Breaking Down Financial News Impact: A Novel AI Approach with Geometric Hypergraphs
In the fast-paced and volatile financial markets, accurately predicting stock movements based on financial news is critical for investors and analysts. Traditional models often struggle to capture the intricate and dynamic relationships between news events and market reactions, limiting their abilit...
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Zusammenfassung: | In the fast-paced and volatile financial markets, accurately predicting stock
movements based on financial news is critical for investors and analysts.
Traditional models often struggle to capture the intricate and dynamic
relationships between news events and market reactions, limiting their ability
to provide actionable insights. This paper introduces a novel approach
leveraging Explainable Artificial Intelligence (XAI) through the development of
a Geometric Hypergraph Attention Network (GHAN) to analyze the impact of
financial news on market behaviours. Geometric hypergraphs extend traditional
graph structures by allowing edges to connect multiple nodes, effectively
modelling high-order relationships and interactions among financial entities
and news events. This unique capability enables the capture of complex
dependencies, such as the simultaneous impact of a single news event on
multiple stocks or sectors, which traditional models frequently overlook.
By incorporating attention mechanisms within hypergraphs, GHAN enhances the
model's ability to focus on the most relevant information, ensuring more
accurate predictions and better interpretability. Additionally, we employ
BERT-based embeddings to capture the semantic richness of financial news texts,
providing a nuanced understanding of the content. Using a comprehensive
financial news dataset, our GHAN model addresses key challenges in financial
news impact analysis, including the complexity of high-order interactions, the
necessity for model interpretability, and the dynamic nature of financial
markets. Integrating attention mechanisms and SHAP values within GHAN ensures
transparency, highlighting the most influential factors driving market
predictions.
Empirical validation demonstrates the superior effectiveness of our approach
over traditional sentiment analysis and time-series models. |
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DOI: | 10.48550/arxiv.2409.00438 |