LDA {topicmodels} | R Documentation |
Latent Dirichlet Allocation
Description
Estimate a LDA model using for example the VEM algorithm or Gibbs Sampling.
Usage
LDA(x, k, method = "VEM", control = NULL, model = NULL, ...)
Arguments
x |
Object of class |
k |
Integer; number of topics. |
method |
The method to be used for fitting; currently
|
control |
A named list of the control parameters for estimation
or an object of class |
model |
Object of class |
... |
Optional arguments. For |
Details
The C code for LDA from David M. Blei and co-authors is used to estimate and fit a latent dirichlet allocation model with the VEM algorithm. For Gibbs Sampling the C++ code from Xuan-Hieu Phan and co-authors is used.
When Gibbs sampling is used for fitting the model, seed words with their additional weights for the prior parameters can be specified in order to be able to fit seeded topic models.
Value
LDA()
returns an object of class "LDA"
.
Author(s)
Bettina Gruen
References
Blei D.M., Ng A.Y., Jordan M.I. (2003). Latent Dirichlet Allocation. Journal of Machine Learning Research, 3, 993–1022.
Phan X.H., Nguyen L.M., Horguchi S. (2008). Learning to Classify Short and Sparse Text & Web with Hidden Topics from Large-scale Data Collections. In Proceedings of the 17th International World Wide Web Conference (WWW 2008), pages 91–100, Beijing, China.
Lu, B., Ott, M., Cardie, C., Tsou, B.K. (2011). Multi-aspect Sentiment Analysis with Topic Models. In Proceedings of the 2011 IEEE 11th International Conference on Data Mining Workshops, pages 81–88.
See Also
Examples
data("AssociatedPress", package = "topicmodels")
lda <- LDA(AssociatedPress[1:20,], control = list(alpha = 0.1), k = 2)
lda_inf <- posterior(lda, AssociatedPress[21:30,])