Stock Market Time Series Prediction with Dynamic Correlation Analysis

Research Overview

This Master's thesis addresses the challenge of predicting stock market behavior by analyzing dynamic correlations between multiple time series. Traditional financial forecasting methods often fail to adapt to changing market patterns, leading to inaccurate predictions. This research introduces a novel approach that tracks evolving correlations between stocks to improve prediction accuracy and detect pattern shifts earlier.

Core Research Problem

Financial markets exhibit non-stationary behavior where patterns and correlations between assets change over time. Most existing models:

Methodology

Novel Contributions

1. Dynamic Correlation Analysis

2. Feature Engineering Approach

3. Modified Neural Architecture

Technical Implementation

Data Pipeline

Raw Stock Data → Technical Indicators → Correlation Analysis → Feature Matrix
      ↓                ↓                     ↓                  ↓
Price Series      Indicator Series      Correlation Series   Combined Features

Model Architecture

Evaluation Metrics

Key Findings

Technical Results

  1. Improved Prediction Accuracy: Dynamic correlation features reduced prediction error by 23% compared to baseline models
  2. Faster Pattern Detection: Early identification of market regime changes within 2-3 trading days
  3. Better Feature Representation: Technical indicators combined with correlation data provided more robust input features
  4. Effective Normalization: Alternative normalization approaches avoided imposing unrealistic bounds on input data

Practical Implications

  1. Trading Strategy Enhancement: Simulation showed 18% improvement in trading returns using the proposed approach
  2. Risk Management: Earlier detection of correlation breakdowns helped identify potential market stress
  3. Portfolio Optimization: Dynamic correlation tracking improved diversification strategies
  4. Market Analysis: Provided insights into evolving relationships between different market sectors

Research Significance

Theoretical Contributions

Practical Applications

Challenges Addressed

Market Dynamics

Technical Challenges

Technologies & Tools

Academic Impact

This research contributes to several academic domains:


This thesis bridges theoretical time series analysis with practical financial applications, demonstrating that tracking dynamic relationships between assets significantly improves market prediction capabilities and provides earlier warnings of changing market conditions.