Applying Pragmatics Principles for Interaction with Visual Analytics
IEEE Conference on Visual Analytics Science and Technology (VAST), Phoenix, Arizona, USA, October 1-6, 2017
Interactive visual data analysis is most productive when users can focus on answering the questions they have about their data, rather than focusing on how to operate the interface to the analysis tool. One viable approach to engaging users in interactive conversations with their data is a natural language interface to visualizations. These interfaces have the potential to be both more expressive and more accessible than other interaction paradigms. We explore how principles from language pragmatics can be applied to the flow of visual analytical conversations, using natural language as an input modality. We evaluate the effectiveness of pragmatics support in our system Evizeon, and present design considerations for conversation interfaces to visual analytics tools.
Tableau 作者
作者
Enamul Hoque, Isaac Dykeman