In the era of big data, corporate financial operations generate a large amount of heterogeneous information. Traditional risk monitoring systems cannot effectively accommodate complex data flows and real-time risk changes, which often leads to false positives and delays. This study proposes a framework based on 'big data lake-semantic layer-intelligent algorithm' to achieve real-time and interpretable financial risk monitoring. Through the multi-modal risk representation combined with the hybrid flow-batch pipeline and knowledge graph, the real-time synchronization of risk scoring and response strategy is realized by using a state machine-driven feedback loop and adaptive threshold adjustment. The experimental results show that the accuracy of the framework is improved by more than 10%, the false alarm rate is reduced to 1.8%, and the response time is shortened to 250 milliseconds. This study improves the stability and responsiveness of the system through multi-modal learning and an adaptive threshold mechanism.
Gaizhi Wang (Fri,) studied this question.
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