LOGML - Marinka Zitnik: Graph Representation Learning for Biomedical Discovery
Networks are pervasive in biology and medicine, from molecular interaction maps to dependencies between diseases in a person, all the way to populations encompassing human interactions. In this talk, we put forward an observation that long-standing principles in the Network Biology field--while often unspoken in machine learning research--can provide the conceptual grounding for representation learning, explain its current successes and limitations, and inform future advances. We will describe how we have developed meta-learning algorithms to enable graph neural networks for problems at the scientific frontier where labeled examples are incredibly scarce. We will conclude with applications in drug development and precision medicine where our algorithmic predictions were validated in human cells and led to the discovery of a new class of drugs.
Marinka Zitnik is an Assistant Professor at Harvard with appointments in the Department of Biomedical Informatics, Blavatnik Institute, Broad Institute of MIT and Harvard, and Harvard Data Science Initiative. Dr. Zitnik is a computer scientist studying applied machine learning with a focus on challenges brought forward by data in science, medicine, and health. She has published extensively on the topics of representation learning, knowledge graphs, network science, and graph ML in top-tier AI venues (NeurIPS, JMLR, IEEE TPAMI, KDD, ICLR), top-tier bioinformatics venues (Bioinformatics, ISMB, RECOMB), and journals (Nature Methods, Nature Communications, PNAS). Some of her methods are used by major institutions, including Baylor College of Medicine, Karolinska Institute, Stanford Medical School, and Massachusetts General Hospital. Her work received several best paper, poster, and research awards from the International Society for Computational Biology. She has recently been named a Rising Star in EECS by MIT and also a Next Generation in Biomedicine by the Broad Institute, being the only young scientist who received such recognition in both EECS and Biomedicine.
Twitter user: https://twitter.com/marinkazitnik?s=20
Видео LOGML - Marinka Zitnik: Graph Representation Learning for Biomedical Discovery канала LOGML Summer School
Marinka Zitnik is an Assistant Professor at Harvard with appointments in the Department of Biomedical Informatics, Blavatnik Institute, Broad Institute of MIT and Harvard, and Harvard Data Science Initiative. Dr. Zitnik is a computer scientist studying applied machine learning with a focus on challenges brought forward by data in science, medicine, and health. She has published extensively on the topics of representation learning, knowledge graphs, network science, and graph ML in top-tier AI venues (NeurIPS, JMLR, IEEE TPAMI, KDD, ICLR), top-tier bioinformatics venues (Bioinformatics, ISMB, RECOMB), and journals (Nature Methods, Nature Communications, PNAS). Some of her methods are used by major institutions, including Baylor College of Medicine, Karolinska Institute, Stanford Medical School, and Massachusetts General Hospital. Her work received several best paper, poster, and research awards from the International Society for Computational Biology. She has recently been named a Rising Star in EECS by MIT and also a Next Generation in Biomedicine by the Broad Institute, being the only young scientist who received such recognition in both EECS and Biomedicine.
Twitter user: https://twitter.com/marinkazitnik?s=20
Видео LOGML - Marinka Zitnik: Graph Representation Learning for Biomedical Discovery канала LOGML Summer School
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