Word count: 1500 words
Objectives to cover:
- Introduction
- Literature Review
- Stock Market Prediction Models: Overview of traditional and recent models.
- Generative AI in Finance: Latest advances in AI-driven stock prediction.
- Methodology
- Data Collection & Preprocessing: Data sources and cleaning steps.
- Model Architecture: Combining GNN with generative models.
- Results and Analysis
- Performance Comparison: Generative model vs. traditional models.
- Interdependency Impact: Influence on prediction accuracy.
- Discussion
- Market Insights: Findings on stock relationships.
- Model Challenges: Data noise, complexity limitations.
- Conclusion and Future Work
- Summary: Key findings recap.
- Accuracy Potential: Improvements for financial forecasts.
Reference: APA style