Workshop/Conference
Date
Time
9:00
Location:
Humboldt University, Main Building
Asaf Cohen, Boualem Djehiche, Jameson Graber, ...

Mean field games and applications

This workshop is thought as a forum for discussing new developments in mean-field games and control problems and their applications, in particular in Economics and Finance.

It is jointly organized  by Giorgio Ferrari (Bielefeld University) and Ulrich Horst (Humboldt University of Berlin), and sponsored by the Center for Mathematical Economics at Bielefeld University, the CRC/TRR 388 "Rough Analysis, Stochastic Dynamics and Related Fields", and the IRTG 2544 "Stochastic Analysis in Interactions".

For more information, please visit the conference webpage.

Mathematical Finance Seminar
Date
Time
17:15
Location:
TUB, MA 043
Matthieu Lauriere (NYU Shanghai)

An Efficient On-Policy Deep Learning Framework for Stochastic Optimal Control

We present a novel on-policy algorithm for solving stochastic optimal control (SOC) problems. By leveraging the Girsanov theorem, our method directly computes on-policy gradients of the SOC objective without expensive backpropagation through stochastic differential equations or adjoint problem solutions. This approach significantly accelerates the optimization of neural network control policies while scaling efficiently to high-dimensional problems and long time horizons. We evaluate our method on classical SOC benchmarks as well as applications to sampling from unnormalized distributions via Schrodinger-Follmer processes and fine-tuning pre-trained diffusion models. Experimental results demonstrate substantial improvements in both computational speed and memory efficiency compared to existing approaches. Joint work with Mengjian Hua and Eric Vanden-Eijnden.

Mathematical Finance Seminar
Date
Time
16:15
Location:
TUB; MA 043
Sören Christensen (Christian-Albrechts-Universität zu Kiel)

How to Learn from Data in Stochastic Control Problems - An Approach Based on Statistics

While theoretical solutions to many stochastic control problems are well understood, their practicality often suffers from the assumption of known dynamics of the underlying stochastic process, which raises the statistical challenge of developing purely data-driven controls. In this talk, we discuss how stochastic control and statistics can be brought together, which we study for various classical control problems with underlying one- and multi-dimensional diffusions and jump processes. The dilemma between exploration and exploitation plays an essential role in the considerations. We find exact sublinear-order convergence rates for the regret and compare the results numerically with those of deep Q-learning algorithms.

Mathematical Finance Seminar
Date
Time
17:15
Location:
TUB; MA043
Main Dai (HK PolyU)

Option Exercise Games and the q Theory of Investment

Firms shall be able to respond to their competitors’ strategies over time. Back and Paulsen (2009) thus advocate using closed-loop equilibria to analyze classic real-option exercise games but point out difficulties in defining closed-loop equilibria and characterizing the solution. We define closed-loop equilibria and derive a continuum of them in closed form. These equilibria feature either linear or nonlinear investment thresholds. In all closed-loop equilibria, firms invest faster than in the open-loop equilibrium of Grenadier (2002). We confirm Back and Paulsen (2009)’s conjecture that their closedloop equilibrium (with a perfectly competitive outcome) is the one with the fastest investment and in all other closed-loop equilibria firms earn strictly positive profits. This work is jointly with Zhaoli Jiang and Neng Wang. 

Mathematical Finance Seminar
Date
Time
16:15
Location:
TUB; MA043
Paolo Di Tella (Dresden)

Semi-static variance-optimal hedging with self-exciting jumps

In this talk, we study a quadratic hedging problem in an affine Heston model with self-exiting jumps of Hawkes type. The hedging problem is set up for a variance swap and the strategies we consider are of semi-static type, that is, they consist of a dynamic part, based on the stock and continuously re-balanced, and of a static part, that is buy-and-hold positions in a given basket of European options. Semi-static strategies have the advantage that they reduce the hedging error in comparison to purely dynamic strategies. The model we present is new and combines features of continuous stochastic volatility models and of models with self-exciting jumps in the affine framework. Our results are based on Fourier methods and therefore the affine structure plays a central role for the set-up of the semi-static variance optimal strategy. In particular, we study the Laplace transform of our model and obtain semi-explicit expressions for the hedging strategy. This is a joint work with Giorgia Callegaro, Beatrice Ongarato and Carlo Sgarrra.



 

Mathematical Finance Seminar
Date
Time
17:15
Location:
TU Berlin
Julian Sester (Singapore)

Distributionally robust Deep Q-Learning and application to portfolio optimization.

We propose a novel distributionally robust Q-learning algorithm for the non-tabular case accounting for continuous state spaces where the state transition of the underlying Markov decision process is subject to model uncertainty. The uncertainty is taken into account by considering the worst-case transition from a ball around a reference probability measure. To determine the optimal policy under the worst-case state transition, we solve the associated non-linear Bellman equation by dualising and regularising the Bellman operator with the Sinkhorn distance, which is then parameterized with deep neural networks. This approach allows us to modify the Deep Q-Network algorithm to optimise for the worst case state transition. We illustrate the tractability and effectiveness of our approach through several applications, including a portfolio optimisation task based on S&P 500 data
(This is joint work with Chung I Lu and Aijia Zhang)

Mathematical Finance Seminar
Date
Time
17:15
Location:
TUB, MA 043
Yang Yang (HU Berlin)

Optimal Control of Infinite-Dimensional Differential Systems with Randomness and Path-Dependence

This talk is devoted to the stochastic optimal control problem of infinite-dimensional differential systems allowing for both path-dependence and measurable randomness. As opposed to the deterministic path-dependent cases studied by Bayraktar and Keller [J. Funct. Anal. 275 (2018) 2096–2161], the value function turns out to be a random field on the path space and it is characterized by a stochastic path-dependent Hamilton-Jacobi (SPHJ) equation. A notion of viscosity solution is proposed and the value function is proved to be the unique viscosity solution to the associated SPHJ equation.

Mathematical Finance Seminar
Date
Time
16:15
Location:
TU Berlin, MA 043
Johannes Wiesel (Carnegie Mellon)

Bounding adapted Wasserstein metrics

The Wasserstein distance Wp is an important instance of an optimal transport cost. Its numerous mathematical properties as well as applications to various fields such as mathematical finance and statistics have been well studied in recent years. The adapted Wasserstein distance AWp extends this theory to laws of discrete time stochastic processes in their natural filtrations, making it particularly well suited for analyzing time-dependent stochastic optimization problems. While the topological differences between AWp and Wp are well understood, their differences as metrics remain largely unexplored beyond the trivial bound Wp ≲ AWp. This paper closes this gap by providing upper bounds of AWp in terms of Wp through investigation of the smooth adapted Wasserstein distance. Our upper bounds are explicit and are given by a sum of Wp, Eder’s modulus of continuity and a term characterizing the tail behavior of measures. As a consequence, upper bounds on Wp automatically hold for AWp under mild regularity assumptions on the measures considered. A particular instance of our findings is the inequality AW1 ≤C√W1 on the set of measures that have Lipschitz kernels. Our work also reveals how smoothing of measures affects the adapted weak topology. In fact, we find that the topology induced by the smooth adapted Wasserstein distance exhibits a non-trivial interpolation property, which we characterize explicitly: it lies in between the adapted weak topology and the weak topology, and the inclusion is governed by the decay of the smoothing parameter. This talk is based on joint work with Jose Blanchet, Martin Larsson and Jonghwa Park.

Mathematical Finance Seminar
Date
Time
17:15
Location:
TU Berlin
Thorsten Schmidt (Freiburg)

Insurance-finance markets

Pension products and long-term insurance policies play a crucial role in our societies. This talk explores approaches for their cost-effective production through investments in financial markets. The key tool here is to link financial and insurance strategies to an appropriate fundamental theorem. To address the risks and uncertainties inherent in such investments, we draw on methods from financial mathematics and the framework of Knightian uncertainty. We will discuss recent developments in this field, highlighting their implications for the sustainable and resilient structuring of pension and insurance products.

Mathematical Finance Seminar
Date
Time
16:15
Location:
TU Berlin
Paul Eisenberg (WU Vienna)

Natural finite dimensional HJM models are NON-affine

A zero coupon bond is a contract where one party offers a fixed payment at a pre-specified

time point which is called its maturity. A forward rate curve is a theoretical function that encodes the

prices of all possible bonds with varying maturities at one given point of time. There are various models

that explain the behaviour of forward rate curves accross time. The most principle model in this direction

is the Heath Jarrow Morton (HJM)-model which models the forward rate curve directly. This model is

known to be free of arbitrage if and only if the HJM-drift condition holds.

We are interested in finite dimensional HJM-models which stay on one fixed given finite dimensional

manifold, roughly spoken this means that the model stays within a fixed finitely parametrised family

of curves. It is well known, that a curve valued process can only stay on a prescribed manifold if the

Stratonovich drift is tangential to the manifold at all time, or more simply, if we can instead find a

parameter process which selects the curve seen at a given time. From a statistical point of view it would

be desirable to leave the diffusion coefficient of the parameter process open for estimation, or in the

language of manifolds that means that any tangential diffusion coefficient should be left open as possible.

In this presentation, we find those finite dimensional manifolds where the diffusion coefficient remains

fully open for estimation while still allowing for the HJM-drift condition to be met. It turns out that the

resulting manifolds are nowhere locally affine. More so, they are nowhere affinely foliated as has been

suggested by earlier work (however under different assumptions).