UCLA
researchers have made a significant discovery showing that biological brains
and artificial intelligence systems develop remarkably similar neural patterns
during social interaction. This first-of-its-kind study reveals that when mice
interact socially, specific brain cell types synchronize in "shared neural
spaces," and AI agents develop analogous patterns when engaging in social
behaviors.
The study, "Inter-brain neural dynamics in biological and
artificial intelligence systems," appears in the journal Nature.
This new research represents a striking
convergence of neuroscience and artificial intelligence, two of today's most
rapidly advancing fields. By directly comparing how biological brains and AI
systems process social information, scientists reveal fundamental principles
that govern social cognition across different types of intelligent systems.
The findings could advance understanding
of social disorders like autism, while simultaneously informing the development
of socially-aware AI systems. This comes at a critical time when AI systems are
increasingly integrated into social contexts, making understanding of social
neural dynamics essential for both scientific and technological progress.
A multidisciplinary team from UCLA's
departments of Neurobiology, Biological Chemistry, Bioengineering, Electrical
and Computer Engineering, and Computer Science across the David Geffen School
of Medicine and the Henry Samueli School of Engineering used advanced brain
imaging techniques to record activity from molecularly defined neurons in the
dorsomedial prefrontal cortex of mice during social interactions.
Mice serve as an important model for
understanding mammalian brain function because they share fundamental neural
mechanisms with humans, particularly in brain regions involved in social behavior. The researchers developed a novel computational
framework to identify high-dimensional "shared" and
"unique" neural subspaces across interacting individuals.
The team then trained artificial
intelligence agents to interact socially and applied the same analytical
framework to examine neural network patterns in AI systems that emerged during
social versus non-social tasks.
The research revealed striking parallels
between biological and artificial systems during social interaction. In both
mice and AI systems, neural activity could be partitioned into two distinct
components: a "shared neural subspace" containing synchronized
patterns between interacting entities, and a "unique neural subspace"
containing activity specific to each individual.
Remarkably, GABAergic neurons—inhibitory
brain cells that regulate neural activity—showed significantly larger shared neural spaces
compared to glutamatergic neurons, the brain's primary excitatory cells. This
represents the first investigation of inter-brain neural dynamics in
molecularly defined cell types, revealing previously unknown differences in how
specific neuron types contribute to social synchronization.
When the same framework was applied to
AI agents, shared neural dynamics also emerged as artificial systems developed
social interaction capabilities. Most importantly, when researchers selectively
disrupted these shared neural components in artificial systems, social
behaviors were substantially reduced, providing the direct evidence that
synchronized neural patterns causally drive social interactions.
The study also revealed that shared
neural dynamics don't simply reflect coordinated behaviors between individuals,
but emerge from representations of each other's unique behavioral actions
during social interaction.
The research team plans to further
investigate shared neural dynamics in different and potentially more complex social
interactions. They also aim to explore how disruptions in shared neural space
might contribute to social disorders and whether therapeutic interventions
could restore healthy patterns of inter-brain synchronization.
The artificial intelligence framework
may serve as a platform for testing hypotheses about social neural mechanisms
that are difficult to examine directly in biological systems. They also aim to
develop methods to train socially intelligent AI.
"This discovery fundamentally
changes how we think about social behavior across all intelligent
systems," said Weizhe Hong, Ph.D., professor of Neurobiology, Biological
Chemistry, and Bioengineering at UCLA and lead author of the new work.
"We've shown for the first time
that the neural mechanisms driving social interaction are remarkably similar between biological brains
and artificial intelligence systems. This suggests we've identified a fundamental
principle of how any intelligent system—whether biological or
artificial—processes social information.
"The implications are significant for both understanding human social disorders and developing AI that can truly understand and engage in social interactions."
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