Effective End-User Interaction with Machine Learning
Amershi, Saleema (University of Washington) | Fogarty, James (University of Washington) | Kapoor, Ashish (Microsoft Research) | Tan, Desney (Microsoft Research)
End-user interactive machine learning is a promising tool for enhancing human productivity and capabilities with large unstructured data sets. Recent work has shown that we can create end-user interactive machine learning systems for specific applications. However, we still lack a generalized understanding of how to design effective end-user interaction with interactive machine learning systems. This work presents three explorations in designing for effective end-user interaction with machine learning in CueFlik, a system developed to support Web image search. These explorations demonstrate that interactions designed to balance the needs of end-users and machine learning algorithms can significantly improve the effectiveness of end-user interactive machine learning.
Aug-4-2011
- Country:
- North America > United States > Washington > King County > Seattle (0.14)
- Genre:
- Research Report > New Finding (0.47)
- Technology: