Wed, 04 Mar 2020
14:00
N3.12

Machine Learning with Hawkes Processes

Saad Labyad
((Oxford University))
Abstract

Hawkes processes are a class of point processes used to model self-excitation and cross-excitation between different types of events. They are characterized by the auto-regressive structure of their conditional intensity, and there exists several extensions to the original linear Hawkes model. In this talk, we start by defining Hawkes processes and give a brief overview of some of their basic properties. We then review some approaches to parametric and non-parametric estimation of Hawkes processes and discuss some applications to problems with large data sets in high frequency finance and social networks.

Several well-known formulas involving reflection groups of finite-dimensional algebraic systems break down in infinite dimensions, but there is often a predictable way to correct them. Oxford Mathematician Thomas Oliver talks about his research getting to grips with what structures underlie the mysterious correction process.

Fri, 23 Oct 2020

11:45 - 13:15
Virtual

InFoMM CDT Group Meeting

Ellen Luckins, Ambrose Yim, Victor Wang, Christoph Hoeppke
(Mathematical Institute)
Fri, 19 Jun 2020

11:45 - 13:15
Virtual

InFoMM CDT Group Meeting

Rahil Sachak-Patwa, Thomas Babb, Huining Yang, Joel Dyer
(Mathematical Institute)
Further Information

The Group Meeting will be held virtually unless the Covid 19 lockdown is over in which case the location will be L2.

Fri, 29 May 2020

11:45 - 13:15
Virtual

InFoMM CDT Group Meeting

Rodrigo Leal Cervantes, Isabelle Scott, Matthew Shirley, Meredith Ellis
(Mathematical Institute)
Further Information

The Group Meeting will be held virtually unless the Covid 19 lockdown is over in which case the location will be L3. 

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