topic-model-lecture-note

Topic modeling notes

Lecture notes on probabilistic topic models using IPython Notebook

lecture notes for probabilistic topic models using ipython notebook

GitHub

22 stars
5 watching
18 forks
last commit: almost 10 years ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
dongwookim-ml/python-topic-model An implementation of various topic modeling algorithms in Python 369
nlpai-lab/kullm Korea University Large Language Model developed by researchers at Korea University and HIAI Research Institute. 569
km1994/llmsninestorydemontower Exploring various LLMs and their applications in natural language processing and related areas 1,798
ogrisel/notebooks A collection of incomplete machine learning experiments in Jupyter Notebooks 565
alphasmartdog/deeplearningnotes A collection of deep learning models and notes from the author's studies on machine learning and quantitative analysis. 366
trinker/topicmodels_learning A repository of resources and tools for learning and applying topic models in R 228
slycoder/topicmodels.jl Software package implementing Bayesian topic modeling in Julia using Latent Dirichlet Allocation (LDA) model 38
langboat/mengzi Develops lightweight yet powerful pre-trained models for natural language processing tasks 534
babel/notes Documents meeting discussions and notes from the Babel team 122
primaryobjects/lda A JavaScript library that uses Latent Dirichlet allocation to model topics in text data 291
yongzhuo/chatglm-maths Develops and fine-tunes a math-based conversational AI model for generating solutions to arithmetic operations 163
aar0ntw/jsdc2014-notes Notes on JavaScript conference talks from 2014 18
ogrisel/parallel_ml_tutorial A tutorial on parallel machine learning with scikit-learn and IPython 1,592
turkunlp/wikibert Provides pre-trained language models derived from Wikipedia texts for natural language processing tasks 34
josephmisiti/machine-learning-module A collection of machine learning tutorials and lectures from Professor M. A. Girolami's 2006 course. 465