Complex computation from developmental priors.
Dániel L BarabásiTaliesin BeynonÁdám KatonaNicolas Perez-NievesPublished in: Nature communications (2023)
Machine learning (ML) models have long overlooked innateness: how strong pressures for survival lead to the encoding of complex behaviors in the nascent wiring of a brain. Here, we derive a neurodevelopmental encoding of artificial neural networks that considers the weight matrix of a neural network to be emergent from well-studied rules of neuronal compatibility. Rather than updating the network's weights directly, we improve task fitness by updating the neurons' wiring rules, thereby mirroring evolutionary selection on brain development. We find that our model (1) provides sufficient representational power for high accuracy on ML benchmarks while also compressing parameter count, and (2) can act as a regularizer, selecting simple circuits that provide stable and adaptive performance on metalearning tasks. In summary, by introducing neurodevelopmental considerations into ML frameworks, we not only model the emergence of innate behaviors, but also define a discovery process for structures that promote complex computations.
Keyphrases
- neural network
- working memory
- machine learning
- resting state
- white matter
- immune response
- physical activity
- cerebral ischemia
- small molecule
- body mass index
- body composition
- spinal cord
- artificial intelligence
- high resolution
- functional connectivity
- deep learning
- mass spectrometry
- spinal cord injury
- subarachnoid hemorrhage
- single cell
- weight loss