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Infusing Structure & Knowledge into Biomedical AI Algorithms | Marinka Zitnik (Harvard) YINS Seminar
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The video was published under the license of Creative Commons, where reposted is allowed.

The video is reposted for educational purposes and encourages involvement in the field of AI research.
Source:
Yale Institute for Network Science
https://youtu.be/u0KYuCF7Z5k
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YINS Seminar: "Infusing Structure & Knowledge into Biomedical AI Algorithms"

Speaker: Marinka Zitnik
Assistant Professor of Biomedical Informatics, Harvard Medical School
Zitnik Lab: https://zitniklab.hms.harvard.edu

Talk summary: Grand challenges in biology and medicine often lack annotated examples and require generalization to entirely new scenarios not seen during training. However, standard supervised learning is incredibly limited in scenarios, such as designing novel medicines, modeling emerging pathogens, and treating rare diseases. In this talk, I present our efforts to overcome these obstacles by infusing structure and knowledge into learning algorithms. First, I outline our subgraph neural networks that can disentangle distinct aspects of subgraph topology. I then present a general-purpose approach for few-shot learning on graphs. At the core is the notion of local subgraphs that transfer knowledge from one task to another, even when only a handful of labeled examples are available. This principle is theoretically justified as we show the evidence for predictions can be found in subgraphs surrounding the targets. I conclude with app
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https://www.youtube.com/watch?v=2QIjnVAQnYo
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