Pan
Sam Hepenstal, Leishi Zhang, Neesha Kodagoda, B. L. William Wong
Abstract
We present an early prototype conversational agent (CA), called Pan, for retrieving information to support criminal investigations. Our approach tackles the issue of algorithmic transparency, which is critical in unpredictable, high risk, and high consequence domains. We present a novel method to flexibly model CA intentions and provide transparency of attributes that is underpinned with human recognition. We propose that Pan can be used for experimentation to probe analyst requirements and to evaluate the effectiveness of our explanation structure.
Topics & Concepts
Transparency (behavior)Computer scienceHuman–computer interactionArtificial intelligenceData scienceComputer securityTopic ModelingExplainable Artificial Intelligence (XAI)Ethics and Social Impacts of AI