Scientists have developed a new approach to training artificial intelligence systems by mimicking how humans learn complex skills: starting with the basics. This “kindergarten curriculum learning” helps recurrent neural networks (RNNs) develop more rat-like decision-making capabilities when solving complex cognitive tasks. The innovation addresses a fundamental challenge in AI development—how to effectively teach neural networks to perform sophisticated cognitive functions that integrate multiple mental processes, similar to how animals naturally approach complex problems.
The big picture: Researchers have created a more effective way to train neural networks by breaking complex cognitive tasks into simpler subtasks, significantly improving AI’s ability to mimic animal behavior patterns.
Key details: The study focused on a temporal wagering task previously studied in rats, where the AI had to learn to make value-based decisions using long-timescale inference.
Why this matters: The research demonstrates how structured learning approaches from human education can improve artificial intelligence capabilities, potentially bridging the gap between AI and biological cognition.
In plain English: Just as children learn arithmetic before tackling calculus, these researchers found that neural networks perform better when first taught basic cognitive skills before attempting complex tasks—creating AI that thinks more like animals.
The mechanism: The pretraining approach specifically helped neural networks develop slow dynamical systems features necessary for both inference and decision-making.
Behind the numbers: The study relied on previously collected rat behavioral data, with the research team making their code and model files publicly available through multiple repositories.