Computation of optimal transport and related hedging problems via penalization and neural networks
Abstract
We present a widely applicable approach to solving (multi-marginal, martingale) optimal transport and related problems via neural networks. The core idea is to penalize the optimization problem in its dual formulation and reduce it to a finite dimensional one which corresponds to optimizing a neural network with smooth objective function. We present numerical examples from optimal transport, and bounds on the distribution of a sum of dependent random variables. As an application we focus on the problem of risk aggregation under model uncertainty. The talk is based on joint work with Stephan Eckstein and Mathias Pohl.
Accounting for the Epps Effect: Realized Covariation, Cointegration and Common Factors
Abstract
High-frequency realized variance approaches offer great promise for
estimating asset prices’ covariation, but encounter difficulties
connected to the Epps effect. This paper models the Epps effect in a
stochastic volatility setting. It adds dependent noise to a factor
representation of prices. The noise both offsets covariation and
describes plausible lags in information transmission. Non-synchronous
trading, another recognized source of the effect, is not required. A
resulting estimator of correlations and betas performs well on LSE
mid-quote data, lending empirical credence to the approach.
From maps to apps: the power of machine learning and artificial intelligence for regulators
Abstract
Abstract:
Highlights:
•We increasingly live in a digital world and commercial companies are not the only beneficiaries. The public sector can also use data to tackle pressing issues.
•Machine learning is starting to make an impact on the tools regulators use, for spotting the bad guys, for estimating demand, and for tackling many other problems.
•The speech uses an array of examples to argue that much regulation is ultimately about recognising patterns in data. Machine learning helps us find those patterns.
Just as moving from paper maps to smartphone apps can make us better navigators, Stefan’s speech explains how the move from using traditional analysis to using machine learning can make us better regulators.
Mini Biography:
Stefan Hunt is the founder and Head of the Behavioural Economics and Data Science Unit. He has led the FCA’s use of these two fields and designed several pioneering economic analyses. He is an Honorary Professor at the University of Nottingham and has a PhD in economics from Harvard University.
Generalized McKean-Vlasov stochastic control problems
Abstract
Title: Generalized McKean-Vlasov stochastic control problems.
Abstract: I will consider McKean-Vlasov stochastic control problems
where the cost functions and the state dynamics depend upon the joint
distribution of the controlled state and the control process. First, I
will provide a suitable version of the Pontryagin stochastic maximum
principle, showing that, in the present general framework, pointwise
minimization of the Hamiltonian with respect to the control is not a
necessary optimality condition. Then I will take a different
perspective, and present a variational approach to study a weak
formulation of such control problems, thereby establishing a new
connection between those and optimal transport problems on path space.
The talk is based on a joint project with J. Backhoff-Veraguas and R. Carmona.
Lévy forward price approach for multiple yield curves in presence of persistently low and negative interest rates
Abstract
In this talk we present a framework for discretely compounding
interest rates which is based on the forward price process approach.
This approach has a number of advantages, in particular in the current
market environment. Compared to the classical Libor market models, it
allows in a natural way for negative interest rates and has superb
calibration properties even in the presence of persistently low rates.
Moreover, the measure changes along the tenor structure are simplified
significantly. This property makes it an excellent base for a
post-crisis multiple curve setup. Two variants for multiple curve
constructions will be discussed.
As driving processes we use time-inhomogeneous Lévy processes, which
lead to explicit valuation formulas for various interest rate products
using well-known Fourier transform techniques. Based on these formulas
we present calibration results for the two model variants using market
data for caps with Bachelier implied volatilities.
Oxford Mathematician Katherine Staden provides a fascinating snapshot of the field of combinatorics, and in particular extremal combinatorics, and the progress that she and her collaborators are making in answering one of its central questions posed by Paul Erdős over sixty years ago.
Regularity vs. singularity for elliptic and parabolic systems
Abstract
Hilbert's 19th problem asks if minimizers of "natural" variational integrals are smooth. For the past century, this problem inspired fundamental regularity results for elliptic and parabolic PDES. It also led to the construction of several beautiful counterexamples to regularity. The dichotomy of regularity vs. singularity is related to that of single PDE (the scalar case) vs. system of PDEs (the vectorial case), and low dimension vs. high dimension. I will discuss some interesting recent counterexamples to regularity in low-dimensional vectorial cases, and outstanding open problems. Parts of this are joint works with A. Figalli and O. Savin.
14:30
More Designs
Abstract
We generalise the existence of combinatorial designs to the setting of subset sums in lattices with coordinates indexed by labelled faces of simplicial complexes. This general framework includes the problem of decomposing hypergraphs with extra edge data, such as colours and orders, and so incorporates a wide range of variations on the basic design problem, notably Baranyai-type generalisations, such as resolvable hypergraph designs, large sets of hypergraph designs and decompositions of designs by designs. Our method also gives approximate counting results, which is new for many structures whose existence was previously known, such as high dimensional permutations or Sudoku squares.
Effective Mathematics: a disruptive technology in the era of the cloud
Abstract
Lincoln Wallen is the Former CTO, Dreamworks Animation. All are welcome