Advancing Visual Specification of Code Requirements for Graphs
- URL: http://arxiv.org/abs/2007.14958v1
- Date: Wed, 29 Jul 2020 17:01:53 GMT
- Title: Advancing Visual Specification of Code Requirements for Graphs
- Authors: Dewi Yokelson
- Abstract summary: This paper focuses on producing meaningful visualizations of data using machine learning.
We allow the user to visually specify their code requirements in order to lower the barrier for humanities researchers to learn how to program visualizations.
We use a hybrid model, combining a neural network and optical character recognition to generate the code to create the visualization.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Researchers in the humanities are among the many who are now exploring the
world of big data. They have begun to use programming languages like Python or
R and their corresponding libraries to manipulate large data sets and discover
brand new insights. One of the major hurdles that still exists is incorporating
visualizations of this data into their projects. Visualization libraries can be
difficult to learn how to use, even for those with formal training. Yet these
visualizations are crucial for recognizing themes and communicating results to
not only other researchers, but also the general public. This paper focuses on
producing meaningful visualizations of data using machine learning. We allow
the user to visually specify their code requirements in order to lower the
barrier for humanities researchers to learn how to program visualizations. We
use a hybrid model, combining a neural network and optical character
recognition to generate the code to create the visualization.
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