Enable job alerts via email!

Google Cloud Next 2019 | Machine Learning Framework for Liquidity Risk Management

Liwaiwai

North Carolina

On-site

USD 80,000 - 100,000

Full time

22 days ago
Job description
Overview

Financial models have always been impacted by the lack of data (or many highly noisy data), by necessary mathematical simplifications such as normality or linearity assumptions and by a limited ability to use a wide set of features to better describe the problem and have greater predictive power. This is true in risk management, trading and portfolio construction, but even more so in liquidity models. This type of problem has a very high dimensionality and highly non-linear patterns and very sparse data.

The nature of the problem lends itself to be faced with machine learning techniques.

We have therefore decided over the years to test some of these techniques in the calibration of models for liquidity.

In this research, leveraging GPUs and cloud, we focused on the estimation of market liquidity, in particular of the transaction cost.

In this research, we tested random forests and neural networks for the estimation of tradable volumes showing a significant increase in the out-of-sample performances. We are now extending the experiment to the entire transaction cost and not to a single component of it by testing deep learning and in particular deep reinforcement learning.

In the application of these more advanced and complex techniques, we are paying particular attention to the ongoing research on the interpretability (XAI), which is a necessary condition and not yet completely resolved for extensive use of Deep Learning in finance.

Contact

For enquiries, product placements, sponsorships, and collaborations, connect with us at hello@liwaiwai.com . We'd love to hear from you!

Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.