Dead-end Discovery: How offline reinforcement learning could assist healthcare decision-makers
- Mehdi Fatemi, Microsoft
Microsoft Research Senior Researcher Mehdi Fatemi, MIT Assistant Professor Marzyeh Ghassemi, and PhD student Taylor W. Killian answer several questions about their NeurIPS 2021 paper, “Medical Dead-ends and Learning to Identify High-risk States and Treatments.” They discuss how their research in offline reinforcement learning and their AI model could alert a human decision-maker when a set of decisions are potentially high-risk, such as in healthcare scenarios.
Read the blog post here: https://new-cm-edgedigital.pages.dev/en-us/research/blog/using-reinforcement-learning-to-identify-high-risk-states-and-treatments-in-healthcare/
Read the full paper here: https://new-cm-edgedigital.pages.dev/en-us/research/publication/medical-dead-ends-and-learning-to-identify-high-risk-states-and-treatments/
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Mehdi Fatemi
Senior Researcher
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