Thursday, November 14 |
07:00 - 08:45 |
Breakfast ↓ Breakfast is served daily between 7 and 9am in the Vistas Dining Room, the top floor of the Sally Borden Building. (Vistas Dining Room) |
09:00 - 09:18 |
Mathieu Lauriere: Deep learning for Stackelberg mean field games via single-level reformulation ↓ We propose a single-level numerical approach to solve Stackelberg mean field game (MFG) problems. In Stackelberg MFG, an infinite population of agents play a non-cooperative game and choose their controls to optimize their individual objectives while interacting with the principal and other agents through the population distribution. The principal can influence the mean field Nash equilibrium at the population level through policies, and she optimizes her own objective, which depends on the population distribution. This leads to a bi-level problem between the principal and mean field of agents that cannot be solved using traditional methods for MFGs. We propose a reformulation of this problem as a single-level mean field optimal control problem through a penalization approach, and we prove convergence of the reformulated problem to the original problem. We propose a machine learning method based on (feed-forward and recurrent) neural networks and illustrate it on several examples from the literature. Joint work with Gokce Dayanikli. (Online) |
09:18 - 09:36 |
Marko Weber: General equilibrium with unhedgeable fundamentals and heterogeneous agents ↓ We examine the implications of unhedgeable fundamental risk, combined with agents' heterogeneous preferences and wealth allocations, on dynamic asset pricing and portfolio choice. We solve in closed form a continuous-time general equilibrium model in which unhedgeable fundamental risk affects aggregate consumption dynamics, rendering the market incomplete. Several long-lived agents with heterogeneous risk-aversion and time-preference make consumption and investment decisions, trading risky assets and borrowing from and lending to each other. We find that a representative agent does not exist. Agents trade assets dynamically. Their consumption rates depend on the history of unhedgeable shocks. Consumption volatility is higher for agents with preferences and wealth allocations deviating more from the average. Unhedgeable risk reduces the equilibrium interest rate only through agents' heterogeneity and proportionally to the cross-sectional variance of agents' preferences and allocations. (Online) |
09:36 - 09:54 |
Julian Sester: Uncertainty-aware calibration of affine models ↓ Robust modeling approaches often start with a given parameter set. In this talk we study the inverse engineering question how to obtain this parameter set through calibrating stochastic models to historical data.
We focus on the class of affine term structure models under parameter uncertainty, while the approach can be applied similarly to other model classes or other financial markets.
Our approach introduces a dynamic calibration to an observed time series of market prices by determining parameter sets in such a way that bid/ask price intervals are reproduced by the non-linear model. Through numerical illustrations employing US bond market data and SOFR rates, we show that our dynamic calibration approach outperforms non-robust approaches in typical applications such as hedging of derivatives.
(Joint work with Thorsten Schmidt and Eva Lütkebohmert) (Online) |
09:54 - 10:12 |
Daniel Bartl: Statistical estimation of stochastic optimization problems and risk measures ↓ We develop a novel procedure for estimating the optimizer of general convex stochastic optimization problems from an iid sample. This procedure is the first one that exhibits the optimal statistical performance in heavy tailed situations and also applies in highdimensional settings. We discuss the portfolio optimization problem and the estimation of risk measures. Joint works with Stephan Eckstein and Shahar Mendelson. (Online) |
10:12 - 10:30 |
Gokce Dayanikli: Cooperation, competition, and common pool resources in mean field games ↓ The tragedy of the commons (TOTC, introduced by Hardin, 1968) states that the individual incentives will result in overusing common pool resources which in turn may have detrimental future consequences that affect everyone negatively. However, in many real-life situations this does not happen and researchers such as the Nobel Prize winner Elinor Ostrom suggested mutual restraint by individuals can be the preventing factor. In mean field games (MFGs), since individuals are insignificant and fully non-cooperative, the TOTC is inevitable. This shows that MFG models should incorporate a mixture of selfishness and altruism to capture real-life situations that include common pool resources. Motivated by this, we will discuss different equilibrium notions to capture the mixture of cooperative and non-cooperative behavior in the population. First, we will introduce mixed individual MFGs and mixed population MFGs where we also include the common pool resources. The former captures altruistic tendencies at the individual level and the latter models a population that is a mixture of fully cooperative and non-cooperative individuals. For both cases, we will briefly discuss definitions and characterization of equilibrium with the forward backward stochastic differential equations. Later, we will discuss a real-life inspired example of fishers where the fish stock is the common pool resource. We will analyze the existence and uniqueness results and discuss the experimental results. (This is a joint work with Mathieu Lauriere.) (Online) |
10:30 - 11:00 |
Coffee Break (TCPL Foyer) |
11:00 - 11:30 |
Anne MacKay: Continuous-time Markov chain approximations for an optimal stopping problem with discontinuous reward function ↓ We consider an optimal stopping problem with an unbounded, time-dependent and discontinuous reward function. Using an alternative representation for the value function of the optimization problem, we study its analytical properties and the resulting exercise region, and we obtain different representations for the value function. From these results, we develop fast and efficient pricing algorithms for equity-linked insurance contracts and convertible bonds under a wide range of market models. We do so by approximating the diffusion processes describing the market by a two-layer continuous-time Markov chain. Numerical examples show the efficiency of our pricing algorithms. This is joint work with Marie-Claude Vachon (UQAM) (TCPL 201) |
11:30 - 12:00 |
Dena Firoozi: Hilbert-Space Valued LQ Mean Field Games ↓ Originally developed in finite-dimensional spaces, mean field games (MFGs) have become pivotal in addressing large-scale problems involving numerous interacting agents, and have found extensive applications in economics and finance. However, there are scenarios where Euclidean spaces do not adequately capture the essence of a problem such as non-Markovian systems. A clear and intuitive example is systems involving time delays. This talk presents a comprehensive study of linear-quadratic (LQ) MFGs in Hilbert spaces, generalizing the classic LQ MFG theory to scenarios involving N agents with dynamics governed by infinite-dimensional stochastic equations. In this framework, both state and control processes of each agent take values in separable Hilbert spaces. All agents are coupled through the average state of the population which appears in their linear dynamics and quadratic cost functional. Specifically, the dynamics of each agent incorporates an infinite-dimensional noise, namely a Q-Wiener process, and an unbounded operator. The diffusion coefficient of each agent is stochastic involving the state, control, and average state processes. We first study the well-posedness of a system of N coupled semilinear infinite-dimensional stochastic evolution equations establishing the foundation of MFGs in Hilbert spaces. We then specialize to N-player LQ games described above and study the asymptotic behavior as the number of agents, N, approaches infinity. We develop an infinite-dimensional variant of the Nash Certainty Equivalence principle and characterize a unique Nash equilibrium for the limiting MFG. Finally, we study the connections between the N-player game and the limiting MFG, demonstrating that the empirical average state converges to the mean field and that the resulting limiting best-response strategies form an ϵ-Nash equilibrium for the N-player game in Hilbert spaces. (TCPL 201) |
12:00 - 13:30 |
Lunch ↓ Lunch is served daily between 11:30am and 1:30pm in the Vistas Dining Room, the top floor of the Sally Borden Building. (Vistas Dining Room) |
13:30 - 14:00 |
Geneviève Gauthier: Enhancing deep hedging of options with implied volatility surface feedback information ↓ We present a dynamic hedging scheme for S\&P 500 options, where rebalancing decisions are enhanced by integrating information about the implied volatility surface dynamics. The optimal hedging strategy is obtained through a deep policy gradient-type reinforcement learning algorithm, with a novel hybrid neural network architecture improving the training performance. The favorable inclusion of forward-looking information embedded in the volatility surface allows our procedure to outperform several conventional benchmarks such as practitioner and smiled-implied delta hedging procedures, both in simulation and backtesting experiments. Joint work with Pascal Fran\c{c}ois, Fr\'ed\'eric Godin, Carlos Octavio P\'erez Mendoza. (TCPL 201) |
14:00 - 14:30 |
Xiaofei Shi: Reinforced-GANs for financial-market equilibria ↓ We incorporate trading costs into a dynamic multiagent general-equilibrium model, in which participating agents optimally decide their trade and their aggregated demands for the stocks matches with the total shares outstanding in the market. Although global equilibrium is achieved under specific market dynamics, the nonlinear nature of the system makes it falls outside the scope of any known well-posedness results. In this work, we show how to leverage deep-learning techniques to obtain numerical solutions with calibrated parameters to market prices and trading volumes. In particular, we propose the architecture of reinforced generative adversarial networks (Reinforced-GANs) as a numerical algorithm for equilibrium models, where GANs not only overcome the curse-of-dimensionality and but also show their great scalability. (TCPL 201) |
14:30 - 15:00 |
Costas Smaragdakis: A deep implicit-explicit minimizing movement method for option pricing in Levy models ↓ Solving high-dimensional differential and integro-differential equations remains a significant challenge in mathematical finance, particularly in the context of option pricing. Recently, innovative approaches have emerged that approximate solutions by training neural networks with loss functions tailored to the differential operator of the equation, incorporating initial/terminal and boundary conditions. In this talk, we will present advanced machine-learning procedures for pricing European basket options, where the underlying assets are subject to correlated dynamics with random discontinuities. The neural network architecture we propose is designed to ensure the solution's known asymptotic behaviour for extreme values of the underlying assets. Furthermore, the architecture is designed to align the network outputs with the solution's known qualitative properties, enhancing their consistency and reliability. We will present results corresponding to various L\'evy models to demonstrate the merits of our model in solving high-dimension option pricing problems. (TCPL 201) |
15:00 - 15:30 |
Coffee Break (TCPL Foyer) |
15:30 - 16:00 |
René Aïd: Continuous-time persuasion by filtering ↓ We frame dynamic persuasion in a partial observation stochastic control game with an ergodic criterion. The Receiver controls the dynamics of a multidimensional unobserved state process. Information is provided to the Receiver through a device designed by the Sender that generates the observation process. We develop this approach in the case where all dynamics are linear and the preferences of the Receiver are linear-quadratic. We prove a verification theorem for the existence and uniqueness of the solution of the HJB equation satisfied by the Receiver's value function. An extension to the case of persuasion of a mean field of interacting Receivers is also provided. We illustrate this approach in two applications: the provision of information to electricity consumers with a smart meter designed by an electricity producer; the information provided by carbon footprint accounting rules to companies engaged in a best- in-class emissions reduction effort. In the first application, we link the benefits of information provision to the mispricing of electricity production. In the latter, we show that when firms declare a high level of best-in-class target, the information provided by stringent accounting rules offsets the Nash equilibrium effect that leads firms to increase pollution to make their target easier to achieve. Joint work with Ofelia Bonesini (LSE), Giorgia Callegaro (Dept. Mathematics of Padova University) and Luciano Campi (Milan University). (TCPL 201) |
16:00 - 16:30 |
Haosheng Zhou: Stochastic differential games on graphs ↓ In this talk, we present a new model for stochastic differential games on graphs, aiming to bridge game theory with network structures to capture the influence of graph structures on strategic interactions. Our framework supports heterogeneous player interactions across general graph structures, extending current models to encompass more complex, network-driven dynamics.
We establish two main results: firstly, we demonstrate the convergence of fictitious play, along with numerical estimates of convergence rates that reflect key aspects of the graph structure. Secondly, we provide a semi-explicit construction of the Nash equilibrium, validated through numerical simulations and offering a reliable computational baseline for future applications in deep learning. This is joint work with Ruimeng Hu and Jihao Long. (TCPL 201) |
16:30 - 17:00 |
Yang Yang: Stochastic path-dependent volatility models for price-storage dynamics in natural gas markets and discrete-time swing option pricing ↓ This talk is about the price-storage dynamics in natural gas markets. A novel stochastic path-dependent volatility model is introduced with path-dependence in both price volatility and storage increments. Model calibrations are conducted for both the price and storage dynamics. Further, we discuss the pricing problem of discrete-time swing options using the dynamic programming principle, and a deep learning-based method is proposed for numerical approximations. A numerical algorithm is provided, followed by a convergence analysis result for the deep-learning approach. (TCPL 201) |
17:30 - 19:30 |
Dinner ↓ A buffet dinner is served daily between 5:30pm and 7:30pm in Vistas Dining Room, top floor of the Sally Borden Building. (Vistas Dining Room) |