Section 01
Introduction to the ProSeNet Framework: Addressing the Interpretability Challenge in Time Series Prediction
ProSeNet (Prototype-based Sequence Network) is an interpretable deep learning framework that combines prototype learning and multimodal technology, proposed to solve the black-box problem of deep learning models in time series prediction. It achieves similarity-based prediction explanations by learning representative time series prototypes and integrates text embeddings to improve prediction accuracy and transparency, making it suitable for high-risk decision-making fields such as finance, healthcare, and energy.