Publication | Open Access
Learning to Generate Explainable Stock Predictions using Self-Reflective Large Language Models
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Citations
19
References
2024
Year
Unknown Venue
Structured PredictionEngineeringMachine LearningStock PredictionLarge Language ModelCorpus LinguisticsText MiningNatural Language ProcessingData ScienceComputational LinguisticsStock MovementInterpretabilityLanguage StudiesStock PredictionsLanguage ModelsMachine TranslationPredictive AnalyticsForecastingFinanceExplanation-based LearningStock Market PredictionFinancial ForecastLinguisticsExplainable AiLanguage Generation
Explaining stock predictions is generally a difficult task for traditional non-generative deep learning models, where explanations are limited to visualizing the attention weights on important texts. Today, Large Language Models (LLMs) present a solution to this problem, given their known capabilities to generate human-readable explanations for their decision-making process. However, the task of stock prediction remains challenging for LLMs, as it requires the ability to weigh the varying impacts of chaotic social texts on stock prices. The problem gets progressively harder with the introduction of the explanation component, which requires LLMs to explain verbally why certain factors are more important than the others. On the other hand, to fine-tune LLMs for such a task, one would need expert-annotated samples of explanation for every stock movement in the training set, which is expensive and impractical to scale.
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