn't find if there was a way to specify a custom error function to optimize in a classification problem. Backing up a bit, I'm working on a ...
2
votes
2answers
99 views

Classification tree in sklearn giving inconsistent answers

I am using a classification tree from sklearn and when I have the the model train twice using the same data, and predict with the same test data, I am getting different results. I tried reproducing ...
-1
votes
1answer
172 views

Feature importance in sklearn using adaboost

I am sing python library sklearn. I am using adaboost classifier and want to identify which features are most important in classification. Following is my code: ada = ...
0
votes
2answers
202 views

How can I test my classifier for overfitting?

I have a set of data in a .tsv file available here. I have written several classifiers to decide whether a given website is ephemeral or evergreen. Now, I want to make them better. I know from ...
-1
votes
1answer
148 views

How to convert data from an excel spreadsheet to a suitable representation for training a scikit-learn model

I have the input data from an excel file, that I have processed in the manner below using nltk: rb = open_workbook('subjectcat.xlsx')#C:/Users/5460/Desktop/ wb = copy(rb) #making a copy sheet = ...
1
vote
2answers
107 views

How to get nbest predictions from sklearn naive bayes classifier? -python

The example from http://scikit-learn.org/stable/modules/naive_bayes.html outputs the best target tags using the Multinomial Naive Bayes classifier. How can I get the nbest results and their ...
1
vote
1answer
289 views

How to use a Gaussian Process for Binary Classification?

I know that a Gaussian Process model is best suited for regression rather than classification. However, I would still like to apply a Gaussian Process to a classification task but I am not sure what ...
1
vote
1answer
152 views

faster data fitting ( or learn) function in python scikit

I am using scikit for my machine learning purposes . While I followed the steps exactly as mentioned in its official documentation but I encounter two problems. Here is the main part of the code : ...
-1
votes
1answer
102 views

How to use sklearn naive bayes for numeric and non-numeric dataset

I am using python sklearn library for classification. I have combination of numeric and non-numeric features in my dataset. For example followingisthe example of data set I am working: Training data ...
2
votes
1answer
404 views

Why is scikit-learn's random forest using so much memory?

I'm using scikit's Random Forest implementation: sklearn.ensemble.RandomForestClassifier(n_estimators=100, max_features="auto", ...
2
votes
3answers
207 views

NLTK SklearnClassifier error

I'm trying to classify text documents using NLTK's SklearnClassifier and MultinomialNB. This is the code: pipeline = Pipeline([('tfidf', TfidfTransformer()), ('chi2', ...
0
votes
0answers
100 views

Wrong classification with nltk SklearnClasifier

I'm trying to perform text classification using nltk's SklearnClassifier and LinearSVC. However, any input text always gets classified with the same class G (see below). This is what the code looks ...
0
votes
1answer
252 views

scikit multilabel classification: ValueError: bad input shape

I beieve SGDClassifier() with loss='log' supports Multilabel classification and I do not have to use OneVsRestClassifier.Check this Now, my dataset is quite big and I am using HashingVectorizer and ...
3
votes
2answers
401 views

Multi-label classification for large dataset

I am solving a multilabel classification problem. I have about 6 Million of rows to be processed which are huge chunks of text. They are tagged with multiple tags in a separate column. Any advice on ...
0
votes
1answer
258 views

Merging bag-of-words scikits classifier with arbitrary numeric fields

How would you merge a scikits-learn classifier that operates over a bag-of-words with one that operates on arbitrary numeric fields? I know that these are basically the same thing behind-the-scenes, ...
4
votes
1answer
839 views

Unbalanced classification using RandomForestClassifier in sklearn

I have a dataset where the classes are unbalanced. The classes are either '1' or '0' where the ratio of class '1':'0' is 5:1. How do you calculate the prediction error for each class and the ...
2
votes
3answers
427 views

scikit .predict() default threshold

I'm working on a classification problem with unbalanced classes (5% 1's). I want to predict the class, not the probability. In a binary classification problem, is scikit's classifier.predict() using ...
-2
votes
2answers
284 views

how to force scikit-learn DictVectorizer not to discard features?

Im trying to use scikit-learn for a classification task. My code extracts features from the data, and stores them in a dictionary like so: feature_dict['feature_name_1'] = feature_1 ...