AIBullisharXiv – CS AI · 8h ago6/10
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Signed Dual Attention: Capturing Signed Dependencies in Time Series Forecasting
Researchers introduce Signed Dual Attention, a novel transformer attention mechanism that captures both positive and negative dependencies in time series data without requiring additional parameters. By using a dual message-passing approach inspired by correlation structures, this technique achieves greater expressiveness while maintaining parameter efficiency, potentially improving forecasting accuracy in applications requiring signed relational modeling.