Treffer: Leveraging big data analytics for market forecasting and investment strategy in digital Finance

Title:
Leveraging big data analytics for market forecasting and investment strategy in digital Finance
Source:
International Journal of Social Science Exceptional Research. 3:209-217
Publisher Information:
Anfo Publication House, 2025.
Publication Year:
2025
Document Type:
Fachzeitschrift Article
ISSN:
2583-8261
DOI:
10.54660/ijsser.2024.3.1.209-217
Accession Number:
edsair.doi...........15749510c1e7db6da367e774747a75d4
Database:
OpenAIRE

Weitere Informationen

This paper explores the transformative role of Big Data Analytics in market forecasting and investment strategy optimization within the digital finance sector. As financial markets become increasingly complex and data-driven, the need for accurate forecasting and strategic decision-making has never been greater. The study examines the evolution of digital finance, the integration of Big Data tools such as Hadoop, Apache Spark, and Python libraries, and their significant impact on improving forecasting accuracy and investment decisions. Through a review of current literature, this research identifies the primary techniques used in Big Data-driven financial forecasting, including predictive modeling and machine learning algorithms. Furthermore, real-world case studies from leading financial institutions demonstrate the practical applications of Big Data, showcasing its potential to enhance trading strategies and portfolio management. However, the study also addresses several challenges associated with the use of Big Data, including data privacy concerns, data quality issues, and the limitations of algorithmic models. The findings highlight the importance of integrating Big Data analytics into financial decision-making processes and provide actionable recommendations for financial institutions, investors, and policymakers. Additionally, the paper identifies promising directions for future research, such as exploring new technologies like blockchain and quantum computing and further examining alternative data sources to improve forecasting accuracy. This paper contributes to advancing the understanding of how Big Data can be leveraged to optimize financial decision-making in an increasingly data-driven world.