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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How to compute document novelty

I have large set of incoming documents and would like to perform following in python. Find novelty of a document Whether document or similar document has been seen in last n days If document has ...
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19 views

Apache spark mlib lda java create word/document frequencies list

I'm using apache spark's mlib version 1.4.0 to perform a latent dirichelet analysis on a text document in which each line represents a tweet. Taking the example from the project I discovered that I ...
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How Perplexity measured effectiveness of topic modeling?

I am confusing about Perplexity, who can explain me How Perplexity measured effectiveness of Topic modeling by an example? (perceptible and easy to understand) for example suppose we have phi and ...
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9 views

MALLET Topic Modeling: Inconsistent Estimations

I'm using MALLET to train a ParallelTopicModel. After training, I get a TopicInferencer, take a sentence, run it through the inferencer 15 times, and check the results. I'm finding that for some ...
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19 views

Algorithms for Face Verification

If you look at face recognition, the task is quite often described w.r.t. following setting: You have a set of face images. Given a query image, identify the face on the query image among the set, ...
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31 views

How can I perform LDA (latent Dirichlet allocation) on Noun Phrases in R instead of words?

I want to generate topics from my text at the level of phrases, rather than at the level of words using LDA (latent Dirichlet allocation). How can I do that in R? LDA interprets the documents as ...
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43 views

How to match ngrams for each document in Spark LDA code

I am working with the sample code for LDA in spark given in https://gist.github.com/jkbradley/ab8ae22a8282b2c8ce33 I have a corpus file, where each line is a document, which I have read using val ...
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58 views

LDA cross validation and variable selection

I have a data frame with 395 observations and 36 variables. I am doing cross validation to select the best few variables to classify the student qualifications. I have written this code: k<-5 ...
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11 views

Implementation LDA with gibbsLDAsharp

I'm currently trying to create an application to do some text processing to read in a text file, and process it with LDA using gibss sampler to see the topic proportion and topic probability with the ...
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29 views

R: Where can I see the LDA classification function?

I am currently going through the book, "statistics and chemometrics for analytical chemistry 6th ed", and I am trying to do the examples available in the book with R. I am pretty new to R so feel ...
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15 views

Create hierarchical relations between a set of terms

I need to form hierarchical relations between a set of terms(which may be entities, nouns,etc) by mining the web. This is along the lines of a taxonomy, However I need to be able to link Proper ...
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22 views

Manually Specifying a Topic Model in R

I have a corpus of text with each line in the csv file uniquely specifying a "topic" I am interested in. If I were to run an topic model on this corpus using an LDA or Gibbs method from either the ...
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LDA Results Errors

So, I am relatively new using Gensim and LDA in general. The problem right now is that when I run LDA on my corpus, the topics' tokens' weights are all 0: 2015-06-15 12:21:12,439 : INFO : topic ...
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35 views

How to find the number of documents (and fraction) per topic using LDA?

I am trying to extract topic from 7 millons of Twitter data. I have assumed each tweet as a document. So, I stored all tweets in a file where each line (or tweet) treated as a document. I used this ...
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19 views

Fitting LDA to corpus in LDA-C format in gensim

I'm trying to fit an LDA to a corpus in LDA-C format. I've got it working for a HDP model but I can't seem to make it work for LDA in gensim. I'm looking to get the topic probability vector for each ...
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29 views

LDA with tm package in R using bigrams

I have a csv with every row as a document. I need to perform LDA upon this. I have the following code : library(tm) library(SnowballC) library(topicmodels) library(RWeka) X = ...
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21 views

Strange behaviour with Non-Linear SVM Kernels

I am using a SVM (Support Vector Machine) for classification in a BCI oddball-P300 problem, which tries to identify which cell of a matrix is mentally-selected when a specific number of iluminations ...
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20 views

Do I need to transform unseen documents before projecting them onto model topics?

So I have a general bow corpus that I have created that yields documents per the format that gensim requires (see here.) However those documents have a lot of words that are used extremely often. So ...
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21 views

LDAvis HTML output from serVis is blank

I'm trying to use LDAvis for the first time, but have run into the following issue: After running serVis on my JSON object, serVis(json, out.dir = 'LDAvis', open.browser = FALSE) the 5 expected ...
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10 views

Python Gensim LDA running time aberration

So, to test the increase in the running time of the LDA (Latent Dirichlet Allocation) algorithm with increase in the number of topics (N) to be inferred, I got the following results - NIPS full ...
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32 views

LDA generated topics

so I am relatively new working with gensim and LDA, started about two weeks ago and I am having trouble trusting these results. The following are the topics produced by using 11 1-paragraph documents. ...
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Mahout CVB performance

I am running Mahout's implementation of LDA on a Hadoop cluster of 8 nodes, each with 4 cores and 8GB of RAM. (8 A3 nodes on Azure actually). My dataset is composed of 3.5M documents (~ 7GB, ~130 ...
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63 views

Scalability of simple algorithms

I wish to test the scalability of two implementations of an algorithm (Latent Dirichlet Allocation) in Python - gensim and lda . Most of the google search results talk about scalability of websites ...
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33 views

How to plot classification borders on an Linear Discrimination Analysis plot in R

I have used a linear discriminant analysis (LDA) to investigate how well a set of variables discriminates between 3 groups. I then used the plot.lda() function to plot my data on the two linear ...
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Topic stability in LDA models

My major is bioinformatics and I want to use LDA (Latent Dirichlet Allocation) to explain histone code of a lot of genes. I used the LDA model in my project, when I re-run my topic models with a ...
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27 views

Latent Dirichlet Allocation using Gensim on more than one corpus

I have two questions related to the usage of gensim for LDA. 1) How can I create a model using one corpus, save it and perhaps extend it later on another corpus by training the model on it ? Is it ...
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54 views

Analyse new data based on Spark 1.3 LDA topic modeling result

I could analyse Latent Dirichlet allocation (LDA) topic modeling for a set text data based on Spark 1.3. Spark 1.3 MLLib clustering This topic modeling is based on whole text data. If I have more ...
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65 views

Visualizing an LDA model, using Python

I have a LDA model with the 10 most common topics in 10K documents. Now it's just an overview of the words with corresponding probability distribution for each topic. I was wondering if there is ...
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26 views

How to plot log.likelihoods for each iteration in R using LDA package?

My problem is that I want to plot the log.likelihoods gathered from LDA execution in R using the LDA package. My code is: K <- 10 ## Num clusters result <- ...
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54 views

bag-of-words approach / tools / library for C++?

I have a folder that contains many document in .txt of tourism reviews. I want to use the bag of words approach to convert them to some kind of numeric representation for machine learning (Latent ...
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65 views

LDA with Python - input files

I'm running the lda library in Python and I am running this example. Does anyone know the format of X, vocab and titles? I can't find the documentation. import numpy as np import lda X = ...
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R lda.collapsed.gibbs.sampler automating finding optimal parameters

I am using the lda.collapsed.gibbs.sampler from R LDA package for extracting topics from documents. Currently I asses the choices for alpha and eta just by looking at the output and deciding whether ...
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topic model: how to adjust alpha and number of topics according to the document size and number of documents

I am using LDA topic model to do classification and need to adjust parameter alpha and number of topics. I have different groups of documents. For different group, the document sizes are different ...
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what are the best practices for LDA parameters?

I have many documents (let's sat 5000) and I would like to extract some topics from them using tha cvb (LDA) in Mahout. It has many different parameters, starting from the number of latent topics ...
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Does JGibbLDA take into account the term frequencies from the input training data file, in order to get the phi and theta matrices?

My input to JGibbLDA would be for example, 4 Cell Differentiation, Process, Cell Growth, DNA Integration, ENG wt Allele factor, Streptomyces, Cell growth Root Canal Sealer Base Sequence Binding, Bulk ...
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IndexError: index 0 is out of bounds for axis 0 with size 0 when using lda package in python

I tried using the lda 1.0.2 package in python 3. Attaching my code snippet. Trials: I am not creating a separate dictionary, so not sure why I am hitting this error. (most of the links suggested a ...
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R lda collapsedGibbsSampler throws error “REAL() can only be applied to a 'numeric', not a 'NULL'”

I'm trying to execute lda.collapsed.gibbs.sampler() with initial assignments results = lda.collapsed.gibbs.sampler(documents, K, to.keep, num.iterations, alpha, eta, initial=initial_assignments, ...
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How to select a subset of a DocumentTermMatrix (creation in tm) by individuals' gender

How can I select two subsets of a DocumentTermMatrix (creation in tm) by individuals' gender? --Terms adopted from 1,000 reviews (a review by each individual). I have interest in running two LDA ...
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40 views

Bad argument in LDA constructor call in face recognition using LDA with SIFT

I am trying to implement face recognition using LDA with SIFT. I have an existing code of PCA with SIFT that uses SIFT to determine the keypoints and extract the descriptors and PCA to project those ...
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67 views

What is the difference between models.ldamodel.LdaModel and models.LdaModel?

What is the difference between gensim.models.ldamodel.LdaModel(...) and gensim.models.LdaModel(...)? The docs use gensim.models.ldamodel.LdaModel(...). However, many people seem to use ...
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89 views

Converting Python to Scala-Spark

I have a Python code that i want to convert it to Scala-Spark , my algorithm is an extension of LDA(Latent Dirichlet Allocation) because of this algorithm has a sampling process which is very time ...
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121 views

What's the disadvantage of LDA for short texts?

I am trying to understand why Latent Dirichlet Allocation(LDA) performs poorly in short text environments like Twitter. I've read A biterm topic model for short text, however, I still do not ...
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How the Latent Dirichlet Allocation (LDA) algorithm work in Hadoop?

I wonder if someone could briefly explain me the details of the LDA algorithm in Mahout. How the TF-IDF vector is used and what happens in each iteration. I need to understand the memory requirement ...
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39 views

LDA Gensim Word -> Topic Ids Distribution instead of Topic -> Word Distribution

i am trying to implement Topic Tiling algorithm on my trained lda model. For the algorithm I need all of the IDs that are assigned to a single word in an unseen document. I will then calculate the ...
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34 views

How to extract keywords from lots of documents?

I have many documents, over ten thousands (maybe more). I'd like to extract some keywords from each document, let's say 5 keywords from each document, using hadoop. Each document may talk about a ...
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48 views

Semi - supervised LDA (Latent Dirichlet Allocation) using seed words

I wan to use semi-supervised LDA (Latent Dirichlet Allocation). I have several fixed topics, and have seed documents that relate to these topics. I can even prepare some seed words. I'd like to run ...
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77 views

Error when running LDA on Tweets using gensim in Python

I have the following code, to run an LDA analysis on Tweets: import logging, gensim, bz2 logging.basicConfig(format='%(asctime)s : %(levelname)s : %(message)s', level=logging.INFO) # load ...
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53 views

Tweet analysis, Python error when making dictionary for LDA

I've downloaded Tweets about Amsterdam, in UTF-8 using the Twitter API for python. Now i'm trying to make a dictionary for LDA, using this code (just a part of the code, but this is the part that ...
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207 views

Assessing/Improving prediction with linear discriminant analysis or logistic regression

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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57 views

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 ...