A Bayesian Approach to Machine Learning
- đ¤ Speaker: Fergus Simpson -- PROWLER.io
- đ Date & Time: Thursday 21 November 2019, 13:00 - 14:30
- đ Venue: Kavli Large Meeting Room, Kavli Building
Abstract
Conventional approaches to machine learning can suffer from a wide range of issues such as overfitting, poorly calibrated uncertainties, and difficulty in explaining their outputs. I will outline various steps which have been taken towards resolving these issues, by adopting a probabilistic framework. This includes some of the latest research from PROWLER .io, where we apply Bayesian inference to a wide range of machine learning problems.
Series This talk is part of the Data Intensive Science Seminar Series series.
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Fergus Simpson -- PROWLER.io
Thursday 21 November 2019, 13:00-14:30