Simply stating, text classification is all about putting a piece of text into a set of (mostly predefined) categories. This is one of the most important problems which occurs in many real world applications. For example one example of text classification would be an automated call centre which would ...

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10 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 ...
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1answer
6 views

unable to Evaluate Classifier in Weka

Hello there I am new to this kind a work and I need to load my arff file into weka my arff structure is like: @RELATION paper @ATTRIBUTE text string @ATTRIBUTE ...
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1answer
18 views

Generate an Arff File for Weka

Hye there I am new to this work and I am getting confused after searching about how to get through it! Actually i want to create a sparse ARFF file for weka for text classification! I have been ...
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1answer
33 views

How to train a naive bayes classifier with pos-tag sequence as a feature?

I have two classes of sentences. Each has reasonably distinct pos-tag sequence. How can I train a Naive-Bayes classifier with POS-Tag sequence as a feature? Does Stanford CoreNLP/NLTK (Java or Python) ...
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0answers
15 views

Machine learning to filter out “fake” names from real names for Twitter users? [closed]

I have collected a lot of Twitter data. I would like to do some user-name analysis. For example, classifying their gender/ethnicity based on their user names. However, I would say about 30-50% of ...
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1answer
9 views

Using Topic Model, how should we set up a “stop words” list?

There are some standard stop lists, giving words like "a the of not" to be removed from corpus. However, I'm wondering, should the stop list change case by case? For example, I have 10K of articles ...
1
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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 ...
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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 ...
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0answers
20 views

Convert String data into Feature Vectors? [closed]

I want to convert strings in xml files into a format of feature vectors for applying Support Vectors Machines algorithms. I have these questions: 1. Could you please guide me in detail to the required ...
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2answers
45 views

Parameters grid search with different text sets for dictionary creation and cross validation

I have to train a classifier for spam detecting. Dataset that I have. At hand I have one labeled dataset of emails with [text, class]. And I also have a lot of emails without class labels. What I ...
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1answer
47 views

Text classification based on interests or topics for short texts

I have been searching for sparse text classification tool, that can classify based on dmoz or freebase for sparse/short texts - like tweets. I have looked at general classification tools like ...
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0answers
20 views

Can I use SVM classification probability for ranking?

I have used SVM for finding relevant results, denoting relevant results by class 1 and irrelevant results as class 0. SVM gives a probability of the label assigned. Can I rank the results of class 1, ...
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1answer
61 views

Problems with caret: R

My code is below: library('RMySQL') library('DMwR') library('tm') library('Snowball') library('SnowballC') rt_outlier <- dbGetQuery(con, "SELECT *,tweet_text from outlier_info,tweets where ...
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1answer
88 views

text classifier with weka: how to correctly train a classifier issue

I'm trying to build a text classifier using Weka, but the probabilities with distributionForInstance of the classes are 1.0 in one and 0.0 in all other cases, so classifyInstance always returns the ...
2
votes
1answer
164 views

how can I complete the text classification task using less memory

(1)My goal: I am trying to use SVM to classify 10000 documents(each with 400 words) into 10 classes(evenly distributed). The features explored in my work include word n-gram (n=1~4),character ...
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0answers
38 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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0answers
77 views

How to keep a text classifier accurate as the corpus changes

I have a conceptual question regarding text classification. I have a corpus of English language documents that I want to classify based on the content of the document. I am working on building a ...
2
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1answer
139 views

Implementation of text classification in MATLAB with naive bayes

I want to implement text classification with Naive Bayes algorithm in MATLAB. I have for now 3 matrices: Class priors (8*2 cell - 8 class names, for each class its % from the training) Training ...
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0answers
52 views

weka batch filtering StringToWordVector

I'm trying to use Weka for text classification. I have two ARFF files: One for the training set (example of row in data): "mouse",no,no,no,no,no,yes,no and another one for test set (example of ...
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1answer
41 views

trouble with nltk python NaiveBayesClassifier, I keep getting same probabilities inputs correct?

so I'm working on a project its for class "homework" if you will, but what it does is it takes in anime names and genres and if they are relevant or irrelevant I am trying to build a ...
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0answers
33 views

Identifying Multilabel Instances in a dataset

I am performing the following process to identify multilabel instances in a dataset .. Step 1: K Fold Cross Validation Step 2: Polynomial By Binomial Classification Step 2a: SVM (one Vs ...
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0answers
23 views

R TextMiner: Text classification model built, how to classify new documents? [duplicate]

I've built a model on my training corpus. Here's a sketch of the (incomplete) R code: library(tm) # Prep the term document matrix cor <- Corpus(DirSource(directory = "~/corpus")) ...
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1answer
76 views

Applying Multi-label Transformation in Rapidminer?

I am working on text categorization in rapid miner and require to implement a problem transformation method to convert multi-label data set into single label i.e. Label Power set etc but couldn't find ...
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0answers
152 views

Naive Bayes and SVM java implementation for document classification

I am trying to classify legal case documents which are in text format, in different folders like Civil, Land, Criminal, e.t.c, I intended using Naive Bayes as Vectoriser to get the vectors from the ...
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1answer
70 views

Converting Multilabel dataset into Single Label?

i am working on single label text categrorization with a dataset of reuter-21578 however the dataset is multi-label by default. Many researchers removed multilabel instances from thi dataset and their ...
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0answers
57 views

How to ensemble SVM and Logistic Regression with python

I am doing a task of text classification(7000 texts evenly distributed by 10 labels). And by exploring SVM and and Logistic Regression clf1 = svm.LinearSVC() clf1.fit(X, y) clf1.predict(X_test) ...
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2answers
38 views

Machine Learning Text Classification technique

I am new to Machine Learning.I am working on a project where the machine learning concept need to be applied. Problem Statement: I have large number(say 3000)key words.These need to be classified ...
2
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0answers
102 views

Plot SVM model in R -Text classification

I am using SVM model from e1017 in R. I have used SVM for text mining and classification. So my data is dtm(document term matrix obtained from documents corpus). How can I go about plotting my SVM ...
1
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1answer
69 views

How to classify text with scikit's SVM?

I have a text classification task. By now i only tagged a corpus and extracted some features in a bigram format (i.e bigram = [('word', 'word'),...,('word', 'word')]. I would like to classify some ...
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0answers
87 views

adding words to stop_words list in TfidfVectorizer in sklearn

I want to add a few more words to stop_words in TfidfVectorizer. I followed the solution in Adding words to scikit-learn's CountVectorizer's stop list . My stop word list now contains both ...
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votes
1answer
79 views

SciKit-Learn Text Classification from ODBC

I'm trying to adapt this example to some social media data I have in a SQL server database. I've intentionally forced both the training and test sets to only have social media posts that contain the ...
0
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1answer
417 views

How to use vector representation of words (as obtained from Word2Vec,etc) as features for a classifier?

I am familiar with using BOW features for text classification, wherein we first find the size of the vocabulary for the corpus which becomes the size of our feature vector. For each sentence/document, ...
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1answer
63 views

Cannot pickle a Naive Bayes classifier in Python?

I am trying to save my trained Naive Bayes classifier in python. I've followed previous, similar questions to no avail. I'm kind of new to Python and don't really understand what is wrong, I've ...
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1answer
114 views

How to classify URLs? what are URLs features? How to select and Extract features from URL

I have just started to work on a Classification problem. Its a two class problem, My Trained model(Machine Learning) will have to decide/predict either to allow a URL or Block it. My Question is very ...
1
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0answers
82 views

R character hash function

Ok this question is related to this one: Feature hashing in R for Text classification. What's a reasonable way to hash an character vector to an integer in R? My current code just take the last hex ...
2
votes
1answer
141 views

Feature hashing in R for Text classification

I'm trying to implement feature hashing in R to help me with a text classification problem, but i'm not sure if i'm doing it the way it should be. Part of my code is based on this post: Hashing ...
0
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0answers
21 views

Active Learning features' dimensionality on each iteration

I'm currently working and doing some research on Active Learning for Text Classification. And, sorry if the question I'm asking is a little basic, but I really can't find it anywhere. When doing Text ...
1
vote
1answer
166 views

groupingBy operation in Java-8

I'm trying to re-write famous example of Spark's text classification (http://chimpler.wordpress.com/2014/06/11/classifiying-documents-using-naive-bayes-on-apache-spark-mllib/) on Java 8. I have a ...
0
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2answers
680 views

Numpy CountVectorizer: AttributeError: 'numpy.ndarray' object has no attribute 'lower'

I have an one-dimensional array with large strings in each of the elements. I am trying to use a CountVectorizer to convert text data into numerical vectors. However, I am getting an error saying: ...
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2answers
68 views

machine learning text classification

This is my first question in this site, i hope that works :) so I'm working on a mini project classification texts with Python, the idea is simple, we have a corpus of sentences respectively ...
1
vote
1answer
50 views

How to lemmatize spanish words with Pattern?

I would like to lemmatize a bunch of opinions. As I know, nltk cannot lemmatize words in languages different from English. Researching a little, I found pattern, which can lemmatize words in several ...
0
votes
1answer
82 views

Unknown words in Naive Bayes classification

How do I test a text classification problem with unknown words? In training a model, we can use smoothing technique (Laplace add-1) to make sure any word will receive at least 1 count for each class. ...
1
vote
0answers
169 views

How do I transform text into TF-IDF format using Weka in Java?

Suppose, I have following sample ARFF file with two attributes: (1) sentiment: positive [1] or negative [-1] (2) tweet: text @relation sentiment_analysis @attribute sentiment {1, -1} @attribute ...
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0answers
34 views

How to pass text features to a scikit-learn classifier?

I'm in a sentiment analisys task, right now i have extracted some linguistic features or bigrams (the ocurrence of noun/adjective). At some point of this task i'll need to use scikit to classify this ...
0
votes
0answers
219 views

Using bag of words classifier on a out-of-sample dataset

I recently used Bag-of-Words classifier to make a Document Matrix with 96% terms. Then I used a Decision Tree to train by model on the bag of words input to make a prediction whether the sentence is ...
0
votes
0answers
24 views

Assigning a (multi-word) token an arbitrary semantic type

Suppose I am given a set of tokens $W = w_0, ..., w_n$ and correspondingly a set of semantic type classes $C = c_0, ..., c_m$. For each class label $c_i$, I am given a set of tokens which belong to ...
2
votes
2answers
87 views

Why does my SVM's performance drop after scaling the training and test data?

I am using scikit-learn to carry out Sentiment Analysis of text. My features right now are just word frequency counts. When I do the following, the averaged F-measure is around 59%: from sklearn ...
0
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1answer
127 views

How to use pickled classifier with countVectorizer.fit_transform() for labeling data

I trained a classifier on a set of short documents and pickled it after getting the reasonable f1 and accuracy scores for a binary classification task. While training, I reduced the number of ...
0
votes
0answers
55 views

Adding more features to bag of words classifier model

I am using stanford classifier with bag of words model features. Now to these bag of words features I want to add more features in the form of phrases as "Nice work", "By the way",etc After going ...
0
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0answers
55 views

formatting text files for classification using PHP SVM classifier

how do I calculate the feature values ? from a collection of text files, For training php svm classifier. The format is : line .=. target feature:value ... feature:value # info <br> target .=. ...