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An Explicit Scheme for Pathwise XVA Computations

An Explicit Scheme for Pathwise XVA Computations ArXiv ID: 2401.13314 “View on arXiv” Authors: Unknown Abstract Motivated by the equations of cross valuation adjustments (XVAs) in the realistic case where capital is deemed fungible as a source of funding for variation margin, we introduce a simulation/regression scheme for a class of anticipated BSDEs, where the coefficient entails a conditional expected shortfall of the martingale part of the solution. The scheme is explicit in time and uses neural network least-squares and quantile regressions for the embedded conditional expectations and expected shortfall computations. An a posteriori Monte Carlo validation procedure allows assessing the regression error of the scheme at each time step. The superiority of this scheme with respect to Picard iterations is illustrated in a high-dimensional and hybrid market/default risks XVA use-case. ...

January 24, 2024 · 2 min · Research Team

Opinion formation in the world trade network

Opinion formation in the world trade network ArXiv ID: 2401.02378 “View on arXiv” Authors: Unknown Abstract We extend the opinion formation approach to probe the world influence of economical organizations. Our opinion formation model mimics a battle between currencies within the international trade network. Based on the United Nations Comtrade database, we construct the world trade network for the years of the last decade from 2010 to 2020. We consider different core groups constituted by countries preferring to trade in a specific currency. We will consider principally two core groups, namely, 5 Anglo-Saxon countries which prefer to trade in US dollar and the 11 BRICS+ which prefer to trade in a hypothetical currency, hereafter called BRI, pegged to their economies. We determine the trade currency preference of the other countries via a Monte Carlo process depending on the direct transactions between the countries. The results obtained in the frame of this mathematical model show that starting from year 2014 the majority of the world countries would have preferred to trade in BRI than USD. The Monte Carlo process reaches a steady state with 3 distinct groups: two groups of countries preferring, whatever is the initial distribution of the trade currency preferences, to trade, one in BRI and the other in USD, and a third group of countries swinging as a whole between USD and BRI depending on the initial distribution of the trade currency preferences. We also analyze the battle between USD, EUR and BRI, and present the reduced Google matrix description of the trade relations between the Anglo-Saxon countries and the BRICS+. ...

January 4, 2024 · 2 min · Research Team

Nash Equilibria in Greenhouse Gas Offset Credit Markets

Nash Equilibria in Greenhouse Gas Offset Credit Markets ArXiv ID: 2401.01427 “View on arXiv” Authors: Unknown Abstract One approach to reducing greenhouse gas (GHG) emissions is to incentivize carbon capturing and carbon reducing projects while simultaneously penalising excess GHG output. In this work, we present a novel market framework and characterise the optimal behaviour of GHG offset credit (OC) market participants in both single-player and two-player settings. The single player setting is posed as an optimal stopping and control problem, while the two-player setting is posed as optimal stopping and mixed-Nash equilibria problem. We demonstrate the importance of acting optimally using numerical solutions and Monte Carlo simulations and explore the differences between the homogeneous and heterogeneous players. In both settings, we find that market participants benefit from optimal OC trading and OC generation. ...

January 2, 2024 · 2 min · Research Team

Machine-learning regression methods for American-style path-dependent contracts

Machine-learning regression methods for American-style path-dependent contracts ArXiv ID: 2311.16762 “View on arXiv” Authors: Unknown Abstract Evaluating financial products with early-termination clauses, in particular those with path-dependent structures, is challenging. This paper focuses on Asian options, look-back options, and callable certificates. We will compare regression methods for pricing and computing sensitivities, highlighting modern machine learning techniques against traditional polynomial basis functions. Specifically, we will analyze randomized recurrent and feed-forward neural networks, along with a novel approach using signatures of the underlying price process. For option sensitivities like Delta and Gamma, we will incorporate Chebyshev interpolation. Our findings show that machine learning algorithms often match the accuracy and efficiency of traditional methods for Asian and look-back options, while randomized neural networks are best for callable certificates. Furthermore, we apply Chebyshev interpolation for Delta and Gamma calculations for the first time in Asian options and callable certificates. ...

November 28, 2023 · 2 min · Research Team

Discretization of continuous-time arbitrage strategies in financial markets with fractional Brownian motion

Discretization of continuous-time arbitrage strategies in financial markets with fractional Brownian motion ArXiv ID: 2311.15635 “View on arXiv” Authors: Unknown Abstract This study evaluates the practical usefulness of continuous-time arbitrage strategies designed to exploit serial correlation in fractional financial markets. Specifically, we revisit the strategies of Shiryaev (1998) and Salopek (1998) and transfer them to a real-world setting by distretizing their dynamics and introducing transaction costs. In Monte Carlo simulations with various market and trading parameter settings as well as a formal analysis of discretization error, we show that both are promising with respect to terminal portfolio values and loss probabilities. These features and complementary sparsity make them worth serious consideration in the toolkit of quantitative investors. ...

November 27, 2023 · 2 min · Research Team

Estimating Systemic Risk within Financial Networks: A Two-Step Nonparametric Method

Estimating Systemic Risk within Financial Networks: A Two-Step Nonparametric Method ArXiv ID: 2310.18658 “View on arXiv” Authors: Unknown Abstract CoVaR (conditional value-at-risk) is a crucial measure for assessing financial systemic risk, which is defined as a conditional quantile of a random variable, conditioned on other random variables reaching specific quantiles. It enables the measurement of risk associated with a particular node in financial networks, taking into account the simultaneous influence of risks from multiple correlated nodes. However, estimating CoVaR presents challenges due to the unobservability of the multivariate-quantiles condition. To address the challenges, we propose a two-step nonparametric estimation approach based on Monte-Carlo simulation data. In the first step, we estimate the unobservable multivariate-quantiles using order statistics. In the second step, we employ a kernel method to estimate the conditional quantile conditional on the order statistics. We establish the consistency and asymptotic normality of the two-step estimator, along with a bandwidth selection method. The results demonstrate that, under a mild restriction on the bandwidth, the estimation error arising from the first step can be ignored. Consequently, the asymptotic results depend solely on the estimation error of the second step, as if the multivariate-quantiles in the condition were observable. Numerical experiments demonstrate the favorable performance of the two-step estimator. ...

October 28, 2023 · 2 min · Research Team

Path Shadowing Monte-Carlo

Path Shadowing Monte-Carlo ArXiv ID: 2308.01486 “View on arXiv” Authors: Unknown Abstract We introduce a Path Shadowing Monte-Carlo method, which provides prediction of future paths, given any generative model. At any given date, it averages future quantities over generated price paths whose past history matches, or shadows', the actual (observed) history. We test our approach using paths generated from a maximum entropy model of financial prices, based on a recently proposed multi-scale analogue of the standard skewness and kurtosis called Scattering Spectra’. This model promotes diversity of generated paths while reproducing the main statistical properties of financial prices, including stylized facts on volatility roughness. Our method yields state-of-the-art predictions for future realized volatility and allows one to determine conditional option smiles for the S&P500 that outperform both the current version of the Path-Dependent Volatility model and the option market itself. ...

August 3, 2023 · 2 min · Research Team

Using Monte Carlo Methods for Retirement Simulations

Using Monte Carlo Methods for Retirement Simulations ArXiv ID: 2306.16563 “View on arXiv” Authors: Unknown Abstract Retirement prediction helps individuals and institutions make informed financial, lifestyle, and workforce decisions based on estimated retirement portfolios. This paper attempts to predict retirement using Monte Carlo simulations, allowing one to probabilistically account for a range of possibilities. The authors propose a model to predict the values of the investment accounts IRA and 401(k) through the simulation of inflation rates, interest rates, and other pertinent factors. They provide a user case study to discuss the implications of the proposed model. ...

June 28, 2023 · 2 min · Research Team

Monte Carlo simulation for Barndorff-Nielsen and Shephard model under change of measure

Monte Carlo simulation for Barndorff-Nielsen and Shephard model under change of measure ArXiv ID: 2306.05750 “View on arXiv” Authors: Unknown Abstract The Barndorff-Nielsen and Shephard model is a representative jump-type stochastic volatility model. Still, no method exists to compute option prices numerically for the non-martingale case with infinite active jumps. We develop two simulation methods for such a case under change of measure and conduct some numerical experiments. Keywords: Barndorff-Nielsen and Shephard Model, Stochastic Volatility, Jump Diffusion, Option Pricing, Monte Carlo Simulation, Options ...

June 9, 2023 · 2 min · Research Team

A greedy algorithm for habit formation under multiplicative utility

A greedy algorithm for habit formation under multiplicative utility ArXiv ID: 2305.04748 “View on arXiv” Authors: Unknown Abstract We consider the problem of optimizing lifetime consumption under a habit formation model, both with and without an exogenous pension. Unlike much of the existing literature, we apply a power utility to the ratio of consumption to habit, rather than to their difference. The martingale/duality method becomes intractable in this setting, so we develop a greedy version of this method that is solvable using Monte Carlo simulation. We investigate the behaviour of the greedy solution, and explore what parameter values make the greedy solution a good approximation to the optimal one. ...

May 8, 2023 · 2 min · Research Team