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 find the top 3 dominant topic in topic modelling (LDA)

First time doing topic modelling. So the issue now is how do i find the top 3 dominant topic for each tweet since i have already created the model i have tried to follow this tutorial https://www....
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Stop words does not work, and a warning comes out

I'm trying to replicate a python code sample for the Dynamic Topic Modeling(DTM) model in Chinese, and here is the part of the code that we want to clean the data by tokenization and apply stop words: ...
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Extract Word Saliency from Gensim LDA or pyLDAvis

I see that pyLDAvis visualize each word's saliency under each topic. But do we have a way to extract each word's saliency under each topic? Or how to calculate each word's saliency directly using ...
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Wait. BoW and Contextual Embeddings have different sizes

Working with the OCTIS package, I am running a CTM topic model on the BBC (default) dataset. import octis from octis.dataset.dataset import Dataset from octis.models.CTM import CTM datasets = ['...
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Cannot get topic numbers when realizing the Hierarchical Dirichlet Process by gensim.models.HdpModel

I am a novice in using python. I am trying to get the topic numbers of a text when realizing the Hierarchical Dirichlet Process by gensim.models.HdpModel. I try to use the method of #hdpmodel....
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stm function won't stop running?

I am trying to run a structured topic model on some documents, but I cannot get the stm to finish even with a trivial subset of the documents (I have about 5000 documents total, but I'm subsetting ...
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Predicting topics for each document in the data using structural topic modeling (STM)

I've been trying to run structural topic modeling (STM package in R) to predict topics for documents. I followed all the steps mentioned in https://cran.r-project.org/web/packages/stm/vignettes/...
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How does Gensim LdaModel determine probability for a document

I’m trying to understand what considerations are taken into account when Gensim ldamodel set the probabilities of topics for a document. The main consideration I can think of is the sum of ...
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How to get list of words for each topic for a specific relevance metric value (lambda) in pyLDAvis?

I am using pyLDAvis along with gensim.models.LdaMulticore for topic modeling. I have totally 10 topics. When I visualize the results using pyLDAvis, there is a bar called lambda with this explanation: ...
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NLP: Find the most similar Corpus (not Document)

I'm looking for suggestions on how to approach a document classification problem. I will explain by means of example: Problem statement I have a collection of papers published by a university. I ...
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Q: 'Stopwords' getting ignored during LDA from scikit-learn

I'm trying to run a LDA analysis from SKlearn on a list of danish reviews from trustpilot with the following code: import pandas as pd from sklearn.feature_extraction.text import TfidfVectorizer, ...
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Should we always remove Punctuations from a String?

I am doing clustering using K-means and topic modeling using LDA. The data I have is about biodiversity data. As you can see in the picture , I have a Scientific name like Holcus lanatus L. The ...
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Looking for a good dataset for NLP clustering/topic modelling

What I had in mind was a customer feedback dataset, a dataset like that could be well divided in clusters/topics (different types of feedback). I've found it hard to find a dataset like this on kaggle ...
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How to categorize the unstructure data

I have this unstructured data and category Comment Category i love chocolate Food i love cat Animals How should i start? Do i need to refer to topic modelling because I ...
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Running tf-idf output into a nltk.model

So I am trying to do topic classification using tf-idf as the input to the supervised learning model I have successfully reached the point of using the function TfidfVectorizer, where the output is : ...
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Mallet: Tokenization by N-grams (1,2)

I was wondering whether it would be possible to tokenize words in Mallet by n-gram size between 1 and 2? This is the code that I have used so far: bin\mallet import-dir --input sample-data\web\en --...
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Identifying rows deleted with dfm_subset()

I am doing topic modelling on a database containing downloaded tweets using the topicmodels package in R. I prepare a corpus from the original text of the tweets which I turn into a dfm object. Then, ...
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Can I input a pandas dataframe into "TfidfVectorizer"? If so, how do I find out how many documents are in my dataframe?

Here's the raw data: Here's about the first half of the data after reading it into a pandas dataframe: I'm trying to run TfidfVectorizer but I keep getting the following error: ValueError: After ...
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Top2Vec Pretrained Embedding Models not working

I am trying to run Top2Vec, I have just assigned some raw text directly and trying to use pretrained embedding model but I am getting the below error. My code: model = Top2Vec(documents=["hello&...
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Should bi-gram and tri-gram be used in LDA topic modeling? [closed]

I read several posts(here and here) online about LDA topic modeling. All of them only use uni-grams. I would like to know why bi-grams and tri-grams are not used for LDA topic modeling?
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Use latent semantic analysis to understand if a document is about a topic

This is an example of the use of latent semantic analysis. For simplicity I have considered 4 documents and 2 topics. The code I used is the following: from sklearn.feature_extraction.text import ...
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Structural Topic Model(STM) How to determine the optimal number of topics

I am trying to topic extraction with STM. I have a question on how to determine the optimal number of topics. kResult <- searchK(out$documents, out$vocab, K=c(7,8,9,10), prevalence=~rating+s(day), ...
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Determine the correct number of topics using latent semantic analysis

Starting from the following example from sklearn.feature_extraction.text import TfidfVectorizer from sklearn.decomposition import TruncatedSVD body = [ 'the quick brown fox', 'the slow brown ...
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IndexError: list index out of range Dynamic Topic Models

I'm a new guy to python and I have a problem with Dynamic Topic Models. I follow the instruction in https://github.com/JiaxiangBU/dynamic_topic_modeling/blob/master/dtm.ipynb Everything is fine, I ...
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R STM Topic Proportion table

I'm trying to make a table for my STM model just like this. I am new to R programming language and STM. I have been searching in the documentation about this and do not know if there is a function ...
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Calculate coherence for one topic only

Provided topics from a topic model, I want to calculate the coherence score for one topic each, instead of a set of topics at once. I have the following code: from gensim.models.coherencemodel import ...
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ValidationError: * Not all rows (distributions) in doc_topic_dists sum to 1 in NMF

I am working on Reddit data and trying to find topics by using NMF topic modeling. It is working fine and producing topics but when in the end I am try to visualise the model, it is showing below ...
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How to extract text from a two-column PDF using PDFPlumber

I am working on topic modeling tasks using python and I would like to extract texts from annual/sustainability reports. However my problem is, when I tried to extract the report, the extracted lines ...
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Can we save the lda model with old data and use trained model for new data?

I have 100 sentences in a excel sheet.. I need to generate topics from this sentences. For that im using LDA model. I have trained the model, fit transform the model and got the optimum number of ...
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JSON dump: TypeError: Object of type int64 is not JSON serializable

I have the following class to train topic models: class LDA_Model: def __init__(self, data_words_model): self.data_words = data_words_model self.id2word = corpora.Dictionary(self....
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Topic visualization in lda using word counts of Topic Keywords and getting error of list index out of range?

Running this code for LDA visualization but getting an error of list index out of range. from collections import Counter topics = ldamodel.show_topics(formatted=False) data_flat = [w for w_list in ...
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What happens if LDA is set to a single topic?

If I were to set LDA to detect a single topic, does it simply equate a bag of words model or is there still any benefit of using LDA?
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How can i extract values of bi grams from PyCaret topic modeler?

i have trained PyCaret topic modeler using the pycaret documentation https://pycaret.readthedocs.io/en/latest/api/nlp.html#pycaret.nlp.get_topics I am able to plot Bigrams using following code as ...
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Which documents is in filtered metadata

I have about 300 metadata files, I did a filter based on particular term "diseas" which exceeding a threshold where I have 10 files. I used the following code and it runs perfectly fine: #5 ...
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Solving memory issues when using Gensim LDA Multicore

For my project I am trying to use unsupervised learning to identify different topics from application descriptions, but I am running into a strange problem. Firstly, I have 3 different datasets, one ...
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How to remove error too many values to unpack (expected 2)

Applied LDA model usinf TFIDF and then I want Performance evaluation by classifying sample document using LDA TF-IDF model. Code: for index, score in sorted(lda_model_tfidf[corpus], key=lambda tup: -1*...
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Top-30 most relevant terms not shown in pyLDAvis visualization

I am trying to get some visualization from my topic modeling. After running the pyLDAvis.display(LDAvis_prepared), I get a visualization with no title of the "Top-30 most relevant terms" and ...
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D3.js Topic Keywords Visualization

I'm working with the dataset of academy awards speeches. I extracted topics from each year using topic modeling techniques. Now I want to visualize topical keywords for each year in such a format: ...
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Assigning multiple topics to each text when topic modelling

Using the quanteda functions below, I want to assign multiple topics to each text, but am uncertain as to how to achieve this. At the moment it is only assigning a single topic to each text. corp_news ...
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matplotlib visualization- positive negative proportion chart

I'm trying to make the same chart as below and wonder if matplotlib has a similar chart to make that. The chart below is the result of the STM topic model in the R package I have probs values using ...
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How to see the content of a Gensim-generated dictionary?

I am running topic modeling using Gensim. Before creating the document-term matrix, one needs to create a dictionary of tokens. dictionary = corpora.Dictionary(tokenized_reviews) doc_term_matrix = [...
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Question about "Gibbs Sampler Derivation for Latent Dirichlet Allocation"

I am reading a document about "Gibbs Sampler Derivation for Latent Dirichlet Allocation" by Arjun Mukherjee. Following is the url of the paper: http://www2.cs.uh.edu/~arjun/courses/advnlp/...
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Can a child node be assigned back to its parent node in tree structure?

As title, I'm currently trying to build a tree structure to take my topics/definitions and their related topics/definition into a tree for traversal and further analysis. The data look like this: VR(...
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Compute Coherence using BERTopic library

I am using the BERTopic library for topic modeling (https://www.kdnuggets.com/2020/11/topic-modeling-bert.html). In short, it uses BERT embedding for topic modeling instead of the classic BoW/TF-IDF ...
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Is it possible to learn symmetric priors via Newton-Raphson in the Gensim LDA implementation?

I have read a good bit of LDA theory and am now learning to implement LDA in Gensim. I am aware that there are various options for setting the hyper-parameters $\alpha$ and $\eta$, including '...
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Stemming and lemmatizing - What approach?

I am preparing to do topic modeling via Mallet and have finished pulling the raw datasets. Before I import and start modeling, I need to take some steps to clean and streamline the texts, of course. I ...
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Topic Modelling - I have used NMF and LDA, what is next?

I have used NMF and LDA for topic modelling in Python, with what I would call good results with NMF, and poor results with LDA. My data is highly domain specific, with a lot of unique/specific ...
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BERT+clustering(KMeans)

folks! I'm new to NLP and topic modeling and in one of my tests I decided to use BERT+clustering(KMeans), and I'm getting unexciting results. My code is as below: BERT and cluster functions def ...
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225 views

Removal of Stop Words and Stemming/Lemmatization for BERTopic

For Topic Modelling, I'm trying out the BERTopic: Link I'm little confused here, I am trying out the BERTopic on my custom Dataset. Since BERT was trained in such a way that it holds the semantic ...
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Topic Distribution over time LDA (months

I have build a topic model through gensim and I was also able to analyse it with the pyLDAvis. However, I am wondering if it is possible to visualize the distribution of topics over the whole time of ...

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