Never-ending Learning of User Interfaces

要旨

Machine learning models have been trained to predict semantic information about user interfaces (UIs) to make apps more accessible, easier to test, and to automate. Currently, most models rely on datasets that are collected and labeled by human crowd-workers, a process that is costly and surprisingly error-prone for certain tasks. For example, it is possible to guess if a UI element is “tappable” from a screenshot (i.e., based on visual signifiers) or from potentially unreliable metadata (e.g., a view hierarchy), but one way to know for certain is to programmatically tap the UI element and observe the effects. We built the Never-ending UI Learner, an app crawler that automatically installs real apps from a mobile app store and crawls them to discover new and challenging training examples to learn from. The Never-ending UI Learner has crawled for more than 5,000 device-hours, performing over half a million actions on 6,000 apps to train three computer vision models for i) tappability prediction, ii) draggability prediction, and iii) screen similarity.

著者
Jason Wu
Carnegie Mellon University, Pittsburgh, Pennsylvania, United States
Rebecca Krosnick
University of Michigan, Ann Arbor, Michigan, United States
Eldon Schoop
Apple, Seattle, Washington, United States
Amanda Swearngin
Apple, Seattle, Washington, United States
Jeffrey P. Bigham
Apple, Pittsburgh, Pennsylvania, United States
Jeffrey Nichols
Apple Inc, San Diego, California, United States
論文URL

https://doi.org/10.1145/3586183.3606824

動画

会議: UIST 2023

ACM Symposium on User Interface Software and Technology

セッション: Interface Evolution: Learning, Adaptation, Customisation

Gold Room
7 件の発表
2023-11-01 23:10:00
2023-11-02 00:50:00