On Bi-gram Graph Attributes
Machine Learning
2021-07-30 v1
Abstract
We propose a new approach to text semantic analysis and general corpus analysis using, as termed in this article, a "bi-gram graph" representation of a corpus. The different attributes derived from graph theory are measured and analyzed as unique insights or against other corpus graphs. We observe a vast domain of tools and algorithms that can be developed on top of the graph representation; creating such a graph proves to be computationally cheap, and much of the heavy lifting is achieved via basic graph calculations. Furthermore, we showcase the different use-cases for the bi-gram graphs and how scalable it proves to be when dealing with large datasets.
Cite
@article{arxiv.2107.02128,
title = {On Bi-gram Graph Attributes},
author = {Thomas Konstantinovsky and Matan Mizrachi},
journal= {arXiv preprint arXiv:2107.02128},
year = {2021}
}
Comments
7 pages,8 figures