TimeRouter routes among time-series foundation models via discriminative routing, selective gating and ensemble fallback, reporting SOTA LB MASE 0.6765 on GIFT-EVAL.
Conversational time series foundation models: Towards explainable and effective forecasting
3 Pith papers cite this work. Polarity classification is still indexing.
years
2026 3verdicts
UNVERDICTED 3representative citing papers
KairosAgent fuses LLM semantic reasoning with TSFM numerical forecasting through dynamic tool use and RL-based multi-turn refinement to deliver superior zero-shot multimodal time series predictions.
AME-TS is a structure-guided sparse MoE foundation model for time series that aligns expert routing with series-level temporal descriptors to achieve strong accuracy-efficiency tradeoffs on GIFT-Eval while improving specialization stability.
citing papers explorer
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TimeRouter: Efficient and Adaptive Routing of Time-Series Foundation Models
TimeRouter routes among time-series foundation models via discriminative routing, selective gating and ensemble fallback, reporting SOTA LB MASE 0.6765 on GIFT-EVAL.
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KairosAgent: Agentic Time Series Forecasting with Fused Semantic Reasoning
KairosAgent fuses LLM semantic reasoning with TSFM numerical forecasting through dynamic tool use and RL-based multi-turn refinement to deliver superior zero-shot multimodal time series predictions.
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AME-TS: Anchored Mixture-of-Experts for Time Series Forecasting
AME-TS is a structure-guided sparse MoE foundation model for time series that aligns expert routing with series-level temporal descriptors to achieve strong accuracy-efficiency tradeoffs on GIFT-Eval while improving specialization stability.