Signed Dual Attention: Capturing Signed Dependencies in Time Series Forecasting 事件

PRODUCT_LAUNCH2026-06-04影响: MEDIUM

Signed Dual Attention: Capturing Signed Dependencies in Time Series Forecasting arXiv:2606.04833v1 Announce Type: cross Abstract: Initially developed for natural language processing, Transformer architectures and attention mechanisms are now central to a wide range of deep learning models, including applications in time series forecasting. A standard attention mechanism, however, implicitly assumes homophilic interactions, limiting its ability to model data with positive and negative dependenci

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