Tag Archives: Seminar

Cornell – Citi Financial Data Science Webinars

Cornell Engineering. Operations Research and Information Engineering. Financial Engineering Manhattan

Featuring Machine Learning experts from Cornell, Citi, and more…

You and your colleagues are invited to attend the Cornell – Citi Financial Data Science Webinars. Through the online talks in Spring 2021, we are excited to collaborate with Citi in highlighting machine learning applications in finance.

All webinars are from 5:00 pm to 6:00 pm EDT.

This webinar is free and open to all guests. Registration is required (RSVP). You will receive the webinar link and dial-in info upon registration (the confirmation email will come from
no-reply@zoom.us)

Date: Tuesday, May 11th, 2021
Time: 5:00 pm – 6:00 pm EDT
Speaker: Nicholas Venuti | Morgan Stanley
Title: Advances in Sequential Deep Learning

Abstract

Sequential data serves as the basis for many real-world applications such as machine translation, voice-to-text conversion, and motion tracking. As the order and context of past datapoints are needed for future prediction, these datasets must be modelled temporally either by constructing features or utilizing recursive models.

Many state-of-the-art solutions include recurrent neural networks (RNNs), as these methods are able to exploit both techniques by capturing the time-based nature of these systems while leveraging the expressiveness of deep learning architectures. While RNN variants such as gated recurrent units (GRUs) and long-short term memory (LSTM) networks have dominated sequential deep learning, recent studies have found that temporal convolutional networks (TCNs) can match or exceed these networks in prediction performance while greatly reducing the training time of the models.

In this talk, we will provide a general overview of four common architectures: vanilla RNNs, GRUs, LSTMs, and TCNs. We will compare the model stability, memory requirements, and training times of each. Lastly, we will review the performance of these architectures on a variety of benchmark image, text, and audio datasets.

Program Agenda:

  1. Nicholas Venuti’s Presentation
  2. Q&A
  3.  “Lightning Talk” – featuring CFEM Alumnus Vineel Yellapantula
  4. Discussion

Speaker Bio

Nicholas Venuti is a Machine Learning Research Scientist in Morgan Stanley’s Machine Learning Center of Excellence, whose main research focus is deep learning architectures for time-series predictions. After obtaining his Bachelor of Science in Biomolecular Chemical Engineering at North Carolina State University, Nicholas began his career working in data analytics at an environmental consultancy. Afterwards, he obtained his Masters of Data Science at the University of Virginia, where his thesis studied using NLP to identify semantic shifts in religious and political texts as an early indicator for extremist views.

“Lightning Talk” Info:

CFEM alumnus Vineel Yellapantula will discuss his summer project at AbleMarkets under Prof. Irene Aldridge, “Quantifying Sentiment in SEC Filings.” By utilizing Natural Language Processing techniques and the BERT model, he explored how text present in the MD&A section of 10-K and 10-Q filings affect the performance of the stock. He also tested the efficacy of multiple factors derived from these texts using a long-short market-neutral trading strategy.

Vineel Yellapantula (MFE Cornell ’20, MSc Mathematics BITS Pilani ’18) is a Decision Analytics Associate at ZS Associates.

We hope to see you online!

The Cornell-Citi Team

**Please excuse any duplication of this announcement


If you are interested in our past seminars, you are welcome to subscribe to our YouTube Channel and watch our videos!

Past CFEM Events

February 16th, 2021
Speaker: Charles-Albert Lehalle (Capital Fund Management)
Title of Presentation: “An Attempt to Understand Natural Language Processing and Illustration on a Financial Dataset”

March 9th, 2021
Speaker: Bruno Dupire (Bloomberg)
Title of Presentation: “Some Applications of Machine Learning in Finance”

April 13th, 2021
Speaker: Peter Carr (NYU) and Lorenzo Torricelli (University of Parma)
Title of Presentation: “Stoptions” and “Additive Logistic Processes in Option Pricing” (PDFs available upon request)

Brooklyn Quant Experience Lecture Series: George Skiadopoulos

Brooklyn Quant Experience Lecture Series, NYU Tandon

George Skiadopoulos, Professor of Finance in the School of Economics and Finance, Queen Mary University of London and Department of Banking and Financial Management, University of Piraeus, will give the following talk on Thursday, April  22nd at 9:30 AM EST. 
*Kindly note that we have changed the time to 9:30 AM on Thursdays. The new time change allows our invited international guests to join these important virtual talks.

Attend Virtually >>

Meeting ID: 962 1586 0443
Password: FREBQEGS

Title

The Contribution of Frictions to Expected Returns: An Options-based Estimation Approach

Abstract

We document that properly scaled deviations from put-call parity estimate the contribution of market frictions to expected returns (CFER) accurately, by means of a nonparametric theoretically founded identification strategy. The required conditions are that our estimator predicts the underlying but not the synthetic stock’s return. The data satisfy the two conditions; the alphas of the estimated CFER-sorted spread portfolios are up to 1.86% per month. The estimated CFER covaries non-linearly with proxies of market frictions. An agent-based equilibrium model explains our findings; alphas can be twice as big as the round-trip transaction costs, thus corroborating the accuracy of our estimator.

Bio

George Skiadopoulos is a Professor of Finance at the Department of Banking and Financial Management of the University of Piraeus and at the School of Economics and Finance of Queen Mary University of London. He is also Director and co-Founder of the Institute of Finance and Financial Regulation (IFFR, www.iffr.gr) and an Honorary Senior Visiting Fellow at Business School (formerly Cass) City, University of London.

His research interests and professional expertise lie in asset pricing, commodities, financial derivatives, risk management, and portfolio management. He has published in academic journals, including the Management Science, Journal of Financial and Quantitative Analysis, Journal of Business and Economic Statistics, Journal of Banking and Finance, and the Journal of Financial Markets. He has been awarded research grants by the Chicago Mercantile Exchange Foundation Group, the J.P. Morgan Research Centre in Commodities at University of Denver Colorado, the Athens Derivatives Exchange, and the Portuguese Foundation for Science and Technology (FCT). His work has been featured in CFO Magazine, Economonitor, Forbes, Market Watch, Seeking Alpha, The Verdict Wall Street Journal, and the CFA, Citigroup, and Global Commodities Applied Research Digest Volumes.

Professor Skiadopoulos has been consulting financial institutions. He has also worked as a Research Fellow at the Financial Options Research Centre at Warwick Business School, the R&D Group of the Athens Derivatives Exchange, and he has provided various executive training courses.

He holds a Ph.D. in Finance from the University of Warwick, an M.Sc. In Mathematical Economics and Econometrics from the London School of Economics, and a Ptychion (ranked first in his graduating class) in Economics from the Athens University of Economics and Business. For more information, visit https://sites.google.com/view/george-skiadopoulos.

Cornell – Citi Financial Data Science Webinars

Cornell Engineering. Operations Research and Information Engineering. Financial Engineering Manhattan

Featuring Machine Learning experts from Cornell, Citi, and more…

You and your colleagues are invited to attend the Cornell – Citi Financial Data Science Webinars. Through the online talks in Spring 2021, we are excited to collaborate with Citi in highlighting machine learning applications in finance.

All webinars are from 5:00 pm to 6:00 pm EST.

This webinar is free and open to all guests. Registration is required (RSVP). You will receive the webinar link and dial-in info upon registration (the confirmation email will come from
no-reply@zoom.us)

Date: Tuesday, March 9th, 2021
Time: 5:00 pm – 6:00 pm EST
Speaker: Bruno Dupire | Bloomberg L.P.
Title: “Some Applications of Machine Learning in Finance”

Abstract

Finance has always tried to make use of all available information to optimize investment decisions. The advent of efficient Machine Learning algorithms, alternative data, and computational powers has deeply impacted many fields in finance. To mention a few, rotation of factors according to market regimes in factor investing, option pricing and hedging, anomaly detection, covariance matrix cleaning, transaction cost analysis. Alternative data include texts from news and tweets, supply chain data, satellite images, vessel routes, weather data, credit card transactions, geolocation data.

This overflow of information opens the door to endless number crunching and apophenia. The desperate search for a signal leads to overfitting and unstable relationships, so beware. As I like to say, the market is a machine made to destroy the signal!

Program Agenda:

  1. Bruno Dupire’s Presentation
  2. Q&A
  3. “Lightning Talk” – Yumeng Ding
  4. Discussion

Speaker Bio

Bruno Dupire is head of Quantitative Research at Bloomberg L.P., which he joined in 2004. Prior to this assignment in New York, he has headed the Derivatives Research teams at Société Générale, Paribas Capital Markets, and Nikko Financial Products where he was a Managing Director. He is best known for having pioneered the widely used Local Volatility model (simplest extension of the Black-Scholes-Merton model to fit all option prices) in 1993 and the Functional Itô Calculus (framework for path dependency) in 2009. He is a Fellow and Adjunct Professor at NYU and he is in the Risk Magazine “Hall of Fame”. He is the recipient of the 2006 “Cutting Edge Research” award of Wilmott Magazine and of the Risk Magazine “Lifetime Achievement” award for 2008.

After a Master’s degree in Artificial Intelligence in 1982 and a Ph.D. in Numerical Analysis in 1985, he has conducted in 1987-88 a study to apply Neural Nets to time series forecasting for Caisse des Dépôts et Consignations. He has been applying Machine Learning to a variety of problems in Finance and has given many lectures on the topic in the Americas, Europe, and Asia over the past few years.

“Lightning Talk” Info:

CFEM alumna Yumeng Ding will discuss her team capstone project, which was titled, “Interpreting Machine Learning Models.” By utilizing Machine Learning interpretability models, the Cornell CFEM team, sponsored by Alliance Bernstein, explored how black-box models can be explained and evaluated in finance. The team analyzed S&P 500 constituents and explored the interpretability of some widely-used ML modes.

Yumeng Ding (MFE Cornell ’20, BA Finance Fudan University‘15) is a soon-to-be analyst in Strategic and Analytics at Deutsche Bank.

We hope to see you online!

The Cornell-Citi Team

**Please excuse any duplication of this announcement


If you are interested in our past seminars, you are welcome to subscribe to our YouTube Channel and watch our videos!

Past CFEM Events

February 16th, 2021
Speaker: Charles-Albert Lehalle (Capital Fund Management)
Title of Presentation: “An Attempt to Understand Natural Language Processing and Illustration on a Financial Dataset”

Upcoming CFEM Events

April 13th, 2021
Speaker: Peter Carr (NYU)
Title of Presentation: Adding Optionality

May 11th, 2021
Speaker: Raja Velu (Syracuse University)
Title of Presentation: TBD

Brooklyn Quant Experience Lecture Series: Laura Ballotta

Brooklyn Quant Experience Lecture Series, NYU Tandon

 Laura Ballotta, Reader in Financial Mathematics at Cass Business School, will give the following talk on Thursday, March 4th at 9:30 AM EST. 
*Kindly note that we have changed the time to 9:30 AM on Thursdays. The new time change allows our invited international guests to join these important virtual talks.

Attend Virtually >>

Meeting ID: 999 3949 8124
Password: FREBQELB

Title

Fourier-based methods for the management of complex insurance products

Abstract

This paper proposes a framework for the valuation and the management of complex life insurance contracts, whose design can be described by a portfolio of embedded options, which are activated according to one or more triggering events. These events are in general monitored discretely over the life of the policy, due to the contract terms. Similar designs can also be found in other contexts, such as counterparty credit risk for example.

The framework is based on Fourier transform methods as they allow to derive convenient closed analytical formulas for a broad spectrum of underlying dynamics. Multidimensionality issues generated by the discrete monitoring of the triggering events are dealt with efficiently designed Monte Carlo integration strategies. We illustrate the tractability of the proposed approach by means of a detailed study of ratchet variable annuities, which can be considered a prototypical example of these complex structured products.

This is joint work with Ernst Eberlein, Thorsten Schmidt and Raghid Zeineddine.

Bio

Laura Ballotta is a reader in Financial Mathematics at Cass Business School, London. She works in the areas of quantitative finance and risk management and has written on topics including stochastic modelling for financial valuation and risk management, numerical methods aimed at supporting financial applications, and the interplay between finance and insurance. She holds a Ph.D. in Mathematical and Computational Methods for Economics and Finance from the Università degli Studi di Bergamo (Italy).

Brooklyn Quant Experience Lecture Series: J. Doyne Farmer

Brooklyn Quant Experience Lecture Series, NYU Tandon

J. Doyne Farmer, Director of Complexity Economics at the Institute for New Economic Thinking at the Oxford Martin School, and Baillie Gifford Professor of Mathematics at the University of Oxford, will give the following talk on Thursday, February 25th at 9:30 AM EST. 
*Kindly note that we have changed the time to 9:30 AM on Thursdays. The new time change allows our invited international guests to join these important virtual talks.

Attend Virtually >>

Meeting ID: 994 9055 8266
Password: FREBQEDF

Title

How Market Ecology Explains Market Malfunction

Abstract

Standard approaches to the theory of financial markets are based on equilibrium and efficiency. Here we develop an alternative based on concepts and methods developed by biologists, in which the wealth invested in a financial strategy is like the abundance of a species. We study a toy model of a market consisting of value investors, trend followers, and noise traders. We show that the average returns of strategies are strongly density-dependent, i.e. they depend on the wealth invested in each strategy at any given time. In the absence of noise, the market would slowly evolve toward an efficient equilibrium, but the statistical uncertainty in profitability (which is adjusted to match real markets) makes this noisy and uncertain. Even in the long term, the market spends extended periods of time away from perfect efficiency. We show how core concepts from ecology, such as the community matrix and food webs, give insight into market behavior. The wealth dynamics of the market ecology explain how market inefficiencies spontaneously occur and give insight into the origins of excess price volatility and deviations of prices from fundamental values.

Bio

J. Doyne Farmer is Director of Complexity Economics at the Institute for New Economic Thinking at the Oxford Martin School, and Baillie Gifford Professor of Mathematics at the University of Oxford. He is also an External Professor at the Santa Fe Institute. His current research is in economics, including financial stability, sustainability, technological change, and economic simulation. He was a founder of Prediction Company, a quantitative automated trading firm that was sold to the United Bank of Switzerland in 2006. His past research spans complex systems, dynamical systems, time series analysis, and theoretical biology. He founded the Complex Systems Group at Los Alamos National Laboratory, and while a graduate student in the 1970s he built the first wearable digital computer, which was successfully used to predict the game of roulette.

Cornell – Citi Financial Data Science Webinars

Cornell Engineering. Operations Research and Information Engineering. Financial Engineering Manhattan

Featuring Machine Learning experts from Cornell, Citi, and more…

You and your colleagues are invited to attend the Cornell – Citi Financial Data Science Webinars. Through the online talks in Spring 2021, we are excited to collaborate with Citi in highlighting machine learning applications in finance.

All webinars are from 5:00 pm to 6:00 pm EST.

This webinar is free and open to all guests. Registration is required (RSVP). You will receive the webinar link and dial-in info upon registration (the confirmation email will come from
no-reply@zoom.us)

Date: Tuesday, Feb. 16th, 2021
Time: 5:00 pm – 6:00 pm EST
Speaker: Charles-Albert Lehalle | Capital Fund Management
Title: “An Attempt to Understand Natural Language Processing And Illustration On A Financial Dataset”

Abstract

I will present a theoretical analysis of word2vec language models and explain how the resulting understanding can generalize to more nonlinear ones (like BERT).

This analysis relies on trying to exhibit a generative model allowing to explain the asymptotic meaning of the loss functions used by these kinds of models. In particular, it allows to produce synthetic languages having a controlled number of “synonyms” and try to learn them with standard algorithms. I will then show how learning the language of financial news reflects (or not) the celebrated Loughran-McDonald sentiment lexicon. This on-going work is conducted with Mengda Li (ENS Paris Saclay).

Program Agenda:

1) Charles-Albert Lehalle’s Presentation
2) Q&A
3) “Lightning Talk” about NLP featuring CFEM alumna Silvia Ruiz
4) Discussion

Speaker Bio

Currently Head of Data Analytics at Capital Fund Management (CFM, Paris) and visiting researcher at Imperial College (London), Charles-Albert Lehalle studied machine learning for stochastic control during his PhD 20 years ago. He started his career being in charge of AI projects at the Renault research center and moved to the financial industry with the emergence of automated trading in 2005. He became an expert in market microstructure and has been appointed Global Head of Quantitative Research at Crédit Agricole Cheuvreux, and Head of Quantitative Research on Market Microstructure in the Equity Brokerage and Derivative Department of Crédit Agricole Corporate Investment Bank after the crisis. He provided research and expertise on these topics to investors and intermediaries, and is often heard by regulators and policy-makers like the European Commission, the French Senate, the UK Foresight Committee, etc. He chairs the Index Advisory Group of Euronext, is a member of the Scientific Committee of the French regulator (AMF), and has been part of the Consultative Workgroup on Financial Innovation of the European Authority (ESMA).

Moreover, Charles-Albert received the 2016 Best Paper Award in Finance from Europlace Institute for Finance (EIF) and published more than fifty academic papers and book chapters. He co-authored the book “Market Microstructure in Practice” (World Scientific Publisher, 2nd ed 2018), analyzing the main features of modern markets. He is chairing the “Finance and Insurance Reloaded” transverse research program of the Louis Bachelier Institute; this program explores the influence of new technologies (from blockchain to artificial intelligence) on our industries.

“Lightning Talk” Info: CFEM alumna Silvia Ruiz will discuss her capstone project, which was titled, “How to Predict Stock Movements Using NLP Techniques.” By utilizing NLP techniques, the Cornell CFEM team, sponsored by Rebellion Research, explored whether investing signals can be extracted financial data. The team analyzed 10K and 10Q reports from S&P500 companies using techniques such as FinBERT and word2vec.

Silvia Ruiz (MFE Cornell ’20, BS Mathematics Universidad Del Valle ’17) has experience working as a Data Scientist for Corporación Multi Inversiones and as a Risk Analytics Analyst for Morgan Stanley.

We hope to see you online!

The Cornell-Citi Team

**Please excuse any duplication of this announcement

Upcomng CFEM Events

March 9th, 2021

Speaker: Bruno Dupire (Bloomberg L.P.)

Title of Presentation: Some Applications of Machine Learning in Finance

April 13th, 2021

Speaker: Peter Carr (NYU)

Title of Presentation: Adding Optionality

May 11th, 2021

Speaker: Raja Velu (Syracuse University)

Title of Presentation: TBD

Brooklyn Quant Experience Lecture Series: Keith Lewis

Brooklyn Quant Experience Lecture Series, NYU Tandon

Welcome back to the spring 2021 semester. We hope that you all are doing well and look forward to a productive year.

Below please find the first BQE Lecture Series scheduled this semester. Kindly note that we have changed the time to 9:30 AM on Thursdays. The new time change allows our invited international guests to join these important virtual talks.

Keith Lewis, Managing Member of KALX, LLC, will give the following talk on Thursday, February 4th at 9:30 AM EST.

Attend Virtually >>

Meeting ID: 953 8089 0352
Password: FREBQEKL

Title

A Unified Model of Derivative Securities

Abstract

Market instruments can be bought or sold at a price and ownership entails cash flows. Shares of instruments can be traded based on available information that accrue to positions. The mark-to-market value and amounts involved with trading correspond to price and cash flows. The Unified Model demonstrates the connection between dynamic trading and how to value, hedge, and manage the risk of a derivative security. It can be used for any portfolio of instruments. Every arbitrage-free model of prices and cash flows is parameterized by a vector-valued martingale whose components are indexed by market instruments and a positive, adapted process called a deflator. If repurchase agreements are available they determine a canonical deflator.

Bio

Keith A. Lewis started his professional career as a J. D. Tamarkin assistant professor at Brown where he pioneered the use of computers as a classroom tool in mathematics. He went on to a Wall Street career at Bankers Trust, Morgan Stanley, and Banc of America Securities where his team built the equity derivative libraries used by the trading desk to run their business. Since 2002 Keith has been a consultant for hedge funds building valuation models and tools for exploring, testing, and implementing trading strategies. Other projects include insurance companies involved with GPU computing, law firms certifying tax conformance of trades, and municipal bond advance refunding. He has spun off a number of open source projects based on his experience with building tools his clients found useful and has been using them in courses he has taught at NYU, Rutgers, Cornell, and Columbia.

Brooklyn Quant Experience Lecture Series: Ting-Kam Leonard Wong

Brooklyn Quant Experience Lecture Series, NYU Tandon

The Department of Finance and Risk Engineering welcomes Ting-Kam Leonard Wong, Assistant Professor, Department of Statistical Sciences at the University of Toronto, to the BQE Lecture Series on Thursday, December 3, 2020, at 6 p.m. on Zoom.

Attend Virtually >>

Meeting ID: 916 8329 0348
Password: BQETKLW

Title

Statistical Modeling of Capital Distribution and Portfolio Optimization

Abstract

Capitalization-weighted market indexes such as S&P500 summarize the performance of equity markets and serve as benchmarks of many individual and institutional investors. The ranked weights of a market index are called the capital distribution. In stochastic portfolio theory, it was shown that market diversity, a measure of the concentration of capital distribution, is significantly correlated with the relative performance of active portfolio managers. Statistical modeling of the capital distribution, however, is lacking in the literature. In this talk, we present an ongoing study on capital distribution from the viewpoint of high dimensional time series analysis. Using dynamic factor models, we show that the notion of market diversity can be justified statistically in terms of the most efficient dimension reduction of capital distribution. We also introduce a nonparametric portfolio optimization in the framework of stochastic portfolio theory to exploit the stability of the capital distribution.

Bio

Leonard Wong is an assistant professor in the Departments of Statistical Sciences at the University of Toronto and Computer and Mathematical Sciences at the University of Toronto Scarborough. He completed his Ph.D. in Mathematics at the University of Washington, after which he was a non-tenure track assistant professor at the University of Southern California. His current research interests include probability, mathematical finance, and optimal transport.

Brooklyn Quant Experience Lecture Series: Oleg Bondarenko

Brooklyn Quant Experience Lecture Series, NYU Tandon

The Department of Finance and Risk Engineering welcomes Oleg Bondarenko, Professor, the University of Illinois at Chicago, to the BQE Lecture Series on Thursday, November 19, 2020, at 6 p.m. on Zoom.

Attend Virtually >>

Meeting ID: 991 8744 0867
Password: BQEOB

Title

Option-Implied Dependence and Correlation Risk Premium

Abstract

We propose a novel model-free approach to obtain the joint risk-neutral distribution among several assets that is consistent with all market prices of options on these assets and their weighted index. In an empirical application, we use options on the S&P 500 index and its nine industry sectors. The results of our analysis reveal that the option-implied dependence for the nine sectors is highly non-normal, asymmetric, and time-varying. The estimated joint distribution allows us to study two conditional correlations: when the market moves down or up. We find that the risk premium for the down correlation is strongly negative, while the opposite is true for the up correlation. These findings are consistent with the economic intuition that investors dislike the loss of diversification when markets fall, but they actually prefer high correlation when markets rally.

Bio

Oleg Bondarenko is a Professor of Finance at the University of Illinois at Chicago. He received an MS degree from the Moscow Institute of Physics and Technology and a Ph.D. from the California Institute of Technology. His primary research interests include option pricing, financial econometrics, and market microstructure. His research has appeared in top Finance and Economics journals and has been featured in Morningstar, Economist, and other media outlets.

Professor Bondarenko has consulted with several investment firms and currently serves on the Product Development Committee of Chicago Board Options Exchange (Cboe). His research has been supported by the Chicago Mercantile Exchange, Cboe, Institute of Structured Finance, and Derivatives, among others. He has written two research studies commissioned by Cboe. Professor Bondarenko held visiting faculty positions at the Olin School of Business, Washington University in St. Louis, and Kellogg School of Management, Northwestern University.

Brooklyn Quant Experience Lecture Series, NYU Tandon

The Department of Finance and Risk Engineering welcomes Oleg Bondarenko, Professor, the University of Illinois at Chicago, to the BQE Lecture Series on Thursday, November 19, 2020, at 6 p.m. on Zoom.

Attend Virtually >>

Meeting ID: 991 8744 0867
Password: BQEOB

Title

Option-Implied Dependence and Correlation Risk Premium

Abstract

We propose a novel model-free approach to obtain the joint risk-neutral distribution among several assets that is consistent with all market prices of options on these assets and their weighted index. In an empirical application, we use options on the S&P 500 index and its nine industry sectors. The results of our analysis reveal that the option-implied dependence for the nine sectors is highly non-normal, asymmetric, and time-varying. The estimated joint distribution allows us to study two conditional correlations: when the market moves down or up. We find that the risk premium for the down correlation is strongly negative, while the opposite is true for the up correlation. These findings are consistent with the economic intuition that investors dislike the loss of diversification when markets fall, but they actually prefer high correlation when markets rally.

Bio

Oleg Bondarenko is a Professor of Finance at the University of Illinois at Chicago. He received an MS degree from the Moscow Institute of Physics and Technology and a Ph.D. from the California Institute of Technology. His primary research interests include option pricing, financial econometrics, and market microstructure. His research has appeared in top Finance and Economics journals and has been featured in Morningstar, Economist, and other media outlets.

Professor Bondarenko has consulted with several investment firms and currently serves on the Product Development Committee of Chicago Board Options Exchange (Cboe). His research has been supported by the Chicago Mercantile Exchange, Cboe, Institute of Structured Finance, and Derivatives, among others. He has written two research studies commissioned by Cboe. Professor Bondarenko held visiting faculty positions at the Olin School of Business, Washington University in St. Louis, and Kellogg School of Management, Northwestern University.