pyLDAvis is a python library for interactive topic model visualization. It is a port of the fabulous R package by Carson Sievert and Kenny Shirley. They did the hard work of crafting an effective visualization. pyLDAvis makes it easy to use the visualiziation from Python and, in particular, Jupyter notebooks.
To learn more about the method behind the visualization, it is possible to read the original paper explaining it.
This notebook provides a quick overview of how to use pyLDAvis.
A iPython notebook that introduces how to use the topicmodels module for implementing Latent Dirichlet Allocation using the collapsed Gibbs sampling algorithm of Griffiths and Steyvers (2004). The module contains three classes: one for processing raw text, another for implementing LDA, and another for querying. This tutorial will go through the main features of each, for full details see the documented source code.