Questions tagged [topic-modeling]

Topic models describe the frequency of topics in documents and text. A "topic" is a group of words which tend to occur together.

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how to optimize nested for loop in lda topic model code in r

I am writing code of LDA topic modeling algorithm.i passed input clean_corp as seen in below code containing tweets.and the output is wt(word-topic) and dt(document-topic) matrix.. all should work ...
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8 views

Topic Modeling: LDA and BTM

Does anyone know here about topic modeling? I badly need help. 1) What is Topic Modeling 2) What is Latent Dirichlet Allocation and Biterm Topic Modeling? 3) What is the difference between LDA and ...
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Topic modeling for one line texts

I have one line text and I need to determine what is the topic for that text. For example, consider the following text: Using autonomous mobility to have a built-in valet feature. You pull up to ...
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How to calculate per-term-per-topic matrix & per-doc-per-topic matrix in STM?

Can anyone explains the formula to get theta and beta manually on Structural Topic Modeling? (Let's say I have K = 35, doc = 81, terms = 74)
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15 views

How do I start a new dialog following a conversation from an old dialog in Choregraphe?

I'm trying to create a dialog flow in Choregraphe where when the output in the 'Dialog' topic gets triggered (eg. $next=1), a new dialog 'Dialog(1)' gets activated and the new topic can be used by the ...
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How should the input corpus of gensim LDA look like?

I try two different kind of input corpus to put into gensim LDA model My document is: documents = ["Apple is releasing a new product", "Amazon sells many things", "Microsoft ...
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28 views

get_document_topics return an empty list.

I am using gensim for topic modeling. After training the lda model I call get_document_topics on a new document to get the topic distribution. However, for some documents, the return value is an empty ...
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9 views

Why we should not feed Latent Dirichlet Allocation with tfidf vectorizer when using python

I am using CountVectorizer for building LDA model, but can anyone tell me why we don't use tfidf vectorizer for the same purpose, I understand that Countvectorizer doesn't normalize the corpus but ...
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Assign more weight to certain documents within the corpus - LDA - Gensim

I am using LDA for topic modelling but unfortunately my data is heavily skewed. I have documents from 10 different categories and would like each category to equally contribute to the LDA topics. ...
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Topic Model Ideas

Some background on the work i have done so far : I am building a topic model on the text data and I have done topic tuning (using coherence score ) to determine the optimal number of topics . ...
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92 views

How to avoid decoding to str: need a bytes-like object error in pandas?

Here is my code : data = pd.read_csv('asscsv2.csv', encoding = "ISO-8859-1", error_bad_lines=False); data_text = data[['content']] data_text['index'] = data_text.index documents = data_text It looks ...
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Topic Modeling, Gensim, Python, Getting Topic Models According to fixed IDs or Linked Data

I have a question about topic modeling via python and gensim library: when I run the following code, it works well and comes up with the related topics but I want to see each topic per document listed ...
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LDA: Assign more than one topic to a document

I´m new to LDA and doing some experiments with Python + LDA and some sample datasets. I already got some very interesting results and now I asked myself a question but couldn´t find an answer so far. ...
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22 views

R topicmodels package: How to identify the parameter of Beta (eta) when we do LDA?

I conducted a topic modeling (LDA) using the R package topicmodels and successfully got a result. However, I am still not sure how I can set a key parameter, Beta (or eta), of LDA in this topicmodels ...
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22 views

print bigrams learned with gensim

I want to learn bigrams from a corpus using gensim, and then just print the bigrams learned. i've not seen an example that does this. help appreciated from gensim.models import Phrases documents = ["...
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118 views

Minimum value of doc topic distribution in scikit-learn's Latent Dirichlet Allocation

When extracting 45 topics from a corpus of documents, I get the following result when calling scikit-learn's LatentDirichletAllocation.transform method with a doc_topic_prior of 0.1: array([0....
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How to segregate a language's topics into complexity-level buckets?

Problem Statement: Divide a Programming Language (say JS) into topics. Then, segregate the topics into three buckets based on the complexity of the concept: Beginner, Intermediate and Advanced. ...
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How will the document number affect the result of Gensim LDA?

I use three txt file to do a LDA project I try to separate these three txt file with two way The difference among the process is: docs = [[doc1.split(' ')], [doc2.split(' ')], [doc3.split(' ')]] ...
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Adding topic distribution (outcome of Topic Model) to pandas dataframe

I calculated a topic model, so far so good. First of all my dataframe looks like this: identifier comment_cleaned 1 some cleaned comment 2 another cleaned comment 8 ...
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(LDA) Can I select topics from fitted LDA model? for classifying new documents

I'm using topicmodels package in r, and I need some help. first, I made my LDA object filtered_lda37 <- LDA(filtered.dtm, k = 37, control = list(seed = 1234)) I checked the result and I thought ...
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73 views

pyspark LDA get words in topics

I am trying to run LDA. I am not applying it to words and documents, but error messages and error-cause. each row is an error and each column is an error cause. A cell is 1 if error cause was active, ...
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52 views

How to implement Latent Dirichlet Allocation in regression analysis

I have a dataset consisting of hotel reviews, ratings, and other features such as traveler type, and word count of the review. I want to perform topic modeling (LDA) and use the topics derived from ...
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Generating categories from a tagged corpus

I have a corpus of tagged documents representing a list of categories. The tags are free text and are of different granularity levels. The tags are assigned by the creator of the document. For ...
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2answers
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fixed-size topics vector in gensim LDA topic modelling for finding similar texts

I use gensim LDA topic modelling to find topics for each document and to check the similarity between documents by comparing the received topics vectors. Each document is given a different number of ...
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Text Cleaning Issues

I'm learning text cleaning using python online. I have get rid of some stop words and lower the letter. but when i execute this code, it doesn't show anything. I don't know why. # we add some words ...
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dictionary = gensim.corpora.Dictionary.load(os.path.join(ldaPath,“mtsamples.dict”))?

What is the use of this code in python. how to interpret this in LDA?? Topic modeling dictionary = gensim.corpora.Dictionary.load(os.path.join(ldaPath,"mtsamples.dict"))
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43 views

Details behind “augment” when applied to topic modeling

I have a question on "augment" function from Silge and Robinson's "Text Mining with R: A Tidy Approach" textbook. Having run an LDA on a corpus, I am applying the "augment" to assign topics to each ...
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1answer
117 views

How to get document_topics distribution of all of the document in gensim LDA?

I'm new to python and I need to construct a LDA project. After doing some preprocessing step, here is my code: dictionary = Dictionary(docs) corpus = [dictionary.doc2bow(doc) for doc in docs] from ...
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185 views

View html file in github repo?

I have a topic modeling visualization created using a python package saved to an html file in my github repository. I tried to open this using - 1. http://htmlpreview.github.io/ website http://...
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2answers
35 views

Using online LDA to predict on test data

I am using online LDA to perform some topic modeling task. I am using the core code based on the paper Original Online LDA paper: Hoffman, Blei and Bach, "Online Learning for Latent Dirichlet ...
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Why do I get a UnicodeDecode error when using doc2bow on an array encoded in utf-8?

So I'm trying to do some topic modelling and I hit problems when I try to use doc2bow to return frequencies of the words in my corpus: texta = acelem_array textd = dcmslem_array corpusa = [...
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31 views

Text Content Relevancy Check

I need to check relevancy of content on particular web page. I have thousands of webpages to check this on. What is the best way to check if the page title is relevant to the content on the page.
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Extracting original text from quanteda dfm for use in stm

I used both quanteda and stm packages. The first one helps me to preprocess data, and I did topic modeling with the second packages. When I try to use findthoughts function, I find following errors: ...
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Coherence in Author Topic Modelling- Selection of model

We are trying to identify the optimal number of topic models after we ran the algorithm using the coherence score(u_mass). Here is the graph that we got when we plotted number of topics vs u_mass ...
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NMF yields all-zero weights

Periodically, when I run topic analyses on data and try to visualize using pyLDAvis, I get a validation error: "Not all rows (distributions) in doc_topic_dists sum to 1." Here's some basic code. Some ...
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66 views

DocumentTermMatrix /LDA produces non-zero entry error when there is no empty documents

I'm trying my first LDA model in R and got thrown in an error Error in LDA(Corpus_clean_dtm, k, method = "Gibbs", control = list(nstart = nstart, : Each row of the input matrix needs to contain ...
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How to show utf-8 encoded text in stmBrowser R package visualization?

I would like to use the stmBrowser R package for visualizing my topic modeling results. I used the R package callled stm for generating a stm object as follows: out <- prepDocuments(processed$...
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52 views

How to plot a document topic distribution in structural topic modeling R-package?

If I am using python Sklearn for LDA topic modeling, I can use the transform function to get a "document topic distribution" of the LDA-results like here: document_topic_distribution = lda_model....
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Hierarchical Dirichlet Process - Inferring Truncation Level

I am making use of the HDP implementation by Gensim to infer the topics of a dataset, but I have a question regarding the truncation level. Is there a way to infer the most appropriate truncation ...
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1answer
20 views

Overall topic distribution of a corpus, not individual documents

I am using gensim LDA for topic modelling. I need to get the topic distribution of a corpus, not the individual documents. Let say I have 1000 documents, which belongs to 10 different categories (let ...
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31 views

How to limit LDA topics to terms that are distinct?

I am using gensim to do LDA on a corpus of arXiv abstracts in the category stats.ML My problem is that there is a lot of overlap between the topics (whether I pick 5, 10, or 50 topics). Every topic ...
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1answer
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mallet topic modling: How to deactive lowercase?

I'm conducting an topic modeling experiment with Mallet on german texts. Since german nouns begin with uppercase, I want to keep this feature. Does anyone know how to deactivate lowercasing?
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35 views

How can I set random-seed of topic model using mallet in gensim?

I had been trying to keep an output of topic modeling stable by using mallet as a library in gensim. However, I found out that mallet can set random-seed but I do not see any parameter in gensim to ...
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21 views

Use Pickle file for Topic Classification. Python

I am trying to do topic classification using the pickle file of my trained model but i am facing the error "CountVectorizer - Vocabulary wasn't fitted". Can someone please guide me on how to resolve ...
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40 views

Are there any methods that can extract specific topic from Twitter data?

I have a set of general tweets data and I want to extract tweets related to food specifically. Instead of searching for food keywords, I want to use topic modeling to select food tweets. I know that ...
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Use of information criteria (AIC, BIC) to evalute the fit of topic models

The topicmodels::LDA() function outputs a log-likelihood and the degrees of freedom associated with the model. You could use these to calculate information criteria (i.e., the Aikake Information ...
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Merging folder of .txt files into one .csv file using R

I am trying to get a structural topic modeling done. Therefore I am trying to combine a large amount of txt files (which are newspaper articles) into one csv file, to then proceed with the structural ...
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24 views

Not able to pass complete DTM as input for topic modeling

I have DTM of size (data) 4997*1372, i am passing this as input for LDA for topic modelling. but i am getting error: "Error in LDA(data, k = 20, control = list(seed = 1234)) : Each row of the input ...
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133 views

How to get exact relative topic prevalence out of STM, over multiple time periods?

I am trying to use the stm package in R to calculate the relative prevalence or proportion of topics in a corpus at different periods. For example, let's say at time period 1, the composition of ...
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31 views

how to change default number_words in LDA

i am able to extract topics from LDA model using gensim. when i print topics ,it is displaying topics with 10 number of words by defaults. i want to show 15 words in one topic.i tried to change it but ...