Statistical mechanics of complex neural systems and high dimensional data
Madhu Advani, Subhaneil Lahiri, and Surya Ganguli

TL;DR
This paper reviews how statistical physics and computer science methods, like replica and cavity techniques and message passing, can help understand complex neural systems and analyze high-dimensional neural data.
Contribution
It introduces and connects advanced theoretical methods from physics and computer science to address challenges in neuroscience data analysis and neural network modeling.
Findings
Application of replica and cavity methods to neural systems
Linking message passing algorithms to neural computation
Insights into high-dimensional data analysis techniques
Abstract
Recent experimental advances in neuroscience have opened new vistas into the immense complexity of neuronal networks. This proliferation of data challenges us on two parallel fronts. First, how can we form adequate theoretical frameworks for understanding how dynamical network processes cooperate across widely disparate spatiotemporal scales to solve important computational problems? And second, how can we extract meaningful models of neuronal systems from high dimensional datasets? To aid in these challenges, we give a pedagogical review of a collection of ideas and theoretical methods arising at the intersection of statistical physics, computer science and neurobiology. We introduce the interrelated replica and cavity methods, which originated in statistical physics as powerful ways to quantitatively analyze large highly heterogeneous systems of many interacting degrees of freedom. We…
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