VizAI : Selecting Accurate Visualizations of Numerical Data
- URL: http://arxiv.org/abs/2111.04190v1
- Date: Sun, 7 Nov 2021 22:05:44 GMT
- Title: VizAI : Selecting Accurate Visualizations of Numerical Data
- Authors: Ritvik Vij and Rohit Raj and Madhur Singhal and Manish Tanwar and
Srikanta Bedathur
- Abstract summary: VizAI is a generative-discriminative framework that first generates various statistical properties of the data.
It is linked to a discriminative model that selects the visualization that best matches the true statistics of the data being visualized.
VizAI can easily be trained with minimal supervision and adapts to settings with varying degrees of supervision easily.
- Score: 2.6039035727217907
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A good data visualization is not only a distortion-free graphical
representation of data but also a way to reveal underlying statistical
properties of the data. Despite its common use across various stages of data
analysis, selecting a good visualization often is a manual process involving
many iterations. Recently there has been interest in reducing this effort by
developing models that can recommend visualizations, but they are of limited
use since they require large training samples (data and visualization pairs)
and focus primarily on the design aspects rather than on assessing the
effectiveness of the selected visualization.
In this paper, we present VizAI, a generative-discriminative framework that
first generates various statistical properties of the data from a number of
alternative visualizations of the data. It is linked to a discriminative model
that selects the visualization that best matches the true statistics of the
data being visualized. VizAI can easily be trained with minimal supervision and
adapts to settings with varying degrees of supervision easily. Using
crowd-sourced judgements and a large repository of publicly available
visualizations, we demonstrate that VizAI outperforms the state of the art
methods that learn to recommend visualizations.
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