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2010

ALIDA: Using machine learning for intent discernment in visual analytics interfaces

12 years 11 months ago
ALIDA: Using machine learning for intent discernment in visual analytics interfaces
In this paper, we introduce ALIDA, an Active Learning Intent Discerning Agent for visual analytics interfaces. As users interact with and explore data in a visual analytics environment they are each developing their own unique analytic process. The goal of ALIDA is to observe and record the human-computer interactions and utilize these observations as a means of supporting user exploration; ALIDA does this by using interaction to make decision about user interest. As such, ALIDA is designed to track the decision history (interactions) of a user. This history is then utilized to enhance the user's decision-making process by allowing the user to return to previously visited search states, as well as providing suggestions of other search states that may be of interest based on past exploration modalities. The agent passes these suggestions (or decisions) back to an interactive visualization prototype, and these suggestions are used to guide the user, either by suggesting searches or...
Tera Marie Green, Ross Maciejewski, Steve DiPaola
Added 18 May 2011
Updated 18 May 2011
Type Journal
Year 2010
Where IEEEVAST
Authors Tera Marie Green, Ross Maciejewski, Steve DiPaola
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