From Votes to Volatility Predicting the Stock Market on Election Day
ArXiv ID: 2412.11192 “View on arXiv”
Authors: Unknown
Abstract
Stock market forecasting has been a topic of extensive research, aiming to provide investors with optimal stock recommendations for higher returns. In recent years, this field has gained even more attention due to the widespread adoption of deep learning models. While these models have achieved impressive accuracy in predicting stock behavior, tailoring them to specific scenarios has become increasingly important. Election Day represents one such critical scenario, characterized by intensified market volatility, as the winning candidate’s policies significantly impact various economic sectors and companies. To address this challenge, we propose the Election Day Stock Market Forecasting (EDSMF) Model. Our approach leverages the contextual capabilities of large language models alongside specialized agents designed to analyze the political and economic consequences of elections. By building on a state-of-the-art architecture, we demonstrate that EDSMF improves the predictive performance of the S&P 500 during this uniquely volatile day.
Keywords: stock market forecasting, large language models, election impact, volatility, time-series prediction, Equities
Complexity vs Empirical Score
- Math Complexity: 3.5/10
- Empirical Rigor: 7.5/10
- Quadrant: Street Traders
- Why: The paper introduces advanced architectural extensions (LLM agents, political signal integration) but relies on existing frameworks with moderate mathematical depth, while demonstrating strong empirical rigor through a specific high-frequency backtest on recent election data with detailed feature engineering and ablation studies.
flowchart TD
A["Research Goal:<br>Predict S&P 500 on Election Day"] --> B["Data Sources"]
B --> C["Data Inputs:<br>Historical Price + Election News + Volatility Indices"]
C --> D["Methodology:<br>EDSMF Model Architecture"]
subgraph D ["Computational Process"]
D1["Large Language Models<br>for Contextual Analysis"]
D2["Specialized Agents<br>for Political/Economic Impact"]
end
D --> E["Model Training & Optimization"]
E --> F["Key Outcomes:<br>Improved Predictive Accuracy"]
F --> G["Impact:<br>Enhanced Volatility Forecasting"]