AI RESEARCH

From Text to Forecasts: Bridging Modality Gap with Temporal Evolution Semantic Space

arXiv CS.AI

ArXi:2603.12664v1 Announce Type: cross Incorporating textual information into time-series forecasting holds promise for addressing event-driven non-stationarity; however, a fundamental modality gap hinders effective fusion: textual descriptions express temporal impacts implicitly and qualitatively, whereas forecasting models rely on explicit and quantitative signals. Through controlled semi-synthetic experiments, we show that existing methods over-attend to redundant tokens and struggle to reliably translate textual semantics into usable numerical cues.