I will discuss some recently discovered brain mechanisms that suggest new brain-inspired AI approaches to planning, problem solving, binding, and compositional computing. This was elucidated in recent collaborations with very talented junior researchers from China. Details can be found in our first publications on these results:
Chen, G., Scherr, F., & Maass, W. (2023). Data-based large-scale models provide a window into the organization of cortical computations. bioRxiv
Stöckl, C., Yang, Y., & Maass, W. (2024). Local prediction-learning in high-dimensional spaces enables neural networks to plan. Nature Communications
Wu, Y., & Maass, W. (2025). A simple model for Behavioral Time Scale Synaptic Plasticity (BTSP) provides content addressable memory with binary synapses and one-shot learning. Nature Communications
Yu, C., Wu, Y., Wang, A., & Maass, W. (2025). Behavioral Time Scale Synaptic Plasticity (BTSP) endows Hyperdimensional Computing with attractor features. bioRxiv
Lin, H., Yang, Y., Zhao, R., Pezzulo, G., & Maass, W. (2025). Neural sampling from cognitive maps supports goal-directed imagination and planning. bioRxiv