Statistical Learning Theory for Modern Machine Learning

John Shawe-Taylor (University College London)

11-Aug-2020, 16:30-17:45 (5 years ago)

Abstract: Probably Approximately Correct (PAC) learning has attempted to analyse the generalisation of learning systems within the statistical learning framework. It has been referred to as a ‘worst case’ analysis, but the tools have been extended to analyse cases where benign distributions mean we can still generalise even if worst case bounds suggest we cannot. The talk will cover the PAC-Bayes approach to analysing generalisation that is inspired by Bayesian inference, but leads to a different role for the prior and posterior distributions. We will discuss its application to Support Vector Machines and Deep Neural Networks, including the use of distribution defined priors.

bioinformaticsgame theoryinformation theorymachine learningneural and evolutionary computingclassical analysis and ODEsoptimization and controlstatistics theory

Audience: researchers in the topic


IAS Seminar Series on Theoretical Machine Learning

Series comments: Description: Seminar series focusing on machine learning. Open to all.

Register in advance at forms.gle/KRz8hexzxa5P4USr7 to receive Zoom link and password. Recordings of past seminars can be found at www.ias.edu/video-tags/seminar-theoretical-machine-learning

Organizers: Ke Li*, Sanjeev Arora
*contact for this listing

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