Tag Archives: data

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: 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.

FinTech Seminar Series

FinTech Applications of AI & Machine Learning in B2B space

With its formidable datasets within domain sets like credit default, economic, security ratings, firmographic & people data, Moody’s is well positioned to develop new products to serve the needs of its clients. The Moody’s Analytics Accelerator group aims to identify, research and develop new business products for new clients and new markets using sophisticated AI & Machine learning techniques that are now ubiquitous in the Consumer space. This talk will focus on how we have brought to market products in the Compliance, Loan Origination, Financial Spreading and Commercial Real Estate domains.

Bio

Rakesh Parameshwar is a Senior Director for Strategy & Innovation in the Moody’s Analytics Accelerator (MAA) group. The MAA group aims to identify, research, and develop new business opportunities, with a special focus on emerging technologies like AI & ML. Before joining Moody’s Analytics in 2018, he was in charge of business strategy and product development for Bloomberg’s Desktop API, Alerts and Quant Solutions group. Prior to this, he had extensive experience working for global banks where he advised clients with risk management solutions and built technology solutions. Rakesh has an MBA from NYU Stern, a Bachelor’s degree in Electrical Engineering from IIT Kharagpur in India and a certificate in Quantitative Finance (CQF)

When

Wednesday January 29, 2020
6 PM – 7PM

Where

University of Waterloo @ Manhattan Institute of Management
2 Washington Street, 17th floor
New York, New York