AI RESEARCH

Kairos: Toward Adaptive and Parameter-Efficient Time Series Foundation Models

arXiv CS.LG

ArXi:2509.25826v3 Announce Type: replace Inherent temporal heterogeneity, such as varying sampling densities and periodic structures, has posed substantial challenges in zero-shot generalization for Time Series Foundation Models (TSFMs). Existing TSFMs predominantly rely on massive parameterization to absorb such heterogeneity, as their static tokenization and positional encoding schemes entangle diverse temporal patterns into a fixed representation space, encouraging memorization rather than adaptation.