Cognitive Biases in Decision-Making under Uncertainty with Interactive Data Visualizations

Doctoral Candidate Name: 
Ryan Wesslen
Program: 
Computing and Information Systems
Abstract: 

In this thesis, we hypothesize that data visualization users are subject to systematic errors, or cognitive biases, in decision-making under uncertainty. Based on research from psychology, behavioral economics, and cognitive science, we design five experiments to measure the role of anchoring bias, confirmation bias, and myopic loss aversion under different uncertain decision tasks like social media event detection, misinformation identification, and financial portfolio allocation. This thesis makes three major contributions. First, we find evidence of cognitive biases in data visualization through multiple behavioral trace data including user decisions, interactions logs (hovers, clicks), qualitative feedback, and belief elicitation techniques. Second, we design five digital experiments with interactive data visualization systems across different design complexities (coordinated multiple views to single plot) and data types (social network, linguistic, geospatial, temporal, statistical) and evaluate them on user populations that range from novice to expert (crowdsourced, undergraduate, data scientist, domain expert). Third, we evaluate the experiments using statistical, probabilistic, and machine learning techniques to measure the effects of cognitive biases with mixed effects modeling, hierarchical clustering, natural language processing, and Bayesian cognitive modeling. These experiments show the promising role data visualizations and human-computer techniques could remediate such biases and lead to better decision-making under uncertainty.

Defense Date and Time: 
Friday, July 23, 2021 - 3:00pm
Defense Location: 
Zoom
Committee Chair's Name: 
Dr. Wenwen Dou
Committee Members: 
Dr. Jean-Claude Thill, Dr. Isaac Cho, Dr. Samira Shaikh, Dr. Douglas Markant