2024
DOI: 10.14778/3675034.3675041
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CohortNet: Empowering Cohort Discovery for Interpretable Healthcare Analytics

Qingpeng Cai,
Kaiping Zheng,
H. V. Jagadish
et al.

Abstract: Cohort studies are of significant importance in the field of healthcare analytics. However, existing methods typically involve manual, labor-intensive, and expert-driven pattern definitions or rely on simplistic clustering techniques that lack medical relevance. Automating cohort studies with interpretable patterns has great potential to facilitate healthcare analytics and data management but remains an unmet need in prior research efforts. In this paper, we present a cohort auto-discovery framework for interp… Show more

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