Fri, 21 Oct 2016

13:00 - 14:00
L6

Data driven nonlinear expectations for statistical robustness

Sam Cohen
(Mathematical Institute)
Abstract

In practice, stochastic decision problems are often based on statistical estimates of probabilities. We all know that statistical error may be significant, but it is often not so clear how to incorporate it into our decision making. In this informal talk, we will look at one approach to this problem, based on the theory of nonlinear expectations. We will consider the large-sample theory of these estimators, and also connections to `robust statistics' in the sense of Huber.

Tue, 18 Oct 2016
14:00
L5

ODE IVPs and BVPs

Nick Trefethen
(Mathematical Institute)
Abstract

I will discuss some of the relationships between ODE IVPs, usually solved by marching, and ODE BVPs, usually solved by global discretizations.

Fri, 06 May 2016

10:00 - 11:00
L4

Probabilistic Time Series Forecasting: Challenges and Opportunities

Siddharth Arora
(Mathematical Institute)
Abstract

Over the years, nonlinear and nonparametric models have attracted a great deal of attention. This is mainly due to the fact that most time series arising from the real-world exhibit nonlinear behavior, whereas nonparametric models, in principle, do not make strong prior assumptions about the true functional form of the underlying data generating process.

 

In this workshop, we will focus on the use of nonlinear and nonparametric modelling approaches for time series forecasting, and discuss the need and implications of accurate forecasts for informed policy and decision-making. Crucially, we will discuss some of the major challenges (and potential solutions) in probabilistic time series forecasting, with emphasis on: (1) Modelling in the presence of regime shifts, (2) Effect of model over-fitting on out-of-sample forecast accuracy, and, (3) Importance of using naïve benchmarks and different performance scores for model comparison. We will discuss the applications of different modelling approaches for: Macroeconomics (US GNP), Energy (electricity consumption recorded via smart meters), and Healthcare (remote detection of disease symptoms).

Thu, 05 Jun 2014

14:00 - 16:00
L4

Motivic L-functions

Prof. Minhyong Kim
(Mathematical Institute)
Abstract

This talk will be a brief introduction to some standard conjectures surrounding motivic L-functions, which might be viewed as the arithmetic motivation for Langlands reciprocity.

Thu, 11 Jun 2009
11:00
DH 3rd floor SR

Function Morphology

Laura Campbell
(Mathematical Institute)
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