IKNet: Interpretable Stock Price Prediction via Keyword-Guided Integration of News and Technical Indicatorsopen access
- Authors
- Kim, Jin-woong; Park, Sangjin
- Issue Date
- Nov-2025
- Publisher
- Association for Computing Machinery, Inc
- Keywords
- Explainable AI; Financial news; Keyword-level sentiment; SHAP; Stock prediction
- Citation
- ICAIF 2025 - 6th ACM International Conference on AI in Finance, pp 709 - 717
- Pages
- 9
- Indexed
- SCOPUS
- Journal Title
- ICAIF 2025 - 6th ACM International Conference on AI in Finance
- Start Page
- 709
- End Page
- 717
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/209899
- DOI
- 10.1145/3768292.3770343
- Abstract
- The increasing influence of unstructured external information, such as news articles, on stock prices has attracted growing attention in financial markets. Despite recent advances, most existing news-based forecasting models represent all articles using sentiment scores or average embeddings that capture the general tone but fail to provide quantitative, context-aware explanations of the impacts of public sentiment on predictions. To address this limitation, we propose an interpretable keyword-guided network (IKNet), which is an explainable forecasting framework that models the semantic association between individual news keywords and stock price movements. The IKNet identifies salient keywords via FinBERT-based contextual analysis, processes each embedding through a separate nonlinear projection layer, and integrates their representations with the time-series data of technical indicators to forecast next-day closing prices. By applying Shapley Additive Explanations the model generates quantifiable and interpretable attributions for the contribution of each keyword to predictions. Empirical evaluations of S&P 500 data from 2015 to 2024 demonstrate that IKNet outperforms baselines, including recurrent neural networks and transformer models, reducing RMSE by up to 32.9% and improving cumulative returns by 18.5%. Moreover, IKNet enhances transparency by offering contextualized explanations of volatility events driven by public sentiment.
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