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An amortized approach to non-linear mixed-effects modeling based on neural posterior estimation.
In: (41st International Conference on Machine Learning, 21-27 July 2024, Vienna). 2024. 1865-1901 (Proceedings of Machine Learning Research ; 235)
Non-linear mixed-effects models are a powerful tool for studying heterogeneous populations in various fields, including biology, medicine, economics, and engineering. Here, the aim is to find a distribution over the parameters that describe the whole population using a model that can generate simulations for an individual of that population. However, fitting these distributions to data is computationally challenging if the description of individuals is complex and the population is large. To address this issue, we propose a novel machine learning-based approach: We exploit neural density estimation based on conditional normalizing flows to approximate individual-specific posterior distributions in an amortized fashion, thereby allowing for efficient inference of population parameters. Applying this approach to problems from cell biology and pharmacology, we demonstrate its unseen flexibility and scalability to large data sets compared to established methods.
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Publikationstyp
Artikel: Konferenzbeitrag
Konferenztitel
41st International Conference on Machine Learning
Konferzenzdatum
21-27 July 2024
Konferenzort
Vienna
Quellenangaben
Band: 235,
Seiten: 1865-1901
Nichtpatentliteratur
Publikationen
Institut(e)
Institute of Computational Biology (ICB)