2022
DOI: 10.1101/2022.08.22.504822
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A layered, hybrid machine learning analytic workflow for mouse risk assessment behavior

Abstract: Accurate and efficient quantification of animal behavior facilitates the understanding of the brain. An emerging approach within machine learning (ML) field is to combine multiple ML-based algorithms to quantify animal behavior. These so-called hybrid models have emerged because of limitations associated with supervised (e.g., random forest, RF) and unsupervised (e.g., hidden Markov model, HMM) ML classifiers. For example, RF models lack temporal information across video frames, and HMM latent states are often… Show more

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