Document classification is the act of assigning documents from a given set of documents to any of a number of classes, where those classes are known a priori.

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215 views

feature vector: calculation of weights for training vs test set

I am working with text classification using support vector machine, but basically I am confused with computation of feature vector for test set. For training feature vector, I took TF-IDF vector for ...
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3answers
121 views

Arranging documents in a grid in accordance with the content similarity

How is it possible to arrange documents in to a space (say multiple grids), so that the position in which they are placed in, contains information about how similar they are to other documents. I ...
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126 views

improve document classification method

I have a program to predict whether a news article is about a certain topic. There is two main scripts: 1) bow_train.py - generates a wordlist and a model and stores them in two files (arab.model ...
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2answers
148 views

Cluster text documents in database

I do have 20.000 text files loaded in PostgreSQL database, one file in one row, all stored in table named docs with columns doc_id and doc_content. I know that there is approximately 8 types of ...
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1answer
256 views

Different results between the Bernoulli Naive Bayes in NLTK and in scikit-learn

I am getting quite different results when classifying text (in only two categories) with the Bernoulli Naive Bayes algorithm in NLTK and the one in scikit-learn module. Although the overall accuracy ...
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1answer
312 views

How do you initialize a gensim corpus variable with a csr_matrix?

I have X as a csr_matrix that I obtained using scikit's tfidf vectorizer, and y which is an array My plan is to create features using LDA, however, I failed to find how to initialize a gensim's ...
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4answers
2k views

text categorization classifiers

Does anybody know of good open-source text-categorization models? I know about Stanford Classifier, Weka, Mallet, etc. but all of them require training. I need to classify news articles into ...
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1answer
213 views

Re-normalize feature vectors after feature selection

I've performed χ² feature selection on my training documents already transformed to TF*IDF feature vectors using sklearn.feature_extraction.text.TfidfVectorizer, which produces normalized vectors by ...
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3answers
4k views

Simple Mahout classification example

I want to train mahout for classification. For me this text is coming from database and I really do not want to store them to file for mahout training. I checked out the the MIA source code and ...
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1answer
82 views

Is it possible to use SVM to learn a training sample with an input of “Feature Matrix” rather than a “Feature Vector”?

Is it possible to use SVM to learn a training sample with an input of "Feature Matrix" rather than a "Feature Vector" ? I need to classify XML documents by representing each document as a Feature ...
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2answers
862 views

how to build an arff file for weka?

I'm new in weka, I've to extract statuses from a social network and to analyse them using weka, how to build an arff file which contains those statuses? does weka contains the algorithms for stemming, ...
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2answers
244 views

TFIDF: tf implementation

I am implementing a classification tool and was experimenting with various TF versions: two logarithmic (correction inside/outside of the logarithm call), normalized, augmented, and the log-average. ...
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1answer
177 views

How to report precision and recall scores using Mallet command line prompt?

I'm using MaxEnt classifier from Mallet for text classification. Mallet provides the ability to report the accuracy and F1 scores using the command line prompt. Is there a way to report precision ...
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1answer
391 views

Feature selection metrics other than Chi-2 in sklearn.feature_selection

I'm experimenting with sklearn.svm.SVC on some text classification tasks. I understand that performing feature selection prior to modelling with SVM is a somewhat questionable endeavour as the ...
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3answers
292 views

what should i do when training set contains some error data in supervised classification?

I am working on a project which perform text auto classification, I have a lot of data set like as below: Text | CategoryName xxxxx... | AA yyyyy... | BB zzzzz... | AA then, i will use above ...
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1answer
335 views

SKLearn Cross-validation:

I'm doing text classification and will be dealing with words that are not captured in my training data, meaning the word should be treated as unknown. Does anyone know if scikit's cross validation ...
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2answers
597 views

Mathematical method for multiple document clustering by Cosine Similarity

Cosine Similarity: is often used when comparing two documents against each other. It measures the angle between the two vectors. If the value is zero the angle between the two vectors is 90 degrees ...
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1answer
760 views

Get WordNet's domain name for the specified word

I know WordNet has Domains Hierarchy: e.g. sport->football. 1) Is it possible to list all words related, for example, to the 'sport->football' sub-domain? Response: goalkeeper, forward, penalty, ...
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0answers
270 views

Feature Selection Implementation C# [closed]

Are there any library for implementing feature selection methods in c# ? I tried my best search but I didn't find something useful .. I'm focusing on specific feature selection methods which are : ...
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1answer
113 views

Using supervised term weighting methods with KNN algorithm

Is it possible to use the supervised term weighting models with KNN classifier ?. I wonder how to represent the vector of test documents as long as the test documents are unlabeled and the supervised ...
2
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2answers
2k views

Supervised Latent Dirichlet Allocation for Document Classification?

I have a bunch of already human-classified documents in some groups. Is there a modified version of lda which I can use to train a model and then later classify unknown documents with it?
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0answers
459 views

Weka java api classification issue

I am trying to build a text classifier based on weka SMO algo. I have created the following code based on diferent resources http://pastebin.com/vSek2gZ9 But it is not giving the actual result. I am ...
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3answers
214 views

how to perfom classfication

I'm trying to perform document classification into two categories (category1 and category2), using Weka. I've gathered a training set consisting of 600 documents belonging to both categories and the ...
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2answers
190 views

precision or recall speaks loud?

Say I'm evaluating some text classification research project using two approaches 'A' and 'B'. When using approach 'A', I get a x% increase in precision while with 'B', a x% increase in recall. How ...
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2answers
986 views

the difference between TF-IDF and TF in SVM linear kernel

Because the IDF is a constant number. All value in one dimension multiply a constant number. In SVM Linear kernel, The result will be different ?
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0answers
224 views

questions about using a standalone dataset to validate text classification with weka

I am trying to use weka for classfying spam message and nonspam message. With 100's of thousands of labeled spam messages, and another 100's of thousands labeled non-spam messages as a training data ...
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1answer
611 views

Document Features Vector Representation

I am building a document classifier to categorize documents. So first step is to represent each documents as "features vector" for the training purpose. After some research, I found that I can use ...
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3answers
931 views

Which classification algorithm can be used for document categorization?

Hey, Here is my problem, Given a set of documents I need to assign each document to a predefined category. I was going to use the n-gram approach to represent the text-content of each document and ...
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1answer
1k views

Caluculating IDF(Inverse Document Frequency) for document categorization

I have doubt in calculating IDF (Inverse Document Frequency) in document categorization. I have more than one category with multiple documents for training. I am calculating IDF for each term in a ...
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2answers
432 views

Centroid algorithm for document classification, threshold detection

I have a collection of documents related to a particular domain and have trained the centroid classifier based on that collection. What I want to do is, I will be feeding the classifier with documents ...
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3answers
364 views

Document classification with incomplete training set

Advice please. I have a collection of documents that all share a common attribute (e.g. The word French appears) some of these documents have been marked as not pertinent to this collection (e.g. ...
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1answer
416 views

StringToWordVector filter under weka

My data are passed through StringToWordVector filter. StringToWordVector can output binary presence/absence indicators, word frequencies or TF-IDF scores. what is the default output of this filter ...
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0answers
779 views

Probabilities computation for Naïve Bayes classifier under Weka

I want to understand how the Naive Bayes classifier works with text classification, in particular, how is the calculation of probabilities? Class Attribute ...
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1answer
482 views

3-fold cross-validation using Joaquim's SVM light

I need to do a 3-fold cross validation using Joaquim's SVM light. Cross Validation and SVM are new things to me and I don't know if I'm doing it right. What have I done so far? I converted my data in ...
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1answer
248 views

classify cell array in matlab

I want to do text categorization on a dataset of news. I have a lot of features like subject, keyword, summary, etc... all of these features are stored in one cell array of structs, each struct ...
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1answer
289 views

Centroid algorithm for text classification, tools?

As discussed here, Do you know of any tools which provides a centroid algorithm for text classification in java?
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372 views

What are some NLP libraries that include feature selection and preprocessing techniques for document classification?

I've looked through some older SO posts about Text Classification libraries, all of them focus on breaking up text into POS (Parts of Speech) and Classification, not on pre-processing or feature ...
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1answer
105 views

Number of instances or the content of the instances more important (machine learning)?

Say in the document classification domain, if I'm having a dataset of 1000 instances but the instances (documents) are rather of small content; and I'm having another dataset of say 200 instances but ...
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1answer
204 views

Machine learning what approach to use when the dataset contain only one-class instances?

I have a dataset of a particular domain (say sports - 1 class). What I want to do is when I fed a web page to the classifier/clusterer I want to get a result whether that instance (web page) is ...
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3answers
766 views

document classification using naive bayes in python

I'm doing a project on document classification using naive bayes classifier in python. I have used the nltk python module for the same. The docs are from reuters dataset. I performed preprocessing ...
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0answers
473 views

Feature Selection in Text Classification

I'm currently studying on text classification, focusing on feature selection. Can anyone suggest me any software/program that I can use for text classification that provides feature selection function ...
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3answers
491 views

Triple drop down menu with the Dewey Decimal Classification

The Dewey Decimal Classification (DDC) is a really useful method to classify books and texts. So I'm trying to find a triple drop down menu that implements it. I googled it in many different ways but ...
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3answers
543 views

understanding probability calculation for naive bayes

With the naive bayes text classification technique, you typically count words in training data and calculate p(label | document) where the document is a string of words? for text classification, why ...
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0answers
333 views

what are the possible OCR classification algorithm for business cards?

i want to classify data extracted from a business card using tesseract OCR engine, what are the possible classification algorithms and the main steps for doing that?
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2answers
1k views

attribute selection+weka+Naive Bayes

I wonder which method among the following three methods is the best to perform an attribute selection: using a meta-classifier the filter approach the native approach, using the attribute selection ...
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1answer
268 views

Naive Bayes Runtime Under Weka Experiment Environment

I run SMO and Naive Bayes for the same data set under Weka Experiment Environment. For SMO, I have 116.547 seconds for the train set and 19.865 seconds for the test set. For Naive Bayes, I have ...
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972 views

Text classification using SVM works with unigrams but not higher order n-grams

I'm using LibSVM (in Java fwiw) to classify text samples into one of two categories: english or spanish language. I'm training on three texts in each language, for a total of roughly 50,000 words ...
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3answers
8k views

Basic text classification with Weka in Java

Im trying to build a text classifier in JAVA with Weka. I have read some tutorials, and I´m trying to build my own classifier. I have the following categories: computer,sport,unknown and the ...
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1answer
356 views

Test cases in Weka

Given that I may have an ARFF file that is written in the following form: @relation spamOrNot @attribute body String @attribute result {spam, notspam} "free money now!", spam "hi meet me at 10", ...
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1answer
856 views

Text classification with weka

I'm building a text classifier in java with Weka library. First i remove stopwords, then I'm using a stemmer (e.g convert cars to car). Right now i have 6 predefined categories. I train the ...