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Modeling News Interactions and Influence for Financial Market Prediction (2410.10614v1)

Published 14 Oct 2024 in cs.CE, cs.AI, cs.CL, and q-fin.CP

Abstract: The diffusion of financial news into market prices is a complex process, making it challenging to evaluate the connections between news events and market movements. This paper introduces FININ (Financial Interconnected News Influence Network), a novel market prediction model that captures not only the links between news and prices but also the interactions among news items themselves. FININ effectively integrates multi-modal information from both market data and news articles. We conduct extensive experiments on two datasets, encompassing the S&P 500 and NASDAQ 100 indices over a 15-year period and over 2.7 million news articles. The results demonstrate FININ's effectiveness, outperforming advanced market prediction models with an improvement of 0.429 and 0.341 in the daily Sharpe ratio for the two markets respectively. Moreover, our results reveal insights into the financial news, including the delayed market pricing of news, the long memory effect of news, and the limitations of financial sentiment analysis in fully extracting predictive power from news data.

Summary

  • The paper introduces FININ, a framework that integrates numerical market data and textual news reports to predict financial trends.
  • It employs a data fusion encoder and a market-aware influence quantifier to capture complex, delayed market responses and long memory effects.
  • Validated on 15 years of data, FININ outperformed benchmarks with daily Sharpe ratio improvements of 0.429 and 0.341 for the S&P 500 and NASDAQ, respectively.

Modeling News Interactions and Influence for Financial Market Prediction

The paper presents a novel approach to financial market prediction by introducing the Financial Interconnected News Influence Network (FININ). FININ is designed to address the complexities involved in understanding how financial news impacts market prices, incorporating interactions among news items and their connections to market data.

Overview

FININ distinguishes itself by capturing the intricate interplay between news reports and their influence on financial markets. It achieves this by integrating multi-modal data sources—specifically, numerical market data and textual news reports. The model is constructed with two primary components: a data fusion encoder and a market-aware influence quantifier. These components work in unison to encode complex data interactions and quantify the market impact of individual news items.

Strong Numerical Results

The efficacy of FININ is validated through experiments on the S&P 500 and NASDAQ 100 indices, using a comprehensive dataset spanning 15 years and consisting of over 2.7 million news articles. The results are notable, with FININ outperforming state-of-the-art models and achieving improvements in daily Sharpe ratios of 0.429 and 0.341 for the respective markets. This superior performance underscores FININ's capability to leverage extensive news data effectively, highlighting the importance of modeling news interactions beyond mere sentiment analysis.

Analytical Insights

The paper reveals several critical insights into market behavior regarding news dissemination:

  1. Delayed Market Pricing: FININ highlights the persistent delay in market reactions to news, which suggests inefficiencies that can be capitalized on for predictive purposes.
  2. Long Memory Effect: The paper reinforces the notion that news retains influence over extended periods, adding credibility to theories of gradual information diffusion in financial markets.
  3. Limitations of Sentiment Analysis: By demonstrating the limited scope of traditional sentiment analysis, the paper advocates for a more nuanced approach that also considers textual content for capturing the broader market impact.

Practical and Theoretical Implications

The findings have significant implications for both practical market forecasting and theoretical models of financial information diffusion:

  • Practical: For traders and financial analysts, the model offers a robust tool that can improve investment strategy development by predicting market movements with enhanced accuracy.
  • Theoretical: The results contribute to a deeper understanding of how interconnected news events can shape market dynamics, challenging traditional theories that focus primarily on sentiment or isolated news effects.

Future Directions

The research opens several avenues for future exploration:

  • Expanded Data Sources: Incorporating other data types, such as social media feeds or company reports, could provide a more comprehensive picture of market influences.
  • Scalability: Enhancing the model's scalability to process even larger datasets or encompass global markets would be a logical progression.
  • Longitudinal Studies: Extending the research to analyze periods of extraordinary market stress, such as economic crises, could further validate the model's efficacy and robustness.

Conclusion

The introduction of FININ represents a significant advance in the domain of financial market prediction. By effectively modeling the interactions among news items and their collective impact on market behavior, the research presents a compelling case for reevaluating existing predictive models. Through its robust design and empirical validation, FININ not only improves predictive accuracy but also enhances our understanding of the role news plays in financial markets.

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