5th IEEE International Workshop on Dynamic Data Science and Big Data Analytics in Finance (DDS-BDAF 2024)

The goal of the workshop

This workshop aims to foster cooperation among academics, researchers, and practitioners in dynamic data science applications.  This workshop will enable exchange of ideas on latest academic/industrial experience for novel forecasting models, dynamic modeling of big data in finance, developing novel filtering, smoothing and forecasting algorithms for algorithmic trading, machine learning and risk management. Current trends in decentralized finance research and application in closely related markets such as electricity market are also focused in the 4th edition of this workshop.

Workshop theme

Today, principles of computational finance are combined with advanced mathematical structures and dynamic data science to form useful financial models, strategies and products that are tested and implemented with the use of novel quantitative techniques such as smoothing/filtering/forecasting in both traditional and decentralized finance worlds.  Use of computing technology is pervasive throughout this process.

Computational Finance is an area referred to under a variety of names, for example, ‘financial engineering’, quantitative finance, and ‘mathematical finance’. In all cases there is an effort that involves ‘financial’, ‘mathematical’, ‘quantitative’ and ‘computational’ thinking to build, test and implement models that are at the center of financial activities.  In the last decade, Computational Finance (CF) has influenced the marketplace extensively with enormous impact on wealth building, employment opportunities, and tremendous economic growth. This field forms an ever-expanding part of the financial sector, in numerous ways today.  Use of high-performance computers for research in computational finance has grown steadily in the last decade especially due to large volume of data to be analyzed (in both traditional and decentralized finance). The time is ripe to collect these researchers to exchange their ideas, models and results through a conference meeting.  This workshop will continue to provide a platform in bringing together researchers in the area of finance who design and develop data-driven, data-centric and other models at a venue where computers, software and applications are the fundamental threads of discussions and arguments.

Machine Learning (ML), Computational Intelligence (CI) and Fuzzy models have become an essential part in finance industry for many decision processes including algorithmic trading.   Supervised learning is the most widely utilized form of machine learning. Its goal is to predict the response from the associated features. Regularization puts extra constraints on a machine learning model and enhance the predictive performance of the dynamic models, and these constraints and penalties are designed to encode specific kind of prior knowledge. Algorithmic trading uses these concepts to place a trade and generate profits at a speed and frequency that is impossible for a human trader.  As the models and techniques are developed and published, algo trading is becoming a tool for common investors for online trading, which otherwise has been a profitable trading strategy for professional traders.   This workshop will further this direction of research.

The papers to be presented at the workshop will (i) expose the COMPSAC attendees to an emerging and somewhat “new” activity (dynamic risk management, algo trading etc.) in Computer Science and excite them first; (ii) examine the problems in finance and bring out computing and data challenges these problem pose and how data analytics knowledge and practice could be employed to various problems in finance.

Scope of the workshop

he papers to be presented at the workshop will cover fundamentals of finance (for example, algorithmic trading, pricing options and other derivatives, risk management strategies, mining cryptocurrency transactions, forecasting prices in traditional and decentralized finance, electricity markets  etc.), introduce the computational issues therein and report latest findings and understanding of financial results that would not have been possible without the use of big data analytic models and approaches.

Computer scientists, engineers and others participating in this workshop, with or without any finance background will be able to familiarize themselves with the area  of finance,  expose themselves to various financial markets and will get a first-hand experience of formulating finance problem into a computational problem. They will also witness live discussions on various topics, for example, value-at-risk (VaR) analysis, risk management, portfolio management, advanced models for option pricing and beyond, difficulties in solving the resulting stochastic partial differential equation,  various numerical techniques, handling big data in these  different problems in both traditional and decentralized finance and employing multi-core computers and  algorithms on the above methods and techniques.

Broad topics include the following non-exhaustive list:

  • Advances in financial models
  • Big data Analytics in Finance
  • Forecasting Financial market (stock price, stock price movement)
  • Financial Risk forecasting
  • Financial credit score
  • Portfolio Management
  • Algorithmic, high frequency trading
  • Derivatives Pricing
  • Decentralized and digital finance
  • Cryptocurrencies (trends and mining transactions etc.)
  • Electricity Market
  • and more

Workshop organizer(s)

Dr. Ruppa K. Thulasiram
University of Manitoba, Canada
Email: tulsi.thulasiram@umanitoba.ca

Dr. A. Thavaneswaran
University of Manitoba, Canada
Email: Aerambamoorthy.Thavaneswaran@umanitoba.ca

Dr. Erfanul Hoque
University of Saskatchewan, Canada
Email: erfan.hoque@usask.ca

Advisory Committee

Amir Atiya
University of Cairo, Egypt

Anthony Brabazon
University College Dublin, Ireland

Joe Campolioti
Wilfred Laurier University, Canada

Sanjiv Das
Santa Clara State University, USA

Prof. Mary Thompson
University of Waterloo, Canada

Program Committee

S.S. Appadoo
University of Manitoba, Canada

Amir Attiya
Egypt University of Cariso, Egypt

Roseangela Ballini
The University of Campinas, Brazil

Peter A. Beling
University of Virginia, USA

J. Campolioti
Wilfred Laurier University, Canada

Roy Freedman
Inductive Solutions and New York University, New York

Chengui Kai
Jinxin Finance LLC, New York, NY

Uzay Kaymak
Eindhovan University of Technology, Netherlands

You Liang
Toronto Metropolitan University, Canada

Takanobu Mizuta
SPARX Asset Management Co., Ltd.

Giray Okten
Florida State University, USA

Viji Pai
PSG College of Technology, Coimbatore, India

Alex Paseka
University of Manitoba, Canada

Shelton Peiris
Univ. of Sydney, Australia

V. Ravi
IDRBT, Hyderabad, India

Ashok Srinivasan
University of West Florida, USA

M. Thenmozhi
Indian Institute of Technology, Chennai, India

Alan Wagner
University of British Columbia, Canada

Xin-She Yang
Middlesex University London, UK

Lingjiong Zhu
Florida State University, USA

Important Dates

UPDATED: Full symposium papers due
January 31, February 15, February 28, 2025

Symposium paper notification
April 7, 2025

Workshop papers due
April 15, 2025

Workshop papers notification
May 1, 2025

Camera-ready copy
June 1, 2025

Conference Dates
July 8-11, 2025

Paper Templates

IEEE Paper templates are available in MS Word 2003 and LaTex. All submissions must use US 8.5×11 letter page format.

IEEE Conference Publishing Policies

All submissions must adhere to IEEE Conference Publishing Policies.

IEEE Cross Check

All submission will be screened for plagiarized material through the IEEE Cross Check portal.