Tempo: Helping Data Scientists and Domain Experts Collaboratively Specify Predictive Modeling Tasks

Picture of Anika Vaishampayan
Anika Vaishampayan
Picture of Xiaotong Li
Xiaotong Li
Picture of Brian R Buck
Brian R Buck
Picture of Ziyong Ma
Ziyong Ma
Picture of Richard D Boyce
Richard D Boyce
Published at CHI | Yokohama, Japan 2025
Teaser image

Abstract

Temporal predictive models have the potential to improve decisions in health care, public services, and other domains, yet they often fail to effectively support decision-makers. Prior literature shows that many misalignments between model behavior and decision-makers' expectations stem from issues of model specification, namely how, when, and for whom predictions are made. However, model specifications for predictive tasks are highly technical and difficult for non-data-scientist stakeholders to interpret and critique. To address this challenge we developed Tempo, an interactive system that helps data scientists and domain experts collaboratively iterate on model specifications. Using Tempo's simple yet precise temporal query language, data scientists can quickly prototype specifications with greater transparency about pre-processing choices. Moreover, domain experts can assess performance within data subgroups to validate that models behave as expected. Through three case studies, we demonstrate how Tempo helps multidisciplinary teams quickly prune infeasible specifications and identify more promising directions to explore.

Materials