Algorithmic Crypto Trading using EMA Strategy

Author
Keywords
Abstract

Algorithmic trading has transformed financial markets by enabling data-driven strategies that enhance efficiency and decision-making. This paper presents a web-based crypto currency trading platform that employs the Exponential Moving Average (EMA) strategy for automated trade execution, market trend analysis, and portfolio tracking. The platform integrates key performance metrics, including win rate, average profit per trade, risk-reward ratio, and profit factor to assess trading effectiveness. Notably, EMA-based trading achieves the highest profit factor of 3.5 which outperformed deep learning and manual trading by 9.37% and 133%, respectively. Additionally, EMA exhibits a strong win rate of 60%, compared to 65% for deep learning and 40% for manual trading, while maintaining a balanced risk-reward ratio of 2.2. The system features live data visualization, customizable watchlists, and automated trading workflows, providing traders with actionable insights with minimized human error. Performance evaluation indicates that EMA offers a superior trade-off between profitability and risk management, making it a robust and adaptable solution for navigating cryptocurrency markets. This work bridges the gap between manual trading and advanced algorithmic strategies, delivering a user-friendly and efficient trading framework.

Year of Conference
2025
Conference Name
Proceedings of 5th International Conference on Pervasive Computing and Social Networking, ICPCSN 2025
Number of Pages
997-1002,
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISBN Number
979-833153519-3 (ISBN)
URL
https://ieeexplore.ieee.org/document/11035368
DOI
10.1109/ICPCSN65854.2025.11035368
Alternate Title
Proc. Int. Conf. Pervasive Comput. Soc. Netw., ICPCSN
Conference Proceedings
Download citation
Cits
0
CIT

For admissions and all other information, please visit the official website of

Cambridge Institute of Technology

Cambridge Group of Institutions

Contact

Web portal developed and administered by Dr. Subrahmanya S. Katte, Dean - Academics.

Contact the Site Admin.