Prof. Frank Bradke Inducted into the North Rhine–Westphalia Academy of Sciences and Arts
Prof. Dr. Frank Bradke—Senior Group Leader at the ...
Frank Bradke Elected to the Berlin-Brandenburg Academy of Sciences and Humanities
Prof. Dr. Frank Bradke, neurobiologist at the Germ...
Tobias Ackels receives Paul Ehrlich and Ludwig Darmstaedter Early Career Award 2025
We warmly congratulate our group leader Dr. Tobias...
Und plötzlich feuert das Gehirn: Erinnerung
Wie entsteht Erinnerung? Unser Kollege Florian Mor...
Paul Ehrlich and Ludwig Darmstaedter Early Career Award 2025 Goes to Tobias Ackels
Tobias Ackels awarded for pioneering research on s...
Genetic and environmental risk factors cooperate to affect autistic like neuronal phenotypes
Researchers at the University of Bonn have reveale...
Exome sequencing of 20,979 individuals with epilepsy reveals shared and distinct ultra-rare genetic risk across disorder subtypes
New insights from the Epi25 Collaborative highligh...
Region-specific spreading depolarization drives aberrant post-ictal behavior
Bonn researchers uncover how seizure-related focal...
Single-neuron representations of odors in the human brain
Bonn researchers unveil how the brain encodes and ...
Single-neuron Representation of Nonsymbolic and Symbolic Number Zero in the Human Medial Temporal Lobe
Bonn and Tübingen researchers uncover how the brai...
A-SOiD, an active-learning platform for expert-guided, data-efficient discovery of behavior

Artificial intelligence recognizes patterns in behaviour. Neuroscientists Create AI Tool To Analyze/Catalogue Behavior. To identify and extract naturalistic behavior, two methods have become popular: supervised and unsupervised. Each approach carries its own strengths and weaknesses (for example, user bias, training cost, complexity and action discovery), which the user must consider in their decision. Here, an active-learning platform, A-SOiD, blends these strengths, and in doing so, overcomes several of their inherent drawbacks. A-SOiD iteratively learns user-defined groups with a fraction of the usual training data, while attaining expansive classification through directed unsupervised classification. In socially interacting mice, A-SOiD outperformed standard methods despite requiring 85% less training data. Additionally, it isolated ethologically distinct mouse interactions via unsupervised classification. We observed similar performance and efficiency using nonhuman primate and human three-dimensional pose data. In both cases, the transparency in A-SOiD’s cluster definitions revealed the defining features of the supervised classification through a game-theoretic approach. To facilitate use, A-SOiD comes as an intuitive, open-source interface for efficient segmentation of user-defined behaviors and discovered sub-actions.