Latent Dirichlet Allocation, LDA, is a generative model that allows sets of observations to be explained by unobserved groups that explain why some parts of the data are similar.

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linear discriminant analysis in r

I'm a very newbie of R, although i'm pretty skilled in Matlab and in some basic data analysis, even though i make just basic statistical analysis ( never used more than some Mann-Whitney/ T-test/ ...
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How can I retrieve the phi and theta matrices from LDA(topic models) in R?

I have a WXD term frequency matrix, after running the LDA(topic models) in R, how can I retrieve these two matrices?
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Mallet LDA for online clustering?

I'm currently clustering tweets on cosine similarity of their vectors, using a tweet vector as a cluster centroid like this: on Tweet vector t: for each cluster in cluster collection if ...
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Confidence in face recognition using Fisher faces

I am trying to build a face recognizer using fisher faces in OpenCV. model->predict(face,prediction,confidence); This is the line that predicts a face with an associated confidence. Intuitively ...
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Mahout dependecy on Hadoop

I've to implement naive bayes sentiment analysis and LDA algorithm for my project using Apache Mahout. But I don't want to use Apache Hadoop. Is it possible? What part of Mahout depend on Hadoop?
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Classification of single sentence

I have 4 different categories and I also have around 3000 words which belong to each of these categories. Now if a new sentence comes, I am able to break the sentence into words and get more words ...
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How can I use the Mallet API to create instances from a file describing feature-value pairs?

I am tring to run LDA to generate some topics from txt files as the following one: Document1 label1 forest=3.4 tree=5 wood=2.85 hammer=1 colour=1 leaf=1.5 Document2 label2 forest=10 tree=5 ...
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18 views

how to perplexity of HMM-LDA

I want to implement the perplexity of HMM-LDA. I know that the MATLAB Topic Modeling Toolbox has an implementation http://psiexp.ss.uci.edu/research/programs_data/toolbox.htm , but it only provide the ...
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Error while while running trained topic model on new document

I have list of docs in postCorp. I am trying to get topics and corresponding probability using lda model that i have already trained using gensim. Below is the code snippet where i am: Getting each ...
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how to plot the results of a LDA

There are quite some answers to this question. Not only on stack overflow but through internet. However, none could solve my problem. I have two problems I try to simulate a data for you df <- ...
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How does the removeSparseTerms in R work?

I am using the removeSparseTerms method in R and it required a threshold value to be input. I also read that the higher the value, the more will be the number of terms retained in the returned matrix. ...
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Fisher's linear discriminant VS naive bayes

i know some basic things about linear classifiers. i prefer two think geometrically about them. and what'll happening if covariance Matrix were different things. Generally; What's the difference of ...
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Using Topic Model, how should we set up a “stop words” list?

There are some standard stop lists, giving words like "a the of not" to be removed from corpus. However, I'm wondering, should the stop list change case by case? For example, I have 10K of articles ...
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Can I print method LDA with plot in R?

I have this library(MASS) mydata.qda <- qda(Sp ~ ., prior = c(1,1,1)/3, data = mydata.learn) I would like to plot my results like ...
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Using LDA(topic model) : the distrubution of each topic over words are similar and “flat”

Latent Dirichlet Allocation(LDA) is a topic model to find latent variable (topics) underlying a bunch of documents. I'm using python gensim package and having two problems: ---1, I printed out the ...
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Using Mallet to get the distribution (proportion) of topics in each document

I have used Mallet to implement a java code that relies on LDA to generate topics from a set of documents. To fill the matrix containing the proportions (or distributions) of each topic in each ...
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how to get the word probability in a topic obtained by LDA python

After run LDA in python, I obtain a number of topics and I would like to matplot the word distribution in each topic. I am using gensim and one of my Topic looks like: Topic 1 = 0.024*fell + ...
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Can I apply LDA (latent dirichlet allocation) to a different language corpus?

I am trying to analyze a text corpus obtained from a Turkish virtual community website to examine the user generated content during protests. Specifically, I plan to apply LDA to determine topics. I ...
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What are the inputs that should be given for LDA?

Hello everyone, I have installed the package from google code for PLDA which is https://code.google.com/p/plda. As per the LDA, they have given the commands to input the text I have. ...
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in LDA model topics are displayed as digit in R

Could you help me? I want analyze some sentences to allocate them to topics It's not a difficult procedure, but when I call terms(x) I see only digits such as terms(x) Topic 1 Topic 2 Topic 3 ...
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Suggestions for processing LDA after K-Means clustering

Hello everyone, I want to generate captions for the given set of images (about 3000). I have so far performed the scale invariant feature transform, and then k-means clustering for ...
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37 views

Using multiword terms (Ngrams) for Topic Modeling with MALLET

I am using MALLET to do topic modeling (using LDA / ParallelTopicModel). I have no trouble producing topics containing single words, but I am now hoping to also include some NGrams. (I am using a ...
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How can I speed up a topic model in R?

Background I am trying to fit a topic model with the following data and specification documents=140 000, words = 3000, and topics = 15. I am using the package topicmodels in R (3.1.2) on a Windows 7 ...
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73 views

How to parallelize topicmodels R package

I have a series of documents (~50,000), that I've transformed into a corpus and have been building LDA objects using the topicmodels package in R. Unfortunately, in order to test more than 150 topics, ...
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How to analysis irregular results by discriminant analysis in R?

I have learnt the use of LDA function in R to analysis regular results like this: (x1&x2 are factors, G is classification) X1 X2 G 2.95 6.63 1 2.53 7.79 1 3.57 5.65 1 3.16 5.47 2 2.16 6.22 2 ...
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101 views

Getting the word-topic-matrix from LDA-model in Mallet

I'm calculating the model-estimation of LDA with Mallet in Java and am looking for the term-topic-matrix. Calculating the model and getting the topic-document-matrix goes well: ParallelTopicModel ...
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57 views

probability document contains topic (R LDA package)

Using R's LDA package, how do I find the probability that a topic is assigned to a given document? The "top.topic.documents" feature lists the most likely documents for each topic. How do I retrieve ...
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80 views

Which iterator should I use to create instances from feature value pairs (Mallet api)?

I am tring to run LDA to generate some topics from txt files as the following one: Document1 label1 forest=3.4 tree=5 wood=2.85 hammer=1 colour=1 leaf=1.5 Document2 label2 forest=10 tree=5 ...
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Is my latent factor model converged under collapsed gibbs sampling?

I designed a LDA-like latent factor model. I solved this model with collapsed gibbs sampling and implemented the learning algorithm with Python. Here is part of learning results. In each iteration, ...
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34 views

Using twitteR LDA - plaintext trouble

I have all the necessary libraries installed (twitter, ROAuth, RCurl, tm, RtextTools, topicmodels, Ida, SnowballC, RWeka, rJava, RWekajars, wordcloud) Changed oilCorpus <- tm_map(oilCorpus, ...
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gensim LdaModel training causes extreme high memory

the following code try to use ~40GB RAM (though I got only 8GB). Any idea why? Is it because I am asking for 1000 topics? all_docs is a list of 220K lists of strings, english_words is a list of all ...
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How to download subset of Amazon CommonCrawel (only the text (WET files?) is needed)

For research purposes, I want a large (~100K) set of web pages, though I am only interested in their text. I plan to use them for gensim LDA topic model. CommonCrawler seems like a good place to ...
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Single document as input to LDA?

We use topic modelling usually on a collection of documents - which makes the input. But what if I only have a single document where I want to see the underlying topics in it? I have heard that you ...
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How to save trainset's distribution on a trained LDA models by gensim?

last parts of the code: lda = models.LdaModel(corpus_tfidf, id2word = dic, num_topics = 64) corpus_lda = lda[corpus_tfidf] I am wondering how to save corpus_lda for further use?
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264 views

Topic Modeling Using Gensim in Python

I have a list of bag of words for two classes. Say n items in class A and m items in class B. I want to use the topic modeling with gensim package (for LDA) in python in order to train a model for ...
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LDA for Topic Modeling in Python

I am new to Python, and I am trying to use the LDA package (https://pypi.python.org/pypi/lda). I have a list of titles and topics each one is related to. However, I have no clue how to use the package ...
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A mistake in installing gensim

I can't install gensim successfully through many ways.For I'm a freshman in coding,it's difficult for me to understand the following information. ...
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Training a LDA model with gensim from some external tf-idf matrix and term list

I have a tf-idf matrix already, with rows for terms and columns for documents. Now I want to train a LDA model with the given terms-documents matrix. The first step seems to be using ...
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should i use tfidf corpus or just corpus to inference documents using LDA?

i am just wondering whether its either TFIDF corpus to be used or just corpus to be used when we are inference documents using LDA in gensim Here is an example from gensim import corpora, models ...
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What is the deference between lda[doc_bow] and lda.inference(corpus)?

In the LDA model these are the two methods to inference the new documents using existing model i think. what are the differences between these two methods ?
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Naming LDA topics in Python

I am new to python and trying to implement topic modelling. I am successful in implementing LDA in pything using gensim , but I am not able to give any label/name to these topics. How do we name ...
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What is the meaning of number behind every word in LDA model topic words?

When we train a model using LDA model we get an outcome of set of common topics which belong too LDA model. Each word in the topic have a number behind it. example topic - 0.004*great + 0.004*good + ...
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174 views

Using Latent Dirichlet Allocation with Gensim

I am working on a project and I would like to use Latent Dirichlet Allocation in order to extract topics from a large amount of articles. My code is this: import gensim import csv import json import ...
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Index Error when running LDA in gensim

I read the docs I have corpusObj.readDocsSample(sampleFile) Next, dictionary = corpusObj.buildDictionary() Then I build a corpus: corpus = corpusObj.buildCorpus() Definition of ...
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132 views

What is estimate function in topic modeling using mallet library

I'm new on topic modeling and I'm trying to use Mallet library but I have a question. I'm using Simple parallel threaded implementation of LDA to find topics for some instances. My question is what ...
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76 views

How to import and use feature vectors in MALLET's topic modelling?

I am using MALLET's topic modelling. I have set of keywords along with weights for a set of documents which I want to train and use the model to infer new documents. Note: each keyword of the ...
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How to add new documents to existing topic model in mallet or batch the model for large document counts

I want to use topic modeling and found MALLET suitable for me. I successfully created my first demo using some 0.1 million Documents.Now as per my requirements i have to deal with 10 million ...
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LDA: about predicting topics for a new document

It's known that the LDA topic modeling learns two matrices of probabilities from data, one is a k x V matrix about P(w|z) values, and the other is a D x k matrix about P(z|d), where k is the number of ...
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EC2 & Rstudio -check if adequate memory available

good evening. I have initialised a Ubuntu / Rstudio AMI on EC2 with 30 GB of RAM Using topicmodels I need to perform 45 LDA models on a corpus of about 300K documents. My script works fine on ...
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Topics and Latent Dirichlet Allocation

Latent Dirichlet Allocation (LDA) is a generative model which produces a list of topics. Each topic is represented by a distribution over words. Assume each topic is represented by its top 40 words. ...