Guided Data Discovery in Interactive Visualizations via Active Search

Shayan Monadjemi, Sunwoo Ha, Quan Nguyen, Henry Chai, Roman Garnett, Alvitta Ottley

View presentation:2022-10-19T21:30:00ZGMT-0600Change your timezone on the schedule page
2022-10-19T21:30:00Z
Exemplar figure, described by caption below
Recent advances in visual analytics have enabled us to learn from user interactions and uncover analytic goals. These innovations set the foundation for actively guiding users during data exploration which become more critical as datasets grow in size and complexity. We will consider how the active search algorithm can learn from user interactions and guide them during data exploration and discovery.

Prerecorded Talk

The live footage of the talk, including the Q&A, can be viewed on the session page, Visual Analytics, Decision Support, and Machine Learning.

Fast forward
Keywords

visual analytics, empirical studies in visualization, active learning settings

Abstract

Recent advances in visual analytics have enabled us to learn from user interactions and uncover analytic goals. These innovations set the foundation for actively guiding users during data exploration. Providing such guidance will become more critical as datasets grow in size and complexity, precluding exhaustive investigation. Meanwhile, the machine learning community also struggles with datasets growing in size and complexity, precluding exhaustive labeling. Active learning is a broad family of algorithms developed for actively guiding models during training. We will consider the intersection of these analogous research thrusts. First, we discuss the nuances of matching the choice of an active learning algorithm to the task at hand. This is critical for performance, a fact we demonstrate in a simulation study. We then present results of a user study for the particular task of data discovery guided by an active learning algorithm specifically designed for this task.