@inbook{74cc1305f017454489ac5e8de11cb0f1,
title = "Machine Learning for Biological Design",
abstract = "We briefly present machine learning approaches for designing better biological experiments. These approaches build on machine learning predictors and provide additional tools to guide scientific discovery. There are two different kinds of objectives when designing better experiments: to improve the predictive model or to improve the experimental outcome. We survey five different approaches for adaptive experimental design that iteratively search the space of possible experiments while adapting to measured data. The approaches are Bayesian optimization, bandits, reinforcement learning, optimal experimental design, and active learning. These machine learning approaches have shown promise in various areas of biology, and we provide broad guidelines to the practitioner and links to further resources.",
keywords = "Active learning, Adaptive experimental design, Bandits, Bayesian optimization, Machine learning, Optimal design, Reinforcement learning",
author = "Tom Blau and Iadine Chades and Ong, \{Cheng Soon\}",
note = "Publisher Copyright: {\textcopyright} The Author(s), under exclusive license to Springer Science+Business Media, LLC, part of Springer Nature 2024.",
year = "2024",
doi = "10.1007/978-1-0716-3658-9\_19",
language = "English",
isbn = "9781071636572",
series = "Methods in Molecular Biology",
publisher = "Humana Press",
pages = "319--344",
editor = "\{Carl Braman\}, Jeffrey",
booktitle = "Methods in Molecular Biology",
address = "United States of America",
edition = "2nd",
}