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Questions tagged [natural-language-processing]

Use this tag for questions related to processing of natural language text, in conjunction with programming languages such as Python, Java, Perl, etc. and toolkits such as NLTK, Torchtext that help to process these texts.

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4 views

seq2seq and LSTM in a single model or code

I want to understand that for any specific problem seq2seq and LSTM can be combined as single model, because otherwise both are different model with different loss function and objective. seq2seq is ...
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0answers
13 views

How to replace words by their meanings?

I've got a task to create a handler for Google search requests entered my user. The program must replace the "bad" words with new "good" ones. For instance, the user enters "buy some drug" and the ...
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0answers
13 views

Best psuedoword generation method. Or a generative model for new combinations

So I have been working my way through some machine learning concepts and have recently been working with Markov models. I created a model with characters as nodes based on an English dictionary and ...
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1answer
21 views

How can I count word frequencies in Word2Vec's training model?

I need to count the frequency of each word in word2vec's training model. I want to have output that looks like this: term count apple 123004 country 4432180 runs 620102 ... Is it possible ...
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2answers
32 views

Removing duplicate bigram having reversed words

I am having following dict: {'time pickup': 8, 'pickup drop': 7, 'bus good': 5, 'good bus': 5, 'best service': 4, 'rest stop': 4, 'comfortable journey': 4, 'good service': 4, 'everything good': 3, '...
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1answer
19 views

Breaking a command into components using Natural Language Processing

I want to convert a variable assignment command into code. For example: "create a variable alpha equal to the number 7" or "define a new variable alpha and set it to 7", and either should convert into:...
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1answer
17 views

Is it possible to adapt and existing NLP tool in english to Swedish? and what´s the best approach?

Whats the best approach of using existing NLP tools in english with another language ex.spanish ?
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0answers
47 views

How to use binary classification as auxiliary task to facilitate multi-class classification?

I am currently focusing on multi-class text classification task using deep learning networks. The dataset contains 40 classes and there is a class 'Na' (no content or relation) which has large number ...
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1answer
23 views

Implementation of n-grams in python code for multi-class text classification

I am new to python and working on the multi-class text classification of contract documents of the construction industry. I am facing problems in the implementation of n-grams in my code which I ...
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0answers
14 views

Finding out if a list of names have a LinkedIn profile or not?

Hope this meets you guys well. I have a list of names ( CSV) and I would like to see if they are in LinkedIn or not? Well, My goal, for now, is to see if they have a profile on Linked in or not? I ...
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2answers
24 views

How can I extend the spacy span of my matching text output to include everything until the next match?

I have code that looks like this: data = u"Species:cat color:orange and white with yellow spots number feet: 4" from spacy.matcher import PhraseMatcher import en_core_web_sm nlp = en_core_web_sm.load(...
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1answer
93 views

how to resolve TypeError: language_model_learner() missing 1 required positional argument: 'arch' in python

Hi I am struck here please help me with this issue I am getting this error TypeError: language_model_learner() missing 1 required positional argument: 'arch' I am following this tutorial :- https:...
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0answers
20 views

Is there a dataset that provides shopping conversations?

I want to create a chatbot application, but I need conversational data about users asking for sales or orders on e-commerce. Does anyone provide a dataset like this? All datasets I have found ...
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1answer
63 views

obtaining word polarity in each review

I'm working on a domain-specific sentiment analysis, and I want to get each independent word polarity in that specific corpus (not a general score like "SentiWordNet" or other lexicons) at first I ...
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0answers
28 views

Deserializing Spacy results

I need to run an algorithm on a lot of text files. In order to pre-process them, I use Spacy which has pre-trained models in different languages. Since the pre-processed results are employed in ...
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1answer
33 views

Unigram vs Bigram vs Posgram in Natural Language Processing

I want to know what is the meaning and difference between unigram, bigram and posgram. I have searched the Internet but I could not find a comprehensive answer. Any help would be very much appreciated....
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1answer
35 views

How to handle names/unknown words in neural machine translation?

Can anyone explain a best method to handle unknown words in Neural machine translation instead of removing it and to know how google translate is handling names while the sentence is getting translate ...
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0answers
32 views

Test Cases with Machine learning

I am trying to generate automatically test cases for software testing based on the given user stories with machine learning?should I use deep learning or any other method.
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1answer
50 views

Word vectorization in natural language processing

I have a data set. This data set consists of only words. I have to do the vectoring of these words. I've searched for word vectoring algorithms. Bag of words, word2wec, tf-idf Bag of words, word2wec, ...
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1answer
38 views

NLP approaches to identify dates/time expressions in text

I need to develop an application which identifies the date inside the given text using some NLP approach. Let's assume I have a data in DB with dates column "from", "to" and if the text is below, Get ...
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2answers
50 views

Removing stopwords and tokenization in python

I have following input data and I would like to remove stopwords from this input and want to do tokenization: input = [['Hi i am going to college', 'We will meet next time possible'], ['My ...
2
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1answer
32 views

Node-nlp Bayes Classifier got a very low score

I just follow it according to this https://github.com/axa-group/nlp.js/issues/126#issuecomment-444852649 but I got a very low score different from what was exemplified. https://runkit.com/jesus-...
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1answer
32 views

list of English words to refer to humans

I am trying to automatically process English sentences and detect the words which might be referring to humans. e.g. he, everybody, someone, niece, I, son, ... I am already using NER, and have ...
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0answers
17 views

Explicit semantic analysis in iPython notebook

How to use ESA to convert text to vector using wikipedia knowledge base ? I am working on a text dataset for sentiment analysis. In the feature extraction phase, I want to convert the text data into ...
2
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1answer
191 views

Using BERT for next sentence prediction

Google's BERT is pretrained on next sentence prediction tasks, but I'm wondering if it's possible to call the next sentence prediction function on new data. The idea is: given sentence A and given ...
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1answer
16 views

Apply function to dataframe column of lists

I have a set of text strings (A). I can break them down into tokens (B). I would like to drop some of the tokens so that I end up with only words (C). I tried: from nltk.tokenize import word_tokenize ...
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0answers
31 views

How to find the associated nouns to a preposition

given a sentence "extinguish the fire in front of the table which is to the right of stool which is to the left of cone then go towards the chair" we as humans can easily identify the nouns ...
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2answers
75 views

What is the most efficient data structure to build a large word-to-index-to-word dictionary?

I would like to index a very large number of strings (mapping each string to an numeric value) but also be able to retrieve each string from its numeric index. Using hash tables or python dict is not ...
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1answer
57 views

Why the FastText word embedding could generate the representation of a word from another language?

Recently, I trained a FastText word embedding from sentiment140 to get the representation for English words. However, today just for a trial, I run the FastText module on a couple of Chinese words, ...
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3answers
269 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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0answers
32 views

unable to install textacy in python 3.0

I am trying to install textacy to perform NLP tasks, but getting an error while trying to do: pip install textacy in Anaconda prompt. The error I am getting is error: Microsoft Visual C++ 14.0 is ...
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1answer
155 views

Data Preprocessing for NLP Pre-training Models (e.g. ELMo, Bert)

I plan to train ELMo or Bert model from scratch based on data(notes typed by people) on hand. The data I have now is all typed by different people. There are problems with spelling, formatting, and ...
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1answer
25 views

many of the nltk package methods / tools are not working

1)I tried the code from the official book on nltk package named /Natural Language Processing' but it gives error dt = nltk.DiscourseTester(['A student dances', 'Every student is a person']) print(dt....
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1answer
38 views

How do I create a search using NLP techniques which searches an inputted named entity as well as any potential name variations it may have?

I’m currently using TextBlob to make a chatbot, and I’ve so far been extracting named entities using noun phrase extraction and finding the pos tag NNP. When entering a test user question such as ‘...
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2answers
33 views

Context Free Grammar for Tamarian Language

I am trying to figure out the CFG for Tamarian language. I think for English, the starting symbol S usually starts with the production rule S -> NP VP. Which means we can divide a typical sentence ...
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1answer
94 views

how to modify rnn cells in pytorch?

If I want to change the compute rules in a RNN cell (e.g. GRU cell), what should I do? I do not want to implement it via for or while loop considering the issue of efficiency. I have viewed the source ...
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0answers
9 views

Temporal logic (e.g., LTL) repository

I am currently dealing with the problem of formalizing the content of natural language texts by means of temporal logic, for instance LTL. An example would be the phrase "When a train is ...
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0answers
28 views

Txt Prediction Model Numerical Expression Warning

I have three dataframes created from different ngram counts (Uni, Bi , Tri) each data frame contains the separated ngram, frequency counts (n) and have added probability using smoothing. I have ...
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1answer
78 views

Cannot update VADER lexicon

print(news['title'][5]) Magnitude 7.5 quake hits Peru-Ecuador border region - The Hindu print(analyser.polarity_scores(news['title'][5])) {'neg': 0.0, 'neu': 1.0, 'pos': 0.0, 'compound': 0.0} from ...
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1answer
83 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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1answer
31 views

Word Tokenization When There is No Space

I am wondering for the term in Machine Learning, Deep Learning, or in Natural Language Processing that split the word in a paragraph when there is no space between them. example: "iwanttocook" ...
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0answers
18 views

How to seperate two differently named text files from a folder. Is there any classifier that do directly based on title given to file

I had a folder as employment in which i had 1500 files of two different types like aggrement and amendment. my task is to build a classifier that seperates two different files and put in the two ...
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0answers
16 views

How to handle selection sets of grammars that have multiple derivation trees

I need to write a parse table for a grammar that has lambda expressions and multiple derivation trees. I am having trouble finding examples of parse tables for grammars with lambda expressions. How ...
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0answers
25 views

【NLP】What are syntactic distance & parallelism in co-reference problem

This paper used syntactic distance & parallelism as the baseline. Mind the GAP: A Balanced Corpus of Gendered Ambiguous Pronouns However, I couldn't imagine how to implement these approaches and ...
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1answer
61 views

Vectorizing new text data

I have trained a Word2vec model on the "brown corpus". I want to apply the vectorized words to a new text document, whose sentences I then want to cluster by way Affinity Propagation. import gensim ...
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0answers
26 views

How to tokenize words that might be written together using python/nltk [duplicate]

I need to tokenize words that might be written together in python. test = 'This hasbeen 16% of the total' print( tokens = nltk.word_tokenize(test) ) print( tokens = nltk.wordpunct_tokenize(test) ) ...
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1answer
29 views

How can i import string from nltk.corpus?

I am trying to load string from nltk.corpus module. But i am getting an error. from nltk.corpus import string Would any of you be kind enough to guide me here? Thanks in advance
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83 views

R: using Doc2Vec (package: TextTinyR) to assign vector to new sentence

I have: A Doc2Vec model (textTinyR) trained on a lot of sentences. A new sentence the doc2vec model has not seen. I want: To apply the Doc2Vec model to the new sentence to get a sentence vector. ...
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0answers
25 views

What NLP measures should I use to compare the importance/centrality of certain terms in different documents?

What NLP (natural language processing) measures can I use to measure the importance and centrality of different words in a text or collection of texts? Example: suppose I have two corpuses containing ...
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1answer
65 views

how to make correct dimension of training and test test to fit in the model for elmo embedding

i have got error while fitting the elmo embedding model with training set of dimension x_tr=(43163, 50),and y_tr= (43163, 50, 1) as : InvalidArgumentError: Incompatible shapes: [1600] vs. [32,50] ...