Financial time series forecasting is fundamentally an information fusion challenge, yet most existing models rely on static architectures that struggle to integrate heterogeneous knowledge sources or adjust to rapid regime shifts. Conventional approaches, relying exclusively on historical price sequences, often neglect the semantic drivers of volatility such as policy uncertainty and market narratives. To address these limitations, we propose the ASTIF (Adaptive Semantic-Temporal Integration for Cryptocurrency Price Forecasting), a hybrid intelligent system that adapts its forecasting strategy in real time through confidence-based meta-learning. The framework integrates three complementary components. A dual-channel Small Language Model using MirrorPrompt extracts semantic market cues alongside numerical trends. A hybrid LSTM Random Forest model captures sequential temporal dependencies. A confidence-aware meta-learner functions as an adaptive inference layer, modulating each predictor's contribution based on its real-time uncertainty. Experimental evaluation on a diverse dataset of AI-focused cryptocurrencies and major technology stocks from 2020 to 2024 shows that ASTIF outperforms leading deep learning and Transformer baselines (e.g., Informer, TFT). The ablation studies further confirm the critical role of the adaptive meta-learning mechanism, which successfully mitigates risk by shifting reliance between semantic and temporal channels during market turbulence. The research contributes a scalable, knowledge-based solution for fusing quantitative and qualitative data in non-stationary environments.
翻译:金融时间序列预测本质上是一个信息融合问题,然而现有模型大多依赖静态架构,难以整合异构知识源或适应快速的市场状态转换。传统方法仅依赖历史价格序列,往往忽略了政策不确定性和市场叙事等波动性的语义驱动因素。为克服这些局限,本文提出ASTIF(面向加密货币价格预测的自适应语义-时序集成),这是一种通过基于置信度的元学习实时调整预测策略的混合智能系统。该框架整合了三个互补组件:采用MirrorPrompt的双通道小语言模型同步提取语义市场信号与数值趋势;混合LSTM随机森林模型捕捉序列时序依赖;置信感知元学习器作为自适应推理层,根据各预测器的实时不确定性调节其贡献权重。在2020年至2024年涵盖人工智能相关加密货币与主要科技股的多样化数据集上的实验评估表明,ASTIF在预测性能上优于主流的深度学习和Transformer基线模型(如Informer、TFT)。消融研究进一步证实了自适应元学习机制的关键作用,该机制能在市场动荡时期通过动态调整语义通道与时序通道的依赖权重有效控制风险。本研究为在非平稳环境中融合定量与定性数据提供了一种可扩展的基于知识的解决方案。