Seminarium
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Seminarium Geometry, Algebra and Physics in Deep Neural Networks (GAPinDNNs)

Giovanni Luca: The Geometry of Neuromanifolds

Översikt

Evenemanget har passerat
  • Datum:Startar 14 oktober 2024, 13:15Slutar 14 oktober 2024, 14:00
  • Plats:
    MV:L22, Chalmers tvärgata 3
  • Språk:Engelska

Abstrakt finns enbart på engelska: Neural networks parametrize spaces of functions, sometimes referred to as 'neuromanifolds'. Their geometry is intimately related to fundamental machine learning aspects, such as expressivity, sample complexity, and training dynamics. For polynomial activation functions, neuromanifolds are (semi-) algebraic varieties, enabling the application of tools and ideas from algebraic geometry to deep learning. In this talk, we will first review the general theory of neuromanifolds, and then present our recent results for deep convolutional networks with monomial activations. In this case, we show that the parametrization is finite, birational, and regular, factoring through the Segre-Veronese embedding. Moreover, by appealing to the theory of the generic Euclidean distance degree, we compute the number of critical points of the (complexified) regression objective for a generic large dataset.