Jeffrey Heer, Adam Perer
VAST 2011
Understanding predictive models, in terms of interpreting and identifying actionable insights, is a challenging task. Often the importance of a feature in a model is only a rough estimate condensed into one number. However, our research goes beyond these naïve estimates through the design and implementation of an interactive visual analytics system, Prospector. By providing interactive partial dependence diagnostics, data scientists can understand how features affect the prediction overall. In addition, our support for localized inspection allows data scientists to understand how and why specific datapoints are predicted as they are, as well as support for tweaking feature values and seeing how the prediction responds. Our system is then evaluated using a case study involving a team of data scientists improving predictive models for detecting the onset of diabetes from electronic medical records.
Jeffrey Heer, Adam Perer
VAST 2011
Jacqueline S. Dron, Minxian Wang, et al.
Circulation: Genomic and Precision Medicine
Kristen A. Severson, Soumya Ghosh, et al.
AAAI 2019
Akl C. Fahed, Minxian Wang, et al.
Nature Communications