Questions tagged [text-classification]

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 like to categorise the complaints automatically into the most appropriate bucket of problems.

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CountVectorizer values work alone in classifier, cannot get working when adding other features

I have a CSV of twitter profile data, containing: name, description, followers count, following count, bot (class I want to predict) I have successfully executed a classification model when using ...
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33 views

NLP - which technique to use to classify labels of a paragraph?

I'm fairly new to NLP and trying to learn the techniques that can help me get my job done. Here is my task: I have to classify stages of a drilling process based on text memos. I have to classify ...
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How can I improve the accuracy of my neural network (RNN, CNN o using both) for text classification?

I'm trying to build a classifier using a neural network. In particular I tried both RNN and CNN. At the moment I'm getting better result using CNN and embeddings. My network is as follow: X = ...
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19 views

Not able to load keras trained model

I am using following code to train HAN Network. Code Link I have trained the model successfully but when I tried to load the model using keras load_model it gives me following error- Unknown layer: ...
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31 views

Load a plain text file into PyTorch

I have two separate files, one is a text file, with each line being a single text. The other file contains the class label of that corresponding line. How do I load this into PyTorch and carry out ...
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Biggest/open challenge in pre-processing text for text mining? [on hold]

What's the biggest/open challenge in text pre-processing for text mining (with research point of view)? My research is in area short-text classification.Short text are basically social media text (and ...
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41 views

Predicting probability score of each classification bin for a given document

I am creating a python model that will classify a given document based on the text. Because each document still needs to be manually reviewed by a human, I am creating a suggestion platform that will ...
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Prepare data set for classification using Support Vector Machines

I am having a data set of student feedback. The data is about 40 different faculty members and consists of both positive as well as negative feedback. I want to build a data set that consists of the ...
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37 views

Uneven K-means clustering, identical data in two clusters. Python

I am new to machine learning and want some help in text clustering. Please suggest on code changes if you feel. My problem statement is to cluster the input data into multiple clusters. For this I am ...
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8 views

Developing a classifier for document classification based on specific keyword matching

I am working on document classification problem statement. To solve I already have a list containing some specific keywords from each class and I need to predict class of a document on there basis. ...
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22 views

Getting TypeError: 'list' object is not callable while using Comprehension in Python NLTK library?

Hi i am getting this list object is not callable in below code. i looked in couple of similar post here , problem in this code seems to be different. Can anyone help me understand what wrong i am ...
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Use word2vec word embeding as feature vector for text classification (simlar to count vectorizer/tfidf feature vector)

I am trying to perform some text classification using machine learning and for that I have extracted feature vectors from the per-processed textual data using simple bag of words approach(count ...
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Classification by categories

I have a csv file which contain two columns : Name | Detail Exemple : French & English code_application | Code application utilisee name_user | first name of user location_place | full ...
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15 views

categorize non-functional requirements

I am developing a machine learning project which analyzes requirement specification and categories the non-functional requirements in to categories like database, web socket, backend technology, etc. ...
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24 views

sentence classification in to predefined topics

What unsupervised machine learning algorithms can be used to categorize sentences in to a fixed number of topics based on certain words in them? Like election and president words falls under politics ...
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38 views

One Category Text Classification on imbalanced data-set

I am having imbalanced dataset scraped from web pages text data and have manually classified it into positive class, while the other negative class can have any type of text data which I have marked ...
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Weka: how to convert the test data attibutes consistent with the train data attibutes?

I am doing the text classification task. I build a classifier with train text data, has 1700+ attributes(words). However, my test data only has 500+ attributes(words), when i run test data on above ...
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249 views

Text classification beyond the keyword dependency and inferring the actual meaning

I am trying to develop a text classifier that will classify a piece of text as Private or Public. Take medical or health information as an example domain. A typical classifier that I can think of ...
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NLP data preparation and sorting for text-classification task

I read a lot of tutorials on the web and topics on stackoverflow but one question is still foggy for me. If consider just the stage of collecting data for multi-label training, what way (see below) ...
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Why am I getting almost same top 10 features using Multinomial Naive Bayes classifier for positive and negative class?

After running MultinomialNB multiple times I'm getting same features for +ve and -ve class BoW, TfIdf. I even tried it on bi-grams, tri-grams still the same features for both classes. best_alpha = 6 ...
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39 views

Factorizing text features for classification

I have a dataframe, df consisting of both text and numerical features similar to one shown below. Feature 1 Feature 2 Feature 3 Feature 4 Label 10 20 ...
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85 views

BERT multilingual model - For classification

I am trying to build multilingual classification model with BERT. I'm using a feature-based approach (concatenating the features from top-4 hidden layers) and building a CNN classifier on top of that....
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40 views

How to recognize entities in text that is the output of optical character recognition (OCR)?

I am new to NLP and trying to do multi-class classification with textual data. I have bean reading about multi-class classification, but problem I am facing that I have unstructured textual data. I'll ...
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Trying to have my training and testing data to have a shape of n,1

X_train, X_test, Y_train, Y_test =\ train_test_split(shuffled_df.sentence_clean,shuffled_df.pol,test_size = 0.30,random_state=42) tfidf1 = TfidfVectorizer(min_df=0.008, max_df=0.1) #using tfidf ...
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How to balance topical, two classes dataset when one of the topics is too broad and the other is very narrow?

I have simple prediction, where The dataset is composed from 2300 samples for each class e.i. total = 4600 (binary classification). The first class encompasses all news types except the other class, ...
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47 views

Predict “user-input” reviews with Naive Bayes trained model

I am using a dataset with textual Yelp restaurant reviews and their "star" rating. My data is a df and looks like this: Textual Review Numeric rating "super cool restaurant" 5 "horrible ...
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sklearn Vectorizer (NLP task) : Generating Custom NGrams which are capable of scaling up for n >= 3

I would like to build a vectorizer in sklearn which can scale up for higher values of n. Here n is the number of different words considered as single vocab element. My idea is that for n = 1 and n = ...
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50 views

Python : object of type 'NoneType' has no len() [duplicate]

Am trying to perform Avg-Word2Vec for a text corpus. And I have created the class for it as: class W2V: final_vectors = []; def __init__(self, review): self.review = review def w2v_vec(...
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word representation of a data set of two categories with each have 800 text files

Neural network model for classification I want to implement the neural network in the picture. I want to create a word representation of the data set that I have but I don't know how?!
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47 views

Intent classification with large number of intent classes

I am working on a data set of approximately 3000 questions and I want to perform intent classification. The data set is not labelled yet, but from the business perspective, there's a requirement of ...
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19 views

How to use JFasttext in eclipse?

I use JFasttext for my project on eclipse. But when I run project, I meet this problem. I try some solution, but it doesn't work. I am so confused. Anyone have solution, please give me. Exception in ...
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75 views

SVM and NN Model overfitting on large data

I have trained SVM and NN model using sklearn for two class. One class have 24000 tweets and another 32000 tweets. When I do validation it gives like this For - text_clf = Pipeline([('vect', ...
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Keras evaluate() and predict() results are way too off

Im working on a binary classification model using keras. See data set up below print(train_x.shape) --(79520,) print(test_x.shape) --(26507,) print(train_y.shape) --(79520,) print(test_y.shape) --(...
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41 views

Can I use a 3D input on a Keras Dense Layer?

As an exercise I need to use only dense layers to perform text classifications. I want to leverage words embeddings, the issue is that the dataset then is 3D (samples,words of sentence,embedding ...
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55 views

Data augmentation for text classification

What is the current state of the art data augmentation technic about text classification? I made some research online about how can I extend my training set by doing some data transformation, the ...
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31 views

Spacy text classification scores

I'm quite new to NLP text classification and trying to apprehend the basics. It seems that Spacy is more suitable for my tasks and experience. I've read through all the docs and run the example code ...
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30 views

Predicting iteratively with trained classifier in sklearn

I have trained a classifier model with 120 features, for predicting I am using this code. file = open('/Users/arjun/DataSets/Cleaned_for_testing.txt').readlines() trained_file = open( '/Users/...
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Classify Word in Python using sklearn

I'm trying to write a program in python in order to classify single words. The program should receive a list of words with a binary label and has to label other words in input based on the similarity. ...
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32 views

Find best machine learning for predicting category of products

I have a dataframe that contains product and in this dataframe I have some features like: brand, cat1, cat2, cat3, city, desc, image_count, mileage, price, title, year. The goal is predicting category ...
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Formatting a Document Term Matrix to Predict Continuous Outcome?

This is my first time trying text analysis. I want to use text to predict scores on a continuous variable. I see this as two steps, 1) text mining to identify features, 2) input features into model. ...
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1answer
47 views

Is there a difference in computation according to input shape? (CNN in Python with Tensorflow)

I am solving a text classification problem by reference to the paper(Kim, 2014). And then I found between below two models, the model on the left(Model 1) takes about 2.5 times more time than the ...
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42 views

Predict multi class in svm

I have user review dataset like review-1, 0,1,1,0,0 review-1 is user review and 0,1,1,0,0 is review categories. one review can have multiple categories. I want to predict categories to reviews. so I ...
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35 views

How to choose input size and number of node for the hidden layer for a RNN used for text classification?

I want to create an email classifier that for each email have to guess the right category (topic of the email). I'm using RNN, in particular using embedding, LSTM block and dropout. The structure of ...
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9 views

Reading probabilities predicted using classifier

I have trained a classifier to identify if a sentence is positive or negative(pos/neg). I now also want to extract the probability of positivity and negativity of each sentence. Using the class ...
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1answer
31 views

Classify Multiple Documents and store them in different folders Via Flask (python)

I want to do is I want my web app to take multiple documents as input and classify them using my model and store those classified documents into different folders. I have developed a model which ...
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1answer
28 views

Classification based on list of words R

I have a data set with article titles and abstracts that I want to classify based on matching words. "This is an example of text that I want to classify based on the words that are matched from a ...
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2answers
43 views

Different accuracy for the same code in text classification in keras

I'm training a recurrent neural network based on LSTM for text classification and I have a strange behaviour. With the same code and same training set I obtain very different level of accuracy. I ...
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2answers
125 views

Unify text and image classification (Python)

I am working on a code to classify texts of scientific articles (using the title and the abstract). And for this I'm using an SVM, which delivers a good accuracy (83%). At the same time I used a CNN ...
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14 views

raise FormatError('Could not automatically detect format for the given '

I want to train my dataset using textblob. So I implemented code that from textblob.classifiers import NaiveBayesClassifier with open('train.csv', 'r') as fp: cl = NaiveBayesClassifier(fp) But ...
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Email classification using word2vec

My goal is to classify email, so each email have to correspond to a specific category like sport, clothes and so on. My idea is to use a Recurrent Neural Network with one layer based on embedding (by ...