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

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3k 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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2answers
256 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 ...
2
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1answer
222 views

Dirichlet process in PyMC 3

I would like to implement to implement the Dirichlet process example referenced in Implementing Dirichlet processes for Bayesian semi-parametric models (source: here) in PyMC 3. In the example the ...
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1answer
36 views

Dirichlet boundary condition for Green function convolution in Fourier domain

I am currently working on the heat diffusion equation in 3D in python. I am resolving the heat diffusion equation with the convolution of the Green function of this equation with a source equation, ...
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0answers
46 views

JAGS - unable to find appropriate sampler

I am trying to develop a hierarchical Dirichlet-multinomial process hidden Markov model in JAGS to estimate multiparty, primary voting intention based on opinion poll results. I also use the primary ...
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0answers
47 views

Optimal dictionary size for Gensim online HDP

I want to use Gensim to cluster approximately 1 million paragraphs by topic via online HDP. I have two questions regarding the sensitivity of topic model “fit” to the choice of dictionary size: 1) ...
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0answers
22 views

Python package :MLE for Dirichlet distribution

I was wondering if someone knew about a python package that implements MLE to estimate parameters of a Dirichlet distribution.
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78 views

How to specify a Dirichlet distribution?

I am learning the Dirichlet distribution using R. I want to model a case where a number of participants answer a uniform set of questions. Prior information is then fed to a MCMC simulation. My ...
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1answer
85 views

Normalizing constant of mixture of dirichlet distribution goes unbounded

I need to calculate PDFs of mixture of Dirichlet distribution in python. But for each mixture component there is the normalizing constant, which is the inverse beta function which has gamma function ...
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0answers
106 views

d'Hondt method inverse calculator

I've found this code from Carlos Gil Bellosta for seats distribution in electoral systems with d'Hondt method. # d'Hondt scores and counts dHondt <- function(candidates, votes, seats){ tmp ...
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1answer
85 views

rdirichlet distribution isn't working in R

I am attempting to run some code I wrote over a year ago and for some reason it is not working this time. Previously I had the matrix variables alpha and prob typed into R. However this time I am ...
0
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1answer
89 views

DPGMM Clustering All Values into Single Cluster

So I have converted my corpus into a nice word2vec matrix. This matrix is a floating point matrix of with negative & positive numbers. I can't seem to get the infinite dirichlet process to give ...
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0answers
114 views

AnyLogic: Implementation of a Dirichlet distribution?

all: Anyone know of a way to implement draws from a Dirichlet distribution in AnyLogic? I have three inter-related probabilities, such that p1 + p2 + p3 = 1, and I want to draw values for each of ...
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123 views

PyMC3 Dirichlet distribution

I am implementing a linear regression model in pymc3 where the unknown vector of weights is constrained to be a probability mass function, hence modelled as a Dirichlet distribution, as in the ...
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0answers
22 views

Dirichlet Distribution unit testing

Does anyone has reliable data that I could use to write some unit tests for a new implementation of the Dirichlet distribution?
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1answer
843 views

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 ...
4
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0answers
151 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 ...
0
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1answer
121 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
35 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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0answers
149 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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2answers
945 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 ...
0
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2answers
200 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 ...
2
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1answer
476 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 ...
0
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1answer
441 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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0answers
80 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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4answers
2k views

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
325 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 ...
2
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1answer
674 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, ...
3
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1answer
1k 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 ...
0
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2answers
396 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 ...
4
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1answer
1k views

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 ...