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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Remove empty documents from DocumentTermMatrix in R topicmodels?

I am doing topic modelling using the topicmodels package in R. I am creating a Corpus object, doing some basic preprocessing, and then creating a DocumentTermMatrix: corpus <- ...
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LDA topic modeling - Training and testing

I have read LDA and I understand the maths behind how the topics are generated when one inputs a collection of documents. References say that LDA is an algorithm which, given a collection of documents ...
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How to print the LDA topics models from gensim? Python

Using gensim I was able to extract topics from a set of documents in LSA but how do I access the topics generated from the LDA models? When printing the lda.print_topics(10) the code gave the ...
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389 views

Representation and a good similarity measure between Tweets for topic detection

I'm planning to write a tool for Topic Detection on Twitter. I've been thinking about a good similarity measure (distance) between two tweets, and how to represent them, taking in count: The ...
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402 views

hierarchical classification + topic model training data for internet articles and social media

I want to classify large numbers (100K to 1M+) of smallish internet-based articles (tweets, blog articles, news, etc) by topic. Toward this goal, I have been looking for labeled training data ...
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Latent Dirichlet Allocation Solution Example

I am trying to learn about Latent Dirichlet Allocation (LDA). I have basic knowledge of machine learning and probability theory and based on this blog post http://goo.gl/ccPvE I was able to develop ...
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about lda inference

Right now, I'm using LDA topic modelling tool from the MALLET package to do some topic detection on my documents. Everything's fine initially, I got 20 topics from it. However, when I try to infer new ...
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Topic Modeling in Mallet; Documentation

I'm looking for some good documentation for Mallet, specifically for its classes related to topic modeling. I've looked at the Java docs but they aren't too helpful. For example: estimate public ...
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Implementing Topic Model with Python (numpy)

Recently, I implemented Gibbs sampling for LDA topic model on Python using numpy, taking as a reference some code from a site. In each iteration of Gibbs sampling, we remove one (current) word, sample ...
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Run cvb in mahout 0.8

The current Mahout 0.8-SNAPSHOT includes a Collapsed Variational Bayes (cvb) version for Topic Modeling and removed the Latent Dirichlet Analysis (lda) approach, because cvb can be parallelized way ...
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Topic-based text and user similarity

I am looking to compute similarities between users and text documents using their topic representations. I.e. each document and user is represented by a vector of topics (e.g. Neuroscience, ...
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Using Mahout to train an LDA and retrieve it's topics

I'm trying out Apache Mahout and there's a lot of information on how to use LDA to generate the topic model, there is however little information on how to do the same using their new CVB lda ...
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456 views

Using scikit-learn vectorizers and vocabularies with gensim

I am trying to recycle scikit-learn vectorizer objects with gensim topic models. The reasons are simple: first of all, I already have a great deal of vectorized data; second, I prefer the interface ...
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What is the relation between topic modeling and document clustering?

Topic modeling identifies distribution of topics in a document collection, which effectively identifies the clusters in the collection. So is it right to say that topic modeling is a technique to do ...
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Topic models: cross validation with loglikelihood or perplexity

I'm clustering documents using topic modeling. I need to come up with the optimal topic numbers. So, I decided to do ten fold cross validation with topics 10, 20, ...60. I have divided my corpus into ...
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223 views

Error while loading class when using Stanford Topic Modeling Toolkit (TMT)

I have tried JDK7-Update40 and JDK8, but still cannot run the test codes from the TMT website. Everytime I click 'run', it give error messages as below: error: error while loading CharSequence, ...
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752 views

Yahoo! LDA Implementation Questions

All, I have been running Y!LDA (https://github.com/shravanmn/Yahoo_LDA) on a set of documents and the results look great (or at least what I would expect). Now I want to use the resulting topics to ...
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Topic Modeling: How do I use my fitted LDA model to predict new topics for a new dataset in R?

I am using 'lda' package in R for topic modeling. I want to predict new topics(collection of related words in a document) using a fitted Latent Dirichlet Allocation(LDA) model for new dataset. In the ...
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LDA model generates different topics everytime i train on the same corpus

I am using python gensim to train an Latent Dirichlet Allocation (LDA) model from a small corpus of 231 sentences. However, each time i repeat the process, it generates different topics. Why does ...
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583 views

Best model for topic spotting/discovery

What is the best model for topic spotting within short unstructured documents, ex. SMS or Twitter messages? Latent Dirichlet allocation?
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Why getting different results with MALLET topic inference for single and batch of documents?

I'm trying to perform LDA topic modeling with Mallet 2.0.7. I can train a LDA model and get good results, judging by the output from the training session. Also, I can use the inferencer built in ...
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1answer
598 views

How to print out the full distribution of words in an LDA topic in gensim? python

The lda.show_topics module from the following code only prints the distribution of the top 10 words for each topic, how do i print out the full distribution of all the words in the corpus? from ...
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Text Clustering and topic extraction

I'm doing some text mining using the excellent scikit-learn module. I'm trying to cluster and classify scientific abstracts. I'm looking for a way to cluster my set of tf-id representations, without ...
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Predicting LDA topics for new data

It looks like this question has may have been asked a few times before (here and here), but it has yet to be answered. I'm hoping this is due to the previous ambiguity of the question(s) asked, as ...
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LDA with topicmodels, how can I see which topics different documents belong to?

I am using LDA from the topicmodels package, and I have run it on about 30.000 documents, acquired 30 topics, and got the top 10 words for the topics, they look very good. But I would like to see ...
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886 views

Inference Labeled LDA/pLDA [Topic Modelling Toolbox]

I have been trying to get through with the code for inference from trained labeled LDA model and pLDA using TMT toolbox(stanford nlp group). I have gone through the examples provided in the following ...
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225 views

Gensim Dictionary Implementation

I was just curious about the gensim dictionary implementation. I have the following code: def build_dictionary(documents): dictionary = corpora.Dictionary(documents) ...
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Topic modeling using mallet

I'm trying to use topic modeling with Mallet but have a question. How do I know when do I need to rebuild the model? For instance I have this amount of documents I crawled from the web, using topic ...
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Topic models in a structured document? (or would EM or MCMC work?)

I have a set of documents that each consist of N words. The ith word of each document is selected from a common set of words, Wi={wi1, wi2, wi3, wi4}. For example, the first word in each document ...
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User profiling for topic-based recommender system

I'm trying to come up with a topic-based recommender system to suggest relevant text documents to users. I trained a latent semantic indexing model, using gensim, on the wikipedia corpus. This lets ...
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1answer
116 views

Creating topic models on frequency lists in R

I've been using the topicmodels package to create LDA models in R. require(tm) require(topicmodels) textvector <- c("this is one sentence", "this is another one", "a ...
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167 views

In Stanford Topic Modeling Toolkit (TMT), what does the number against a topic mean (in the output file “summary.txt”)?

A typical snippet from Stanford TMT's 'summary.txt' file is as follows: Topic00 37.47500834475079 term1 11.163093014855274 term2 2.8478206435760547 term3 1.905685547333616 term4 ...
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Implementing deep belief network for topic modelling

I'm trying to implement the deep belief network for the Semantic Hashing article (http://www.cs.toronto.edu/~hinton/absps/sh.pdf) by Geoffrey Hinton and Ruslan Salakhutdinov. I have a hard time ...
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243 views

How can I infer a new document against Mahout TopicModel output?

Given a topic model from Mahout LDA CVB program/offline batch execution, I like to infer a new document using the model/online web service calls. These documents are not incrediably helpful for ...
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1answer
710 views

Stream Parse Wiki Xml dump

I'm not sure if this question has been asked before but it has been I couldn't find it and please pardon my ignorance. I want to parse (stream parse) wikipedia xml dumps that are about 40 Gigs. I'm ...
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Making gsub only replace entire words?

(I'm using R.) For a list of words that's called "goodwords.corpus", I am looping through the documents in a corpus, and replacing each of the words on the list "goodwords.corpus" with the word + a ...
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846 views

Understanding LDA implementation using gensim

I am trying to understand how gensim package in Python implements Latent Dirichlet Allocation. I am doing the following: Define the dataset documents = ["Apple is releasing a new product", ...
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How to go about data preparation for topic modeling in R (topicmodels, lda, tm)? [closed]

I have a corpus (622 docs) of lengthy txt files (ca. 20.000-30.000 words per file) that I'm trying to explore in R. I have done some basic text mining using the tm package and would like to delve into ...
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Removing an “empty” character item from a corpus of documents in R?

I am using the tm and lda packages in R to topic model a corpus of news articles. However, I am getting a "non-character" problem represented as "" that is messing up my topics. Here is my workflow: ...
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Topic Modeling tool for large data set (30GB)

I'm looking for some topic modeling tool which can be applicable to a large data set. My current data set for training is 30 GB. I tried MALLET topic modeling, but always I got OutOfMemoryError. ...
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1answer
76 views

How to reproduce exact results with LDA function in R's topicmodels package

I've been unable to create reproducible results from topicmodels' LDA function. To take an example from their documentation: library(topicmodels) set.seed(0) lda1 <- LDA(AssociatedPress[1:20, ], ...
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240 views

In LDA model, how are the multinomial parameters (theta) drawn from the Dirichlet prior weight (alpha)?

I'm a freshman who is studying LDA (Latent Dirichlet Allocation) model nowadays. But, I faced a problem. How is the theta drawn from the alpha? theta ~ Dir(alpha) According to my short ...
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1answer
760 views

Javascript - Wait for web worker to finish?

I am implementing the LDA algorithm of Topic Modelling in javascript as a part of a project. Upon the click of a button, the function to perform LDA is called. However since this is a very heavy task, ...
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How does LDA give consistent results?

The popular topic model, Latent Dirichlet Allocation(LDA) which when used to extract topics from a corpus returns different topics with different probability distributions over the dictionary words. ...
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1answer
74 views

Passing Python strings to Mallet for topic modelling

I'm building a corpus of texts harvested alongside some metadata from HTML with BeautifulSoup. It would be really helpful if I could call Mallet from within Python, and have it model topics from ...
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186 views

Are there any efficient python libraries for Dynamic Topic Models, preferably extending Gensim?

I'm trying to model twitter stream data with topic models. Gensim, being an easy to use solution, is impressive in it's simplicity. It has a truly online implementation for LSI, but not for LDA. For a ...
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Can LDA assign more than one topic for a word?

I have just started reading about Latent Dirichlet Allocation LDA and want to apply it to my project. May I know if LDA is able to assign a topic to more than one word? For example, Article A talks ...
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487 views

Trying to remove words from a DocumentTermMatrix in order to use topicmodels

So, I am trying to use the topicmodels package for R (100 topics on a corpus of ~6400 documents, which are each ~1000 words). The process runs and then dies, I think because it is running out of ...
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274 views

Error with function topicmodels::lda in R

I'm trying to use LDA model from topicmodels package in R. I need to measure method's instability so I have generated true parameters from the Dirichlet distribution for w = 3000 words, t = 8 topics ...
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Topic Modeling tool multilingual

In the past few days I have been trying to work with the tool understanding topic modeling for multiple languages. This is the tool I have been trying to understand. ...