Main

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5666027

related bits

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processing priority

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site type

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review version

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html import

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Events

first seen date

2023-12-26 05:03:45

expired found date

-

created at

2024-05-29 08:07:39

updated at

2025-12-24 12:52:09

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Server

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Open Graph

title

Healthy ML

description

site name

Healthy ML

author

updated

2025-12-08 03:58:50

raw text

Healthy ML Marzyeh Ghassemi Research Papers People ML+Health Seminar Teaching Overview The “Healthy ML” group at MIT, led by Dr. Marzyeh Ghassemi , focuses on creating and applying machine learning to understand and improve health in ways that are robust, private and fair. Health is important, and improvements in health improve lives. However, we still don’t fundamentally understand what it means to be healthy, and the same patient may receive different treatments across different hospitals or clinicians as new evidence is discovered, or individual illness is interpreted. Unlike many problems in machine learning - games like Go, self-driving cars, object recognition - disease management does not have well-defined rewards that can be used to learn rules. Models must also be “healthy”, in that they should not learn biased rules or recommendations that harm minorities or minoritized populations. The Healthy ML group tackles the many novel technical opportunities for ma...

Text analysis

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