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资源 63
[Lecture] Approximation Theory of Deep Learning for Sequence Modelling
Sep. 05, 2023
Speaker: Qianxiao Li(National University of Singapore)

Time: 16:00-17:00 p.m., September 5, 2023, GMT+8

Venue: Room 1303, Sciences Building No. 1

Abstract:

In this talk, we present some recent results on the approximation theory of deep learning architectures for sequence modelling. In particular, we formulate a basic mathematical framework, under which different popular architectures such as recurrent neural networks, dilated convolutional networks (e.g. WaveNet), encoder-decoder structures, and most recently - transformers - can be rigorously compared. These analyses reveal some interesting connections between approximation, memory, sparsity/low-rank, graphical structures that may guide the practical selection and design of these network architectures.

Biography:

Qianxiao Li is an assistant professor in the Department of Mathematics, and a principal investigator in the Institute for Functional Intelligent Materials, National University of Singapore. He graduated with a BA in mathematics from the University of Cambridge and a PhD in applied mathematics from Princeton University. His research interests include the interplay of machine learning and dynamical systems, control theory, stochastic optimisation algorithms and data-driven methods for science and engineering.

Source: School of Mathemetical Sciences