Site icon The Data Exchange

Financial Time Series Forecasting with Deep Learning

The Data Exchange Podcast: Murat Özbayoğlu on applications of deep learning to investing and asset management.


Subscribe: AppleAndroidSpotifyStitcherGoogleRSS.

In this episode of the Data Exchange I speak with Murat Özbayoğlu, Chair of Artificial Intelligence Engineering at TOBB University of Economics and Technology in Ankara, Turkey.  I wanted Murat on to discuss two survey papers he and his colleagues wrote on the use of deep learning in finance:

  1. Financial Time Series Forecasting with Deep Learning : A Systematic Literature Review: 2005-2019
  2. Deep Learning for Financial Applications : A Survey

Download the 2020 NLP Survey Report and learn how companies are using and implementing natural language technologies.

I’ve long been fascinated with finance and trading. My first job after I left academia was as the lead quant in a hedge fund, and ever since, I’ve tried to stay abreast of what tools and techniques quants and data scientists in finance are using. Forecasting in this setting usually means price prediction or price movement (trend) prediction. Output of forecasting models are used to inform investment decisions. What makes finance particularly challenging is that many people are using the same underlying data (time series of prices/values), and thus as Murat notes, many firms use alternative data sources (such as text) as potential sources of additional signal.

Murat and his colleagues systematically go through the literature and they assembled thirteen tables summarizing research into deep learning in key areas of investing and asset management:

A major caveat is that finance people are secretive and it’s unlikely that they will publish their most effective strategies.  Murat reminded me of a joke from finance: “If it’s interesting we’ll keep it to ourselves, if it’s not interesting we’ll publish it!”

Topic-Model Heatmap, from Financial Time Series Forecasting with Deep Learning : A Systematic Literature Review: 2005-2019
 

Nonetheless, understanding how deep learning can be used for forecasting time series – not just financial time series – is important. We also discuss how organizations should be using machine learning for time series forecasting (as part of ensembles), and the pros and cons of various forecasting techniques.

As Murat notes, currently these deep learning models are best suited for models that are trained offline so realtime applications like high-frequency trading aren’t common:

Subscribe to our Newsletter:
We also publish a popular newsletter where we share highlights from recent episodes, trends in AI / machine learning / data, and a collection of recommendations.

Related content:


[Image by Tumisu from Pixabay]

Exit mobile version