Bayesian-Assisted Inference from Visualized Data

08/01/2020
by   Yea-Seul Kim, et al.
0

A Bayesian view of data interpretation suggests that a visualization user should update their existing beliefs about a parameter's value in accordance with the amount of information about the parameter value captured by the new observations. Extending recent work applying Bayesian models to understand and evaluate belief updating from visualizations, we show how the predictions of Bayesian inference can be used to guide more rational belief updating. We design a Bayesian inference-assisted uncertainty analogy that numerically relates uncertainty in observed data to the user's subjective uncertainty, and a posterior visualization that prescribes how a user should update their beliefs given their prior beliefs and the observed data. In a pre-registered experiment on 4,800 people, we find that when a newly observed data sample is relatively small (N=158), both techniques reliably improve people's Bayesian updating on average compared to the current best practice of visualizing uncertainty in the observed data. For large data samples (N=5208), where people's updated beliefs tend to deviate more strongly from the prescriptions of a Bayesian model, we find evidence that the effectiveness of the two forms of Bayesian assistance may depend on people's proclivity toward trusting the source of the data. We discuss how our results provide insight into individual processes of belief updating and subjective uncertainty, and how understanding these aspects of interpretation paves the way for more sophisticated interactive visualizations for analysis and communication.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/31/2020

A Bayesian cognition approach for belief updating of correlation judgement through uncertainty visualizations

Understanding correlation judgement is important to designing effective ...
research
01/09/2019

A Bayesian Cognition Approach to Improve Data Visualization

People naturally bring their prior beliefs to bear on how they interpret...
research
12/24/2019

The Temporal Dynamics of Belief-based Updating of Epistemic Trust: Light at the End of the Tunnel?

We start with the distinction of outcome- and belief-based Bayesian mode...
research
01/29/2023

Visual Belief Elicitation Reduces the Incidence of False Discovery

Visualization supports exploratory data analysis (EDA), but EDA frequent...
research
02/26/2018

Principles of Bayesian Inference using General Divergence Criteria

When it is acknowledged that all candidate parameterised statistical mod...
research
12/09/2017

Bayesian Q-learning with Assumed Density Filtering

While off-policy temporal difference methods have been broadly used in r...
research
05/08/2014

A Computational Theory of Subjective Probability

In this article we demonstrate how algorithmic probability theory is app...

Please sign up or login with your details

Forgot password? Click here to reset