A New Brain Model Could Pave the Way for Conscious AI
A new study presents a new
neurocomputational model of the human brain, which might shed light on how the
brain develops complex cognitive skills and advance neural artificial
intelligence research. An international team of scientists from the Institute Pasteur
and Sorbonne University in Paris, the CHU Sainte-Justine, Mila – Quebec
Artificial Intelligence Institute, and the University of Montreal conducted
the study.
The
model, which was featured on the cover of the journal Proceedings of the National Academy of Sciences of
the United States of America (PNAS), describes neural development over three
hierarchical levels of information processing:
- the first sensorimotor level explores how the brain’s
inner activity learns patterns from perception and associates them with
action;
- the cognitive level examines how the brain contextually
combines those patterns;
- lastly, the conscious level considers how the brain
dissociates from the outside world and manipulates learned patterns (via
memory) no longer accessible to perception.
The model’s
emphasis on the interaction between two fundamental types of learning—Hebbian
learning, associated with statistical regularity (i.e., repetition), or as
neuropsychologist Donald Hebb has put it, “neurons that fire together, wire
together”—and reinforcement learning, associated with reward and the dopamine
neurotransmitter, provides insights into the fundamental mechanisms underlying
cognition. The model solves three tasks of increasing complexity across
those levels, from visual recognition to cognitive manipulation of conscious
percepts. Each time, the team introduced a new core mechanism to enable it to
progress.
The
results highlight two fundamental mechanisms for the multilevel development of
cognitive abilities in biological neural networks:
- synaptic epigenesis, with Hebbian learning at the local
scale and reinforcement learning at the global scale;
- and self-organized dynamics, through spontaneous
activity and balanced excitatory/inhibitory ratio of neurons.
“Our
model demonstrates how the neuro-AI convergence highlights biological
mechanisms and cognitive architectures that can fuel the development of the
next generation of artificial intelligence and even ultimately lead to
artificial consciousness,” said team member Guillaume Dumas, an assistant
professor of computational psychiatry at the University of Montreal, and a
principal investigator at the CHU Sainte-Justine Research Centre.
Reaching
this milestone may require integrating the social dimension of cognition, he
added. The researchers are now looking at integrating biological and social
dimensions at play in human cognition. The team has already pioneered the first
simulation of two whole brains in interaction.
Anchoring
future computational models in biological and social realities will not only
continue to shed light on the core mechanisms underlying cognition, the team
believes, but will also help provide a unique bridge to artificial intelligence
toward the only known system with advanced social consciousness: the human
brain.
Reference:
“Multilevel development of cognitive abilities in an artificial neural network”
by Konstantin Volzhenin, Jean-Pierre Changeux and Guillaume Dumas, 19 September
2022, Proceedings of the National
Academy of Sciences.
DOI: 10.1073/pnas.2201304119


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