AI in Financial Forecasting: Evaluating the Accuracy of Predictive Analytics in Stock Markets

Dr. Daniel Nguyen

Abstract


This research paper delves into the realm of financial forecasting with a specific focus on the utilization of artificial intelligence (AI) in predicting stock market trends. With the advent of advanced machine learning algorithms and data analytics techniques, AI has emerged as a powerful tool for financial analysts and investors seeking to gain insights into market movements. However, the accuracy and reliability of AI-driven predictive models remain subjects of scrutiny and debate. This study aims to evaluate the effectiveness of predictive analytics in stock markets by analyzing the performance of various AI algorithms in forecasting price fluctuations and identifying market trends. Through a comprehensive review of literature, empirical analysis, and comparative studies, this research seeks to provide a nuanced understanding of the strengths, limitations, and potential implications of AI in financial forecasting. By assessing the accuracy of AI models against historical data and benchmarking them against traditional forecasting methods, this paper aims to offer valuable insights for stakeholders in the finance industry, including investors, traders, and financial institutions. Ultimately, the findings of this study contribute to the ongoing discourse on the role of AI in shaping the future of financial markets and inform decision-making processes in the realm of investment and portfolio management.

 


References


Kolasani, S. (2023). Optimizing Natural Language Processing, Large Language Models (LLMs) for Efficient Customer Service, and hyper-personalization to enable sustainable growth and revenue. Transactions on Latest Trends in Artificial Intelligence, 4(4).

Kolasani, S. (2023). Innovations in digital, enterprise, cloud, data transformation, and organizational change management using agile, lean, and data-driven methodologies. International Journal of Machine Learning and Artificial Intelligence, 4(4), 1-18.

Kolasani, S. (2023). Leadership in business innovation and transformation, navigating complex digital landscapes and enterprise technology ecosystems and achieving sustainable growth in today’s rapidly evolving market. International Journal of Holistic Management Perspectives, 4(4), 1-23.

Bammidi, T. R., Gutta, L. M., Kotagiri, A., Samayamantri, L. S., & krishna Vaddy, R. (2024). THE CRUCIAL ROLE OF DATA QUALITY IN AUTOMATED DECISION-MAKING SYSTEMS. International Journal of Managment Education for Sustainable Development, 7(7), 1-22.

Samayamantri, L. S. (2023). Personalized B2B2C Business model. International Journal of Sustainable Development in Computing Science, 5(4), 1-17.

Samayamantri, L. S. (2023). Cognitive Affiliate Platforms: Revolutionizing Marketing Strategies through AI-driven Intelligence. International Machine learning journal and Computer Engineering, 6(6), 1-9.

Samayamantri, L. S. (2023). Transforming Industry through Innovation: A Comprehensive Study of Cognitive-First Digital Factory Implementations and their Impact on Manufacturing

Yalamati, S. (2024). Impact of Artificial Intelligence in supervision of enterprises reduce tax avoidance. Transactions on Latest Trends in Artificial Intelligence, 5(5).

Palakurti, N. R. (2023). Governance Strategies for Ensuring Consistency and Compliance in Business Rules Management. Transactions on Latest Trends in Artificial Intelligence, 4(4).

Yalamati, S., & Batchu, R. K. (2024). Smart Data Processing: Unleashing the Power of AI and ML. In Practical Applications of Data Processing, Algorithms, and Modeling (pp. 205-221). IGI Global.

Palakurti, N. R. (2023). The Future of Finance: Opportunities and Challenges in Financial Network Analytics for Systemic Risk Management and Investment Analysis. International Journal of Interdisciplinary Finance Insights, 2(2), 1-20.

Yalamati, S. (2023). Revolutionizing Digital Banking: Unleashing the Power of Artificial Intelligence for Enhanced Customer Acquisition, Retention, and Engagement. International Journal of Managment Education for Sustainable Development, 6(6), 1-20.

Palakurti, N. R. (2024). Bridging the Gap: Frameworks and Methods for Collaborative Business Rules Management Solutions. International Scientific Journal for Research, 6(6), 1-22.

Yalamati, S. (2023). Identify fraud detection in corporate tax using Artificial Intelligence advancements. International Journal of Machine Learning for Sustainable Development, 5(2), 1-15.

Palakurti, N. R. (2022). Empowering Rules Engines: AI and ML Enhancements in BRMS for Agile Business Strategies. International Journal of Sustainable Development Through AI, ML and IoT, 1(2), 1-20.

Yalamati, S. (2023). Artificial Intelligence influence in individual investors performance for capital gains in the stock market. International Scientific Journal for Research, 5(5), 1-24.

Palakurti, N. R., & Kolasani, S. (2024). AI-Driven Modeling: From Concept to Implementation. In Practical Applications of Data Processing, Algorithms, and Modeling (pp. 57-70). IGI Global.

Yalamati, S. (2024). Data Privacy, Compliance, and Security in Cloud Computing for Finance. In Practical Applications of Data Processing, Algorithms, and Modeling (pp. 127-144). IGI Global.

Palakurti, N. R. (2023). Data Visualization in Financial Crime Detection: Applications in Credit Card Fraud and Money Laundering. International Journal of Managment Education for Sustainable Development, 6(6), 1-19.

Yalamati, S., & Vaddy, R. K. (2024). Algorithmic Insights: Exploring AI and ML in Practical Applications. In Practical Applications of Data Processing, Algorithms, and Modeling (pp. 30-43). IGI Global.

Palakurti, N. R. (2023). Next-Generation Decision Support: Harnessing AI and ML within BRMS Frameworks. International Journal of Creative Research In Computer Technology and Design, 5(5), 1-10.

Yalamati, Sreedhar. Enhance banking systems to digitalize using advanced artificial intelligence techniques in emerging markets. International Scientific Journal for Research 5.5 (2023): 1-24.

Palakurti, N. R. (2024). Intelligent Security Solutions for Business Rules Management Systems: An Agent-Based Perspective. International Scientific Journal for Research, 6(6), 1-20.

Yalamati, S. (2024). Data Privacy, Compliance, and Security in Cloud Computing for Finance. In Practical Applications of Data Processing, Algorithms, and Modeling (pp. 127-144). IGI Global.

Palakurti, N. R. (2024). Challenges and Future Directions in Anomaly Detection. In Practical Applications of Data Processing, Algorithms, and Modeling (pp. 269-284). IGI Global.

Gutta, L. M. (2024). A Systematic Review of Cloud Architectural Approaches for Optimizing Total Cost of Ownership and Resource Utilization While Enabling High Service Availability and Rapid Elasticity. International Journal of Statistical Computation and Simulation, 16(1), 1-20.

Gutta, L. M., Bammidi, T. R., Batchu, R. K., & Kanchepu, N. (2024). REAL-TIME REVELATIONS: ADVANCED DATA ANALYSIS TECHNIQUES. International Journal of Sustainable Development Through AI, ML and IoT, 3(1), 1-22.

Pansara, Ronak. "“MASTER DATA MANAGEMENT IMPORTANCE IN TODAY’S ORGANIZATION." International Journal of Management (IJM)12.10 (2021).

Ronak Pansara, Master Data Management Challenges, International Journal of Computer Science and Mobile Computing, Vol.10 Issue.10, October- 2021, pg. 47-49

Pansara, R. (2023). MDM Governance Framework in the Agtech & Manufacturing Industry. International Journal of Sustainable Development in Computing Science, 5(4), 1-10.

Pansara, R. (2023). From Fields to Factories A Technological Odyssey in Agtech and Manufacturing. International Journal of Managment Education for Sustainable Development, 6(6), 13-23.

Pansara, R. (2023). Navigating Data Management in the Cloud-Exploring Limitations and Opportunities. Transactions on Latest Trends in IoT, 6(6), 57-66.


Refbacks

  • There are currently no refbacks.


Copyright (c) 2024 International Journal of Sustainable Development in Computing Science

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

A Double-Blind Peer Reviewed Journal