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-'''Thursday, May 28, 2020, 1PM-2PM''' (Eastern US; GMT-4); +'''Thursday, July 09, 2020, 1PM-2PM''' (Eastern US; GMT-4);
-''Panel Discussion:'' '''Energy Markets''' +There will be no seminar due to (virtual) [https://www.siam.org/conferences/cm/conference/an20 2020 SIAM Annual Meeting]
-''Abstract:'' The aim is to discuss recent events in energy/electricity/commodity markets, such as negative prices, as well as related mathematical modeling challenges. 
-''Panelists:''  
-[[Image:ReneAid1.jpg]]+'''Thursday, July 23, 2020, 1PM-2PM''' (Eastern US; GMT-4); [https://siam.zoom.us/webinar/register/WN_s8rIcHwiS-uPM3Dkuok-Wg Registration Link]
-<jsmath>\qquad </jsmath> [https://sites.google.com/view/reneaid Rene Aid], Université Paris-Dauphine, France+
-[[Image:swindle1.jpg]]+'''Early Career Talks'''
-<jsmath>\qquad </jsmath> [https://scovilleriskpartners.com/team/glen-swindle/ Glen Swindle], Scoville Risk Partners, USA+
-[[Image:Zef1.jpg]] 
-<jsmath>\qquad </jsmath> Zef Lokhandwalla, Bloomberg LP, USA 
-[[Image:Mike1.jpg]]+[https://sites.google.com/site/ruimenghu1/ Ruimeng Hu], University of California Santa Barbara
-<jsmath>\qquad </jsmath> [http://ludkovski.faculty.pstat.ucsb.edu/ Mike Ludkovski], University of California Santa Barbara, USA+
-''Moderator:'' [https://sircar.princeton.edu/ Ronnie Sircar], ORFE, Princeton University+[[Image:Ruimeng1.jpg]]
 +''Title:'' Deep fictitious play for stochastic differential games
 +''Abstract:'' Differential games, as an offspring of game theory and optimal control, provide the modeling and analysis of conflict in the context of a dynamic system. Computing Nash equilibria is one of the core objectives in differential games, with a major bottleneck coming from the notorious intractability of N-player games. This leads to the difficulty of the curse of dimensionality, which will be overcome by the algorithms of deep fictitious play using machine learning tools. We discuss the approaches to solve open-loop and Markovian Nash equilibria with convergence analysis.
-'''Thursday, June 11, 2020, 1PM-2PM''' (Eastern US; GMT-4);  
-''Speaker:'' [https://people.math.ethz.ch/~patrickc/ Patrick Cheridito], ETH Zurich+[https://max.reppen.ch/ A. Max Reppen], Boston University
-[[Image:Patrick1.jpg]]+[[Image:Max1.jpg]]
 + 
 +''Title:'' Discrete dividend payments in continuous time
 + 
 +''Abstract:'' We propose a model in which dividend payments occur at regular, deterministic intervals in an otherwise continuous model. This contrasts traditional models where either the payment of continuous dividends is controlled or the dynamics are given by discrete time processes. Moreover, between two dividend payments, the structure allows for other types of control; we consider the possibility of equity issuance at any point in time. The value is characterized as the fixed point of an optimal control problem with periodic initial and terminal conditions. We prove the regularity and uniqueness of the corresponding dynamic programming equation, and the convergence of an efficient numerical algorithm that we use to study the problem. The model enables us to find the loss caused by infrequent dividend payments. We show that under realistic parameter values this loss varies from around 1% to 24% depending on the state of the system, and that using the optimal policy from the continuous problem further increases the loss.
 + 
 + 
 +''Moderator:'' [https://sites.google.com/view/cialenco Igor Cialenco], Illinois Institute of Technology
 + 
 + 
 + 
 + 
 +'''Thursday, August 06, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 + 
 +There will be no seminar.
 + 
 + 
 + 
 +'''Thursday, August 20, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 + 
 +''Speaker:''
''Title:'' TBA ''Title:'' TBA
Line 68: Line 82:
''Abstract:'' TBA ''Abstract:'' TBA
-''Host and moderator:'' +''Moderator:''
-'''Thursday, June 25, 2020, 1PM-2PM''' (Eastern US; GMT-4); +'''Thursday, September 3, 2020, 1PM-2PM''' (Eastern US; GMT-4);
-''Speaker:'' [http://fouque.faculty.pstat.ucsb.edu/ Jean-Pierre Fouque], University of California Santa Barbara +''Speaker:''
''Title:'' TBA ''Title:'' TBA
Line 80: Line 94:
''Abstract:'' TBA ''Abstract:'' TBA
-''Moderator:'' +''Moderator:''
-'''Thursday, July 09, 2020, 1PM-2PM''' (Eastern US; GMT-4); + 
 +'''Thursday, September 17, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 + 
 +''Speaker:'' [https://carmona.princeton.edu/ Rene Carmona], ORFE and PACM, Princeton University
 + 
 + 
 +''Title:'' TBA
 + 
 +''Abstract:'' TBA
 + 
 +''Moderator:''
 + 
 + 
 + 
 + 
 +'''Thursday, October 1, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 + 
 +''Speaker:''
 + 
 +''Title:'' TBA
 + 
 +''Abstract:'' TBA
 + 
 +''Moderator:''
 + 
 + 
 +'''Thursday, October 15, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 + 
 +''Speaker:''
 + 
 +''Title:'' TBA
 + 
 +''Abstract:'' TBA
 + 
 +''Moderator:''
 + 
 + 
 +'''Thursday, October 29, 2020, 1PM-2PM''' (Eastern US; GMT-4);
''Speaker:'' ''Speaker:''
Line 101: Line 152:
---- ----
 +
 +
 +'''Thursday, June 25, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 +
 +''Speaker:'' [http://fouque.faculty.pstat.ucsb.edu/ Jean-Pierre Fouque], University of California Santa Barbara
 +
 +[[Image:JP1.jpg]]
 +
 +''Title:'' Accuracy of Approximation for Portfolio Optimization under Multiscale Stochastic Environment
 +''[https://youtu.be/RMe7td6r-M0 Recorded Video]''
 +
 +
 +''Abstract:'' For the problem of portfolio optimization when returns and volatilities are driven by stochastic factors, approximations for value functions and optimal strategies have been proposed in the regime where these factors are running on slow and fast timescales. But, until now, rigorous results of accuracy of these approximations have only been obtained for cases that can be linearized, typically limited to power utilities and a single factor driving the environment. This talk is about treating cases with general utility functions and multi factors. Our approach is to construct sub- and super- solutions to the fully nonlinear problem such that their difference is at the desired level of accuracy. We first present a regular perturbation case with a power utility and two factors nearly fully correlated. Then, we show how to deal with a singular perturbation in the case of a general utility function with a fast varying factor.
 +Joint work with Maxim Bichuch, Ruimeng Hu, and Ronnie Sircar.
 +
 +''Moderator:'' [http://www.columbia.edu/~ac3827/ Agostino Capponi], Department of Industrial Engineering and Operations Research, Columbia University
 +
 +
 +
 +
 +'''Thursday, June 11, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 +
 +''Speaker:'' [https://people.math.ethz.ch/~patrickc/ Patrick Cheridito], ETH Zurich
 +
 +[[Image:Patrick1.jpg]]
 +
 +''Title:'' Deep optimal stopping
 +''[https://youtu.be/wob_EhtFLR8 Recorded Video]''
 +
 +''Abstract:'' I present a deep learning method for optimal stopping problems which directly learns the optimal stopping rule from Monte Carlo samples. As such, it is broadly applicable in situations where the underlying randomness can efficiently be simulated. The approach is tested on three problems: the pricing of a Bermudan max-call option, the pricing of a callable multi barrier reverse convertible and the problem of optimally stopping a fractional Brownian motion. In all three cases it produces very accurate results in high-dimensional situations with short computing times. Joint work with Sebastian Becker and Arnulf Jentzen.
 +
 +''Moderator:'' '''[http://sebastian.statistics.utoronto.ca/ Sebastian Jaimungal]''', Department of Statistical Sciences, University of Toronto
 +
 +
 +
 +
 +
 +'''Thursday, May 28, 2020, 1PM-2PM''' (Eastern US; GMT-4);
 +
 +''Panel Discussion:'' '''Energy Markets'''
 +
 +''[https://www.youtube.com/watch?v=0FoI7Akh8o4 Recorded Video]''
 +
 +''Abstract:'' The aim is to discuss recent events in energy/electricity/commodity markets, such as negative prices, as well as related mathematical modeling challenges.
 +
 +''Panelists:''
 +
 +[[Image:ReneAid1.jpg]]
 +<jsmath>\qquad </jsmath> [https://sites.google.com/view/reneaid Rene Aid], Université Paris-Dauphine, France
 +
 +[[Image:swindle1.jpg]]
 +<jsmath>\qquad </jsmath> [https://scovilleriskpartners.com/team/glen-swindle/ Glen Swindle], Scoville Risk Partners, USA
 +
 +[[Image:Zef1.jpg]]
 +<jsmath>\qquad </jsmath> Zef Lokhandwalla, Bloomberg LP, USA
 +
 +[[Image:Mike1.jpg]]
 +<jsmath>\qquad </jsmath> [http://ludkovski.faculty.pstat.ucsb.edu/ Mike Ludkovski], University of California Santa Barbara, USA
 +
 +''Moderator:'' [https://sircar.princeton.edu/ Ronnie Sircar], ORFE, Princeton University
 +
 +
Line 110: Line 223:
''Title:'' '''The Geometry of Money and the Perils of Parameterization''' ''Title:'' '''The Geometry of Money and the Perils of Parameterization'''
 +
 +''[https://www.youtube.com/watch?v=KKf223qn3Po Recorded Video]''
''Abstract:'' Market participants use parametric forms to make sure prices are orderly aligned. It may prevent static arbitrages but could it lead to dynamic arbitrages? ''Abstract:'' Market participants use parametric forms to make sure prices are orderly aligned. It may prevent static arbitrages but could it lead to dynamic arbitrages?
Line 128: Line 243:
''Title:'' '''A Data-driven Market Simulator for Small Data Environments''' ''Title:'' '''A Data-driven Market Simulator for Small Data Environments'''
-''[https://siam.zoom.us/rec/share/yvJ_Buj25GNJcp3s9HqYfo1xRYHnX6a8hCAarvQJyU7fcgPdtmMS1Z04wH7LmW1f Recorded Video]''+''[https://www.youtube.com/watch?v=xXwHBQFOVoc Recorded Video]''
''Abstract:'' In this talk we investigate how Deep Hedging brings a new impetus into the modelling of financial markets. While a DNN-based data-driven market generation unveils a new and highly flexible way of modelling financial time series, it is by no means "model-free". In fact, the concrete modelling choice is decisive for the features of the resulting generative model. After a very short walk through historical market models we proceed to neural network based generative modelling approaches for financial time series. We then investigate some of the challenges to achieve good results in the latter, and highlight some applications and pitfalls. While most generative models tend to rely on large amounts of training data, we present here a parsimonious generative model that works reliably even in environments where the amount of available training data is notoriously small. Furthermore, we discuss how a rough paths perspective combined with a parsimonious Variational Autoencoder framework provides a powerful way for encoding and evaluating financial time series data in such environments. Lastly, we also discuss some pricing and hedging considerations in a DNN framework and their connection to Market Generation. The talk is based on joint work with H. Buehler, I. Perez Arribaz, T. Lyons and B. Wood. ''Abstract:'' In this talk we investigate how Deep Hedging brings a new impetus into the modelling of financial markets. While a DNN-based data-driven market generation unveils a new and highly flexible way of modelling financial time series, it is by no means "model-free". In fact, the concrete modelling choice is decisive for the features of the resulting generative model. After a very short walk through historical market models we proceed to neural network based generative modelling approaches for financial time series. We then investigate some of the challenges to achieve good results in the latter, and highlight some applications and pitfalls. While most generative models tend to rely on large amounts of training data, we present here a parsimonious generative model that works reliably even in environments where the amount of available training data is notoriously small. Furthermore, we discuss how a rough paths perspective combined with a parsimonious Variational Autoencoder framework provides a powerful way for encoding and evaluating financial time series data in such environments. Lastly, we also discuss some pricing and hedging considerations in a DNN framework and their connection to Market Generation. The talk is based on joint work with H. Buehler, I. Perez Arribaz, T. Lyons and B. Wood.

Revision as of 13:19, 14 August 2020

SIAG/FME virtual seminars series

The series of virtual talks, started by the SIAM Activity Group on Financial Mathematics and Engineering (SIAG/FME), aims at keeping the mathematical finance community connected worldwide beyond traditional formats. The goal is to host a diverse, across all dimensions, lineup of prominent speakers that will present the latest developments in the area of financial mathematics and engineering.

\diamond The talks will run every other week, and at least until the next SIAG/FME Biennial Meeting in June 2021

\diamond The talks will alternate with those set up by the Bachelier Finance Society

\diamond All talks will be delivered remotely using Zoom.

\diamond The talks are open to the public. Due to security reasons, all attendees have to register.

\diamond The registration link will be posted on this web-site, next to the each seminar date below. The detailed information about each talk, and the registration link will be also distributed via SIAG/FME Mailing List.

\diamond The registration is quick (asks only for your name and email), and once registered, you will receive an email with the link to the meeting(s), which is unique to you, so please do not share that email. The registration is usually valid for multiple future talks.


SIAG/FME Seminar Series Committee:

\quad Agostino Capponi (SIAG/FME Chair, Columbia University)

\quad Igor Cialenco (SIAG/FME Program Director, Illinois Institute of Technology)

\quad Sebastian Jaimungal (University of Toronto)

\quad Ronnie Sircar (Princeton University)


Forthcoming Talks



Thursday, July 09, 2020, 1PM-2PM (Eastern US; GMT-4);

There will be no seminar due to (virtual) 2020 SIAM Annual Meeting


Thursday, July 23, 2020, 1PM-2PM (Eastern US; GMT-4); Registration Link

Early Career Talks


Ruimeng Hu, University of California Santa Barbara

Image:Ruimeng1.jpg

Title: Deep fictitious play for stochastic differential games

Abstract: Differential games, as an offspring of game theory and optimal control, provide the modeling and analysis of conflict in the context of a dynamic system. Computing Nash equilibria is one of the core objectives in differential games, with a major bottleneck coming from the notorious intractability of N-player games. This leads to the difficulty of the curse of dimensionality, which will be overcome by the algorithms of deep fictitious play using machine learning tools. We discuss the approaches to solve open-loop and Markovian Nash equilibria with convergence analysis.


A. Max Reppen, Boston University

Image:Max1.jpg

Title: Discrete dividend payments in continuous time

Abstract: We propose a model in which dividend payments occur at regular, deterministic intervals in an otherwise continuous model. This contrasts traditional models where either the payment of continuous dividends is controlled or the dynamics are given by discrete time processes. Moreover, between two dividend payments, the structure allows for other types of control; we consider the possibility of equity issuance at any point in time. The value is characterized as the fixed point of an optimal control problem with periodic initial and terminal conditions. We prove the regularity and uniqueness of the corresponding dynamic programming equation, and the convergence of an efficient numerical algorithm that we use to study the problem. The model enables us to find the loss caused by infrequent dividend payments. We show that under realistic parameter values this loss varies from around 1% to 24% depending on the state of the system, and that using the optimal policy from the continuous problem further increases the loss.


Moderator: Igor Cialenco, Illinois Institute of Technology



Thursday, August 06, 2020, 1PM-2PM (Eastern US; GMT-4);

There will be no seminar.


Thursday, August 20, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker:

Title: TBA

Abstract: TBA

Moderator:


Thursday, September 3, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker:

Title: TBA

Abstract: TBA

Moderator:



Thursday, September 17, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker: Rene Carmona, ORFE and PACM, Princeton University


Title: TBA

Abstract: TBA

Moderator:



Thursday, October 1, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker:

Title: TBA

Abstract: TBA

Moderator:


Thursday, October 15, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker:

Title: TBA

Abstract: TBA

Moderator:


Thursday, October 29, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker:

Title: TBA

Abstract: TBA

Moderator:


.

Past Talks



Thursday, June 25, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker: Jean-Pierre Fouque, University of California Santa Barbara

Image:JP1.jpg

Title: Accuracy of Approximation for Portfolio Optimization under Multiscale Stochastic Environment Recorded Video


Abstract: For the problem of portfolio optimization when returns and volatilities are driven by stochastic factors, approximations for value functions and optimal strategies have been proposed in the regime where these factors are running on slow and fast timescales. But, until now, rigorous results of accuracy of these approximations have only been obtained for cases that can be linearized, typically limited to power utilities and a single factor driving the environment. This talk is about treating cases with general utility functions and multi factors. Our approach is to construct sub- and super- solutions to the fully nonlinear problem such that their difference is at the desired level of accuracy. We first present a regular perturbation case with a power utility and two factors nearly fully correlated. Then, we show how to deal with a singular perturbation in the case of a general utility function with a fast varying factor. Joint work with Maxim Bichuch, Ruimeng Hu, and Ronnie Sircar.

Moderator: Agostino Capponi, Department of Industrial Engineering and Operations Research, Columbia University



Thursday, June 11, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker: Patrick Cheridito, ETH Zurich

Image:Patrick1.jpg

Title: Deep optimal stopping Recorded Video

Abstract: I present a deep learning method for optimal stopping problems which directly learns the optimal stopping rule from Monte Carlo samples. As such, it is broadly applicable in situations where the underlying randomness can efficiently be simulated. The approach is tested on three problems: the pricing of a Bermudan max-call option, the pricing of a callable multi barrier reverse convertible and the problem of optimally stopping a fractional Brownian motion. In all three cases it produces very accurate results in high-dimensional situations with short computing times. Joint work with Sebastian Becker and Arnulf Jentzen.

Moderator: Sebastian Jaimungal, Department of Statistical Sciences, University of Toronto



Thursday, May 28, 2020, 1PM-2PM (Eastern US; GMT-4);

Panel Discussion: Energy Markets

Recorded Video

Abstract: The aim is to discuss recent events in energy/electricity/commodity markets, such as negative prices, as well as related mathematical modeling challenges.

Panelists:

Image:ReneAid1.jpg \qquad Rene Aid, Université Paris-Dauphine, France

Image:swindle1.jpg \qquad Glen Swindle, Scoville Risk Partners, USA

Image:Zef1.jpg \qquad Zef Lokhandwalla, Bloomberg LP, USA

Image:Mike1.jpg \qquad Mike Ludkovski, University of California Santa Barbara, USA

Moderator: Ronnie Sircar, ORFE, Princeton University



Thursday, May 14, 2020, 1PM-2:30PM (Eastern US; GMT-4);

Speaker: Bruno Dupire, Head of Quantitative Research, Bloomberg LP

Image:Bruno1.jpg

Title: The Geometry of Money and the Perils of Parameterization

Recorded Video

Abstract: Market participants use parametric forms to make sure prices are orderly aligned. It may prevent static arbitrages but could it lead to dynamic arbitrages? Markets trade thousands of underlying, each one with tens or even hundreds of options, quoted throughout the day. Needless to say, the quotes are not generated manually. They are automated and derived from a functional form with a few parameters. If we know this parameterization, we know in advance how the prices tomorrow of many traded securities will belong to a low dimensional (number of parameters) manifold in a high dimensional (number of securities). If the vector of today prices does not belong to the convex hull of the manifold it creates arbitrage. We examine market practice (Black-Scholes, stochastic volatility models, interest rate interpolation by piecewise constant instantaneous forward rates, converging implied volatilities for extreme strikes in FX...) and show that many violate the no arbitrage condition.

Moderator: Igor Cialenco, Illinois Institute of Technology



Thursday, April 30, 2020, 1PM-2PM (Eastern US; GMT-4);

Speaker: Blanka Horvath, Department of Mathematics, King's College London, UK

Image:Horvath1.jpg


Title: A Data-driven Market Simulator for Small Data Environments

Recorded Video

Abstract: In this talk we investigate how Deep Hedging brings a new impetus into the modelling of financial markets. While a DNN-based data-driven market generation unveils a new and highly flexible way of modelling financial time series, it is by no means "model-free". In fact, the concrete modelling choice is decisive for the features of the resulting generative model. After a very short walk through historical market models we proceed to neural network based generative modelling approaches for financial time series. We then investigate some of the challenges to achieve good results in the latter, and highlight some applications and pitfalls. While most generative models tend to rely on large amounts of training data, we present here a parsimonious generative model that works reliably even in environments where the amount of available training data is notoriously small. Furthermore, we discuss how a rough paths perspective combined with a parsimonious Variational Autoencoder framework provides a powerful way for encoding and evaluating financial time series data in such environments. Lastly, we also discuss some pricing and hedging considerations in a DNN framework and their connection to Market Generation. The talk is based on joint work with H. Buehler, I. Perez Arribaz, T. Lyons and B. Wood.

Moderator: Agostino Capponi, Department of Industrial Engineering and Operations Research, Columbia University



Thursday, April 16, 2020, 1PM-2PM (Eastern US; GMT-4)

Speaker: Mete Soner, Department of Operations Research and Financial Engineering, Princeton University

Image:soner.jpg

Title: Trading with impact

Recorded Video

Abstract: It is well known that large trades cause unfavorable price impact resulting in trading losses. These losses are particularly high when the underlying instrument is not liquid enough or when the trade size is large. Other type of market frictions such as transaction costs also cause similar effects. When one considers hedging or portfolio management or equilibrium models these effects must be taken into account. After describing widely used approaches of Cetin, Jarrow & Protter and Almgren & Chris, I first study the impact of resilience and then the structure of the optimal portfolios. This talk will be a summary of many results obtained jointly with many people including, Peter Bank, Bruno Bouchard, Umut Cetin, Ludovic Moreau, Johannes Muhle-Karbe, Nizar Touzi and Moritz Voss.

Moderator: Sebastian Jaimungal, Department of Statistical Sciences, University of Toronto

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