GTM

A machine-readable version of this page, created at 2018-09-06T23:50:26.371Z is available CATALOG.json


@idhttps://doi.org/10.4225/59/59e3d6d08faa9
name?GTM
@typeDataset?
description?This demo is the sampling inference for Graph Topic Model, and more details about this model can be found in the following reference: @ARTICLE{7015568, author={J. Xuan and J. Lu and G. Zhang and X. Luo}, journal={IEEE Transactions on Cybernetics}, title={Topic Model for Graph Mining}, year={2015}, volume={45}, A Markov chain Monte Carlo (MCMC) algorithm is developed and implemented to inference the Graph Topic Model (GTM). GTM is a probabilistic graphical model for the data represented by graph structure, e.g., chemical formulas or documents.
datePublished?2018-03-10
creator?
path?.
contact?J. Xuan
citation?Topic Model for Graph Mining
hasPart?
license?GPL 3
publisher?University of Technology Sydney

This file was created at 2018-09-06T23:50:26.381Z by Calcyte which implements the Draft DataCrate Packaging format, version 0.3