The Dirichlet distribution is a family of continuous multivariate probability distributions.

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Dirichlet-Multinomial WinBUGS code

So I'm trying to code a dirichlet-multinomial model using BUGS. Basically I have 18 regions and 3 categories per region. In example, Region 1: 0.50 belongs to Low, 0.30 belongs to Middle, and 0.20 ...
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43 views

cdf for Dirichlet distribution [closed]

I want to run an estimation assuming that my variables are distributed according to the Dirichlet distribution. To do so, I need to use the cdf function. For all the distributions in R, there are the ...
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1answer
16 views

logp for dirichlet stochastic variable in pymc is coming out to be > 1

As far as I understand, logp should b2 <= 0, else the probability will be > 1 (which is not possible). Can someone please explain why I am getting such a strange result. I am writing the relevant ...
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18 views

Dirichlet Distribution in PyMC

Can someone please explain working with a Dirichlet distribution in PyMC (with a working example) ? I realize it is trivial but I am not able to find trace of all the components. Is there any way out ...
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26 views

KeyError while printing trace in PyMC

I had read that by default some names are assigned to Stochastic vaiables. I am writing the relevant portion of my code below. lam = pm.Uniform('lam', lower=0.0, upper=5, doc='lam') parameters = ...
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1answer
49 views

LDA Topic Models package

Fellows, I am beginner in topic modeling. I am using topic models package in R. The function call is LDA(data, k). I want to know what alpha and beta values are used? Also, which inference algorithm ...
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2answers
206 views

How to make Conditional Probability Tables (CPTs) for Bayesian networks with pymc

I would like to build a Bayesian network of discrete (pymc.Categorical) variables that are dependent on other categorical variables. As a simplest example, suppose variables a and b are categorical ...
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2answers
118 views

How could we know the Dirichlet distribution is describing the topic rather than something else?

Dirichlet distribution is used in document modelling. I read from this article that: Different Dirichlet distributions can be used to model documents by different authors or documents on ...
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Hypothesis testing based on Dirichlet distribution

Suppose I have K categories and I have 1000 of probability vector observations so that my data forms a matrix 1000xK where each row sums up to one. My null hypothesis is that this data comes form a ...
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1answer
601 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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1answer
202 views

Plot not showing up in R

How can I fix the following code alpha <- 1 draws <- 15 dimen <- 10 require(MCMCpack) x <- rdirichlet(draws, rep(alpha, dimen)) require(ggplot2) dat <- ...
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43 views

How to build a dictionary for LDA

I've been working on Latent Dirchlet Allocation for 2 weeks and I'm trying to build a dictionary and a train file to try it. I've already tried it with Matlab and gcc by using the Blei's train file, ...
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212 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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156 views

pseudo-random numbers with Dirichlet distribution C++ and C

I heard that I can use The GNU Scientific Library (GSL) to generate pseudo-random numbers with Dirichlet distribution. How can I do so?
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1answer
250 views

MatLab BayesNetToolbox parameter learning

My question is specific to the "learn_params()" function of the BayesNetToolbox in MatLab. In the user manual, "learn_params()" is stated to be suitable for use only if the input data is fully ...
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1answer
763 views

LDA and topic model

I have studied LDA and Topic model for several weeks.But due to my poor mathematics ability, i can not fully understand its inner algorithms.I have used the GibbsLDA implementation, input a lot of ...
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1answer
602 views

Determine the document ID on Mahout LDA Output

I've successfully ran mahout lda, and displayed the ouput using the command mahout ldatopics. For example my topics are science and sports. then the output will be like: topic 0 basketball, play, ...
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345 views

Mass Point, Dirac Delta in Dirichlet Processes

When dealing with Dirichlet Processes, according to [Teh, 2007], a DP is defined as by a base Probability H and a scale factor "alpha" According to the Stick Breaking Construction, the random draws G ...
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Document similarity [closed]

I used tf/idf to calculate consine similarity between two documents. It has some limitation and does not perform very well. I looked for LDA (latent dirichlet allocation) to calculate document ...
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1answer
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Is there an R package for learning a Dirichlet prior from counts data

I'm looking for a an R package which can be used to train a Dirichlet prior from counts data. I'm asking for a colleague who's using R, and don't use it myself, so I'm not too sure how to look for ...