NCDIS-NNMLJan 30, 2013

Statistical mechanics of complex neural systems and high dimensional data

arXiv:1301.7115v178 citations
Originality Synthesis-oriented
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This is an incremental review that synthesizes existing ideas to aid researchers in theoretical neuroscience and data analysis in tackling the complexity of neuronal networks and high-dimensional datasets.

The paper provides a pedagogical review of theoretical methods from statistical physics and computer science, such as replica and cavity methods and message passing, to address the challenges of understanding complex neural systems and extracting models from high-dimensional data. It applies these methods to problems in neuroscience and data analysis, including spin glasses, learning theory, and dimensionality reduction, without presenting new experimental results or concrete numerical outcomes.

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 also introduce the closely related notion of message passing in graphical models, which originated in computer science as a distributed algorithm capable of solving large inference and optimization problems involving many coupled variables. We then show how both the statistical physics and computer science perspectives can be applied in a wide diversity of contexts to problems arising in theoretical neuroscience and data analysis. Along the way we discuss spin glasses, learning theory, illusions of structure in noise, random matrices, dimensionality reduction, and compressed sensing, all within the unified formalism of the replica method. Moreover, we review recent conceptual connections between message passing in graphical models, and neural computation and learning. Overall, these ideas illustrate how statistical physics and computer science might provide a lens through which we can uncover emergent computational functions buried deep within the dynamical complexities of neuronal networks.

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