Time Series Stock Price Forecasting: An LSTM Neural Network Approach for Market Prediction

This study creates a more advanced Long Short-Term Memory (LSTM) neural network structure for predicting stock prices. It does this by using a new three-layer framework (200-200-64 units) and improving the dropout regularization. The methodology incorporates dynamic window normalization and automated feature engineering to address the challenges of financial time series data. Empirical validation using Apple (AAPL) stock demonstrates the model's effectiveness in capturing both short-term fluctuations and long-term market trends. The system implements sophisticated temporal sequence processing and risk quantification techniques, showing significant improvements over traditional forecasting methods. The research contributes to both theoretical understanding through its innovative architecture design and practical applications in algorithmic trading systems. The results show that the predictions were more accurate than expected and gave us new information about how markets behave, which built a strong foundation for financial forecasting.

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Work Title Time Series Stock Price Forecasting: An LSTM Neural Network Approach for Market Prediction
Access
Open Access
Creators
  1. Harshwardhan Patil
Keyword
  1. LSTM
  2. Stock Prediction
  3. Deep Learning
  4. Financial Forecasting
  5. Time Series Analysis
  6. Neural Networks
  7. Machine Learning
  8. Algorithmic Trading
License CC BY 4.0 (Attribution)
Work Type Masters Culminating Experience
Sub Work Type Scholarly Paper/Essay (MA/MS)
Program Information Systems
Degree Master of Science
Acknowledgments
  1. Girish Subramanian
Publisher
  1. ScholarSphere
Publication Date April 2025
DOI doi:10.26207/be30-q097
Deposited April 23, 2025

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Version 1
published

  • Created
  • Updated
  • Updated Keyword, Degree, Program, and 3 more Show Changes
    Keyword
    • LSTM, Stock Prediction, Deep Learning, Financial Forecasting, Time Series Analysis, Neural Networks, Machine Learning, Algorithmic Trading
    Degree
    • Master of Science
    Program
    • Information Systems
    Description
    • This study creates a more advanced Long Short-Term Memory (LSTM) neural network structure for predicting stock prices. It does this by using a new three-layer framework (200-200-64 units) and improving the dropout regularization. The methodology incorporates dynamic window normalization and automated feature engineering to address the challenges of financial time series data. Empirical validation using Apple (AAPL) stock demonstrates the model's effectiveness in capturing both short-term fluctuations and long-term market trends. The system implements sophisticated temporal sequence processing and risk quantification techniques, showing significant improvements over traditional forecasting methods. The research contributes to both theoretical understanding through its innovative architecture design and practical applications in algorithmic trading systems. The results show that the predictions were more accurate than expected and gave us new information about how markets behave, which built a strong foundation for financial forecasting.
    Sub Work Type
    • Scholarly Paper/Essay (MA/MS)
    Publication Date
    • 2025-04
  • Updated Acknowledgments Show Changes
    Acknowledgments
    • Girish Subramanian
  • Added Creator Harshwardhan Patil
  • Added Creator Emily Mross
  • Added Major_Project_Final (1).pdf
  • Updated License Show Changes
    License
    • https://creativecommons.org/licenses/by/4.0/
  • Published Publisher Show Changes
    Publisher
    • ScholarSphere

Version 2
published

  • Created
  • Updated Creator Emily Mross
  • Updated Creator Harshwardhan Patil
  • Published

Version 3
published

  • Created
  • Updated Creator Harshwardhan Patil
  • Updated Creator Emily Mross
  • Published
  • Updated
  • Updated
  • Deleted Creator Emily Mross