Presentation

User Interfaces for High-Dimensional Design Problems: From Theories to Implementations
Level Intermediate
SessionCourses
Event Type
Course
Keywords
Artificial Intelligence/Machine Learning
Education
Pipeline
Interest Areas
Gaming & Interactive
New Technologies
Research & Education
Registration Levels
Ultimate Supporter
Ultimate Attendee
Exhibitor Ultimate
Time
Location
DescriptionWe introduce techniques based on Bayesian optimization (BO) and differential subspace search (DSS) for building tractable user interfaces for design problems involving a large number of parameters. BO and DSS serve to extract much lower-dimensional yet meaningful subspaces that can be effectively used to create slider or gallery interfaces.
Prerequisites The audience is expected to have a basic understanding of linear algebra, calculus, and statistics.
Intended Audience Developers of design tools for general problems, including image editing, shape editing, motion editing, and sound editing. Developers of design tools using generative models from deep learning. Researchers in the topics related to user interfaces, machine learning, statistics, etc.